Journal Pre-proof A new method for predicting sweet spots of shale oil using conventional well logs Jinbu Li, Min Wang, Shuangfang Lu, Guohui Chen, Weichao Tian, Chunqing Jiang, Zheng Li PII:
S0264-8172(19)30533-1
DOI:
https://doi.org/10.1016/j.marpetgeo.2019.104097
Reference:
JMPG 104097
To appear in:
Marine and Petroleum Geology
Received Date: 30 March 2019 Revised Date:
14 October 2019
Accepted Date: 16 October 2019
Please cite this article as: Li, J., Wang, M., Lu, S., Chen, G., Tian, W., Jiang, C., Li, Z., A new method for predicting sweet spots of shale oil using conventional well logs, Marine and Petroleum Geology (2019), doi: https://doi.org/10.1016/j.marpetgeo.2019.104097. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2019 Published by Elsevier Ltd.
1
A new method for predicting sweet spots of shale oil using
2
conventional well logs
3
Jinbu Li1,2, Min Wang*1, Shuangfang Lu**1, Guohui Chen3, Weichao Tian1,
4
Chunqing Jiang2, Zheng Li4
5
1
6
Qingdao 266580, Shandong, PR China
7
2
Geological Survey of Canada, Alberta T2L 2A7, Canada
8
3
Key laboratory of tectonics and petroleum resources, Ministry of Education, China
9
University of Geosciences, Wuhan 430074, PR China
Key laboratory of deep oil and gas, China University of Petroleum (East China),
10
4
11
Dongying 257015, Shandong, PR China
12
*Corresponding author:
13
Prof. Min Wang
14
School of Geosciences, China University of Petroleum (East China), Qingdao 266580,
15
Shandong, China
16
Phone (or Mobile) No.: +86-18661856595
17
Email:
[email protected]
18
Prof. Shuangfang Lu
19
School of Geosciences, China University of Petroleum (East China), Qingdao 266580,
20
Shandong, China
21
Phone (or Mobile) No.: +86-18661856596
22
Email:
[email protected]
Geology Scientific Research Institute of Shengli Oilfield Company, Sinopec,
23
Abstract
24
In this paper, a new method called sweet spot index (SSI) is proposed by the combination of shale
25
oil mobility and shale reservoir fracability to predict the vertical distribution of shale oil sweet
26
spots using conventional logs. In the SSI method, logging evaluation models for TOC, S1 (volatile
27
petroleum), and mineral content are initially established. Mobile oil content is obtained by
28
subtracting the amount of adsorbed oil from the total oil content, which is the S1 value after the
29
recovery of light and heavy hydrocarbons. The adsorbed oil content is calculated based on the oil
30
adsorption model established by a stepwise pyrolysis experiment. The formation fracability is
31
estimated by a combination of estimates of brittle mineral content and Young’s modulus.
32
Formations with higher brittleness and lower Young’s modulus are considered better simulation
33
candidates. The SSI value is the product of the normalized mobility and the fracability index,
34
which minimizes the section of just an organic matter sweet spot (i.e., high oil content) or an
35
inorganic sweet spot (i.e., easily fractured) and has the advantage of accurately predicting its
36
vertical distribution. In the case study, the new method is successfully implemented to predict
37
sweet spots of the Es3L (lower sub member of the third member of the Eocene Shahejie
38
Formation) in the Bonan Sag, Bohai Bay Basin, China. The lower limit value of SSI is set to 0.1
39
based on its relationship with shale oil production. The effectiveness, reliability and adaptability of
40
the SSI method have been verified by three wells in the Bonan Sag.
41
Keywords: Shale oil; mobility; sweet spots; fracability; brittleness; adsorbed oil
42
1. Introduction
43
As a self-contained source-reservoir system, shale oil has attracted great attention from many
44
geologists because of its huge resource potential (Clarkson et al., 2013; Jarvie, 2012; Jia et al.,
45
2013; Kirschbaum and Mercier, 2013; Lu et al., 2012; Zou et al., 2013; Zou et al., 2012). The
46
United States Energy Information Administration (EIA) (2013) estimated that technologically
47
feasible recovery of shale oil in 41 countries stands at 345 billion barrels, of which China ranks
48
third with 32 billion barrels (Wang et al., 2019). At present, China has completed geological
49
evaluation and resource estimation in a few oilfields, and the results show that the potential shale
50
reservoirs studied have the characteristics of high organic matter abundance, moderate vitrinite
51
reflectance, low porosity and permeability, wide geographic distribution, etc. (Chen et al., 2017a;
52
Hua et al., 2016; Jiang et al., 2014; Li et al., 2014; Pan et al., 2017; Song et al., 2013; Wang et al.,
53
2015). Although many shale oil wells have been drilled in Bohai Bay, Songliao, Jianghan and
54
other basins, shale oil production is still low, such as Boye-HF 1 well in the Dongying Sag, which
55
produced 8.22 m3 of oil per day initially, but decreased to 1.6 m3 per day over the course of
56
several months with total production of only 100 m3 (Lu et al., 2016). The Biye-HF1 well in the
57
Biyang Sag had an initial production of 23.6 m3 of oil per day, but the productivity also decreased
58
sharply, and now it has been shut-in (Zhang et al., 2012a). At present, the results of exploration
59
and development of shale oil resources in China are less than anticipated. One reason is that the
60
intervals with shale oil sweet spots are not clear (Lu et al., 2016; Zhang et al., 2014).
61
Several methods, including multi-parameter plane folding (Heege et al., 2015; Yang et al.,
62
2015), fuzzy optimization (Liu and Wang, 2016), and factor analysis (Chen et al., 2016; Chen et
63
al., 2017b; Glaser et al., 2013; Hakami et al., 2016; Jarvie, 2012; Liang et al., 2016) have been
64
used for predicting shale oil sweet spots in previous studies. These methods are generally
65
performed by analyzing the geological settings, shale composition and shale properties. The
66
indicators selected are various, including vitrinite reflectance (%Ro), total organic carbon (TOC),
67
porosity (φ), oil saturation (So), volatile hydrocarbon content (S1), thickness (H), oil saturation
68
index (OSI = S1/TOC × 100, mg-HC per g-TOC), permeability (K), brittleness, mechanical
69
parameters, etc. There are several issues with utilization of the above data in the previous studies.
70
First, many of these parameters are related to each other, such as oil content, oil saturation, and
71
porosity, such that the controlling factors of shale oil sweet spots are not clear. In previous studies
72
on shale oil sweet spots prediction, many researchers paid more attention to the total oil content
73
evaluation. Yang et al., (2015) suggests that shale oil sweet spots are areas of high oil content and
74
high fracability. However, the areas with high shale oil content may not be favorable zones, e.g.,
75
the facies of massive mudstone with high oil adsorption capacity and low proportion of free oil
76
(Yong et al., 2016). Shale oil mobility should be considered in the prediction of shale oil sweet
77
spots (Lu et al., 2016; Zhang et al., 2014). Second, with the large thickness and significant
78
longitudinal heterogeneity of shale reservoirs, limited core sample data is not sufficient to interpret
79
the detailed information of the formation. Therefore, predicting sweet spots’ vertical distribution
80
using well log interpretation calibrated with core analyses is needed (Chen et al., 2016). Third,
81
when the sum of the normalized parameters characterizing oiliness and fracability is used as the
82
evaluation standard for sweet spots detection, the prediction result is likely to be only an organic
83
matter sweet spot (a zone with high oil content) or an inorganic sweet spot (a zone that is easily
84
fractured). However, the product of these normalized parameters could clarify this situation.
85
Fourth, the lower limit value of the parameters used for identifying sweet spots is from field
86
experience in other basins, such as S1×100/TOC =100 mg/g proposed by Jarvie et al. (2012),
87
which may not be suitable for the current research area. Standards should be established based on
88
measured data or shale oil production volume in the study area.
89
A shale oil sweet spot should have the presence of high volumes of highly mobile oil and
90
susceptibility to hydraulic fracturing (Lu et al., 2016). Therefore, a new method called the sweet
91
spot index (SSI) is proposed based on the shale oil mobility and ability to create a fracture
92
network by stimulation, and is applied to prediction of sweet spots in the Es3L (lower sub member
93
of the third member of the Eocene Shahejie Formation) lacustrine shale in the Bonan Sag, Bohai
94
Bay Basin, China. The innovative aspects of the SSI method include multiple aspects. First, it
95
accounts for the two most important indicators (shale oil mobility and shale reservoir fracability)
96
(Lu et al., 2016) and can determine the sweet spot’s variations in the vertical distribution of shale
97
reservoirs with significant heterogeneity. Second, the SSI value is the product of the normalized
98
mobility and the fracability index, which avoids the situation where just an organic matter sweet
99
spot or an inorganic sweet spot is identified. Third, the lower limit value of the SSI is determined
100
based on their relationship with shale oil production of the current research area. The effectiveness,
101
reliability and adaptability of the SSI method have been tested on the three wells of the Bonan
102
Sag.
103
2. SSI method
104
The distribution of shale oil sweet spots is varied with the large thickness and significant
105
longitudinal heterogeneity of the lacustrine shale reservoirs in China. It has been observed that the
106
higher mobile oil content and reservoir fracability, the higher shale oil production (Wang et al.,
107
2019). Based on the above reasoning, the concept of the SSI method has been proposed as
108
follows:
109 110
SSI = M n × Fn
(1)
where SSI is the sweet spot index, Mn and Fn are the normalized mobility index and the fracability
111
index, and are defined below:
112
M
113
m in
)
(2)
Fn = ( FI − FI m in ) / ( F I m ax − FI m in
)
(3)
n
= (M − M
m in
) / ( M m ax
−M
114
where Mmin and Mmax are the minimum and maximum mobile oil content for the investigated
115
formation. FImin and FImax are the minimum and maximum fracability index for the investigated
116
formation. M and FI are the mobile oil content and fracability index through depth. Mmin, Mmax,
117
FImin, and FImax are constants and M and FI are variables.
118
For the preliminary predictions of the SSI method, it is necessary to determine the shale oil
119
mobility and shale reservoir fracability. Therefore, in this paper, organic and inorganic
120
heterogeneity evaluation methods have been established using a combination of measured core
121
data and conventional logging curves. The shale organic matter heterogeneity is evaluated by the
122
vertical variation of TOC and S1. The total oil content can be obtained after the light and heavy
123
hydrocarbon measurement of S1, which subtracts the amount of adsorbed oil to get the maximum
124
amount of mobile oil. The shale inorganic heterogeneity is evaluated by the brittleness and rock
125
mechanics parameters to estimate the shale reservoir fracability. The lower limit value of the SSI
126
is determined by the shale oil production of several wells. SSI is applied to other wells to clarify
127
the distribution of shale oil sweet spots in the Bonan Sag. The workflow is shown in Figure 1.
128
3. Case study
129
3.1 Geological settings
130
The Bonan Sag is a secondary structural unit in the central-southern of Zhanhua Sag in
131
Jiyang Depression of the Bohai Bay Basin, China (Shi et al., 2005). To the south, it is connected to
132
the Chenjiazhuang uplift, and to the east, it is connected with the Gubei Sag and the Gudao buried
133
mountain structural belt. The western part of the Bonan Sag is bounded by the Yihezhuang uplift,
134
whereas the northern part is adjacent to the Chengdong uplift. The exploration area of the Bonan
135
Sag is 600 km2 (Figure 2).
136
During the deposition period of the Es3L, a lake basin enlarged with a warm and humid
137
climate and formed a series of rocks with different lithologies, such as dark gray mudstone, dark
138
gray lime mudstone, gray argillaceous dolomite, gray sandy mudstone, and dolomitic siltstone (Jiu
139
et al., 2013; Shi et al., 2005; Wang et al., 2015). The Es3L is the main source rock formation in the
140
Bonan Sag with thickness from 100 to 600 m (328 to 1968 ft). In our previous study, geochemical
141
analysis of the Es3L shale indicated the presence of highly organic-rich, early-mature, Types I and
142
II1 lacustrine oil prone kerogens, and high-density oil. In particular, TOC values range from 0.71
143
to 9.32 wt%, with an average of 3.1 wt%; S1 ranges from 0.03 to 13.12 mg HC/g rock, with an
144
average of 2.14 mg HC/g rock. Hydrogen index (HI) values range from 160.58 to 1041.82 mg/g
145
TOC, and with an average of 495.87 mg/g TOC. %Ro ranges from 0.55 to 0.9 % and pyrolysis
146
peak temperature (Tmax) ranges from 424 to 447 °C, with an average of 440 °C (Wang et al.,
147
2016; Wang et al., 2015). Commercial oil flow has been obtained from the Es3L for many wells,
148
such as well Luo 42, well Luo 19 and well Xinyishen 9 (Table 1). The proved cumulative oil in
149
place is 1.84 × 108 tons (1.38 billion barrels) and the predicted oil in place 1.68 × 108 tons (1.23
150
billion barrels) (Wang et al., 2015), demonstrating the great production potential of the study area.
151
(Note: the detailed explanation of the proved cumulative oil and the predicted oil can be seen in
152
GB/T 19492-2004)
153
In general, the Luo 42 and Xinyishen 9 wells with good oil production rates, are more
154
suitable to establish the SSI method. However, the limited coring data of these two wells makes it
155
difficult to establish effective logging evaluation models. Well Luo 69, which was cored
156
systematically from 2911.00 to 3140.75 m (9550 to 10304 ft) in 2010, provided details and
157
characteristics of the shale oil reservoirs of Es3L and provided good basic data for the exploration
158
and development of shale oil in the Bonan Sag. In this study, organic and inorganic logging
159
evaluation models were established based on core experiments and conventional logging data of
160
the Luo 69 well, and validated with data from other wells (e.g. Luo 67 and Xinyishen 9 wells).
161
3.2 Samples and experiments
162
From top to bottom of Es3L of the Luo 69 well, 180 lacustrine shale samples were selected at
163
1 m intervals, except for some depth intervals without core data, to carry out the routine pyrolysis
164
experiments. After surface cleaning and powdering to 100 mesh, the shale samples were placed
165
into a Rock-Eval-VI instrument. The samples were then heated to 300°C for 3 minute followed by
166
heating to 650°C at a heating rate of 50°C per minute. Organic geochemistry parameters, such as
167
TOC, S1, cracking hydrocarbons (S2), and Tmax were obtained (Espitalié et al., 1984; Espitalie et
168
al., 1977).
169
Forty-five lacustrine shale samples of Es3L in the Bonan Sag were selected to determine the
170
bitumen content using chloroform extraction. The whole-rock samples were powdered to 100
171
mesh after surface cleaning, and subsequently extracted with chloroform for 8 h.
172
Forty lacustrine shale samples of Es3L in the Bonan Sag (two samples from well Luo 67,
173
three samples from well Xinyishen 9, and thirty-five samples from well Luo 69) were selected to
174
carry out the stepwise pyrolysis experiment. The schematic diagram of the stepwise heating
175
pyrolysis is shown in Figure 3. The process of pyrolysis and the products of each stage in this
176
study were as follows: powdered samples (100 mesh) were placed into the Rock-Eval 6 instrument,
177
and heated at a rate of 25°C per minute from 90°C to the first target temperature of 200°C and
178
held for 3 minute to get the S1-1, then heated at a rate of 25°C per minute from 200°C to the
179
second target temperature of 300°C and held for 3 minute to get the S1-2a, and then heated at a rate
180
of 25°C per minute from 300°C to the third target temperature of 350°C and held for 3 minute to
181
get the S1-2b. After the third target temperature, the samples continued to be heated at a rate of
182
25°C per minute from 350°C to the third target temperature of 450°C and held for 3 minute to get
183
the S2-1, and then heated at a rate of 25°C per minute from 450°C to the fifth target temperature of
184
650°C to get the S2-2. The physical meaning of the S1-1, S1-2a, S1-2b, S2-1, and S2-2 had been
185
interpreted by (Jiang et al., 2016b): the sum of S1-1 and S1-2 is the free hydrocarbons which
186
represent the maximum movable hydrocarbon content; S2-1 is the adsorbed hydrocarbons, and S2-2
187
is the cracking hydrocarbons of kerogen. Although some less stable kerogen components have
188
been cracked at 450°C and lower, there are some heavy components in shale oil that would be
189
cracked or evaporated at the temperature above 450°C as well. And the total oil released before
190
450°C is equal to the extracts obtained from the solvent extraction. Thus the stepwise pyrolysis
191
method used in this study is considered reliable for the characterization of adsorbed oil (S2-1) from
192
the perspective of oil content (Jiang et al., 2016b; Li et al., 2018).
193
Three hundred and fifty lacustrine shale samples of Es3L were selected from well Luo 69 and
194
analyzed for mineral composition. Each sample was crushed and mixed with ethanol, ground in a
195
mortar and pestle, and smeared on a glass slide. The X-ray diffraction experiments were
196
performed using a Panalytical X'Pert PRO Diffractometer (Petroleum Exploration and Production
197
Research Institute, Sinopec) with Cu Kα radiation (40 kV, 30 mA) and a scanning speed of 2° 2θ
198
per minute (θ) to analyze all the minerals. The experiment was carried out at room temperature
199
(25°C).
200
3.3 Organic heterogeneity logging evaluation
201
3.3.1 TOC and S1 logging evaluation
202
The ∆logR method is widely used for the TOC prediction of source rock because of its
203
convenience and versatility (Modica and Lapierre, 2012; Passey et al., 1990; Sharma and Chopra,
204
2016). However, the accuracy of the traditional ∆logR method is often influenced by artificial
205
factors, such as the baseline selection, the fixed congruence coefficient, the TOC background
206
value, and sample maturity, all of which may cause difficulty in achieving the desired goals (Liu et
207
al., 2014). In this study, an improved ∆logR method was used to evaluate TOC and S1. This
208
method automatically selected the baseline and optimized the proportionality coefficient D based
209
on the minimum error between the log prediction value and the measured value from the core
210
analysis. The calculation process of the improved ∆logR method was completed by computer, and
211
the model was (Liu et al., 2014):
212
∆ log R = D × log
R + (1 − D ) × ( ∆t − ∆tbaseline ) Rbaseline
TOC = A × ∆ log R + B
213
(4) (5)
214
where Rbaseline and ∆tbaseline are the baseline values of the resistivity log and the acoustic log, in Ωm
215
and µs/ft, respectively. R and ∆t are the values of the resistivity log and the acoustic log along the
216
depth, in Ωm and µs/ft, respectively. D is the proportionality coefficient, which represents the
217
relative proportion of the resistivity curve in ∆logR, ranging from 0 to 1. A and B are model
218
coefficients, both greater than zero.
219
Based on the minimum error between the predicted TOC and the measured TOC, the value of
220
the proportionality coefficient D of the improved ∆logR method for TOC prediction is optimized
221
as 0.1. The calculation, A and B in equation 5, were obtained from the relationship between the
222
TOC from the core analysis and the log data (Figure 4(a)). The correlation coefficient (R2) is
223
approximately as high as 0.882, which indicates that the improved ∆logR method is suitable for
224
predicting the TOC. The formula to predict the TOC can be expressed as:
225
∆ log RTOC = 0.1 × log
R + 0.9 × ( ∆ t − ∆ tbaseline ) Rbaseline
TOC = 1.202 × ∆ log RTOC + 0.561
226
(6) (7)
227
Similarly, the improved ∆logR method was also applied to the prediction of S1, as shown in
228
Figure 4(b). The value of the proportional coefficient D for S1 prediction is 0.35. For the improved
229
∆logR method, the proportional coefficient D plays a role in identifying the contribution of
230
kerogen and hydrocarbon fluid in organic matter. It is easy to understand that the proportional
231
coefficient D for S1 calculation is greater than that of the TOC calculation because the resistivity
232
logs are more sensitive to the hydrocarbon fluid, while the acoustic logs are sensitive to the
233
kerogen (Liu et al., 2014). The formula to predict the S1 can be expressed as:
234
∆ log RS1 = 0.35 × log
S1 = 0.973 × ∆ log RS1 + 0.264
235 236
R + 0.65 × ( ∆ t − ∆ t baseline ) Rbaseline
(8) (9)
3.3.2 Oil content evaluation
237
The oil content, characterized directly by the pyrolysis parameter S1 is not equal to that of the
238
background because of the loss of light hydrocarbons and heavy hydrocarbons during the process
239
of the core storage and experimental analysis (Jarvie, 2012). Generally, the loss of light
240
hydrocarbons typically the C15- fractions, while the heavy hydrocarbons appear within S2 peak
241
because of the “carry-over” effect and confinement effect (Delvaux et al., 1990). At present, there
242
are several methods for the recovery of S1, such as the chromatographic method, combined
243
extraction with pyrolysis, chemical kinetic theory, and pressure coring (Jiang et al., 2016a; Wang
244
et al., 2014; Zhu et al., 2015).
245
In this study, for the recovery of heavy hydrocarbons, we directly corrected S1 according to
246
the relationship between S1 and bitumen “A”. Figure 5 shows that the correction coefficient for
247
heavy hydrocarbons (KH) is 3.358 based on the relationship between the overall hydrocarbon
248
content and S1, which is close to the value of 3.20 found by Wang et al. (2014) for the Chinese
249
eastern basins. For the recovery of light hydrocarbons, we use the relationship between the light
250
hydrocarbon recovery coefficient and the maturity/depth of the Jiyang Depression built by Zhu et
251
al. (2015). As shown in Figure 6, the light hydrocarbon recovery coefficient (KL) becomes larger
252
as the depth increases. The reason for this can be interpreted that the deeper source rock produces
253
lighter hydrocarbon components, which are easily lost during the processes of core storage and
254
experimental analysis.
255
After recovery of S1, the oil content (Ot) can be estimated by equation 10: Ot = S1 × K H × K L
256
(10)
257
where S1 is the volatile hydrocarbon content in mg/g, which can be obtained from pyrolysis or the
258
logging evaluation method. KH is the correction coefficient for heavy hydrocarbons, the value is
259
3.358 in the Bonan Sag (Figure 5). KL is the correction coefficient for light hydrocarbons, which is
260
related to the maturity.
261
3.3.3 Mobile oil content evaluation
262
There are a few reports available on the evaluation of the mobility of shale oil, and the
263
evaluation methods are: OSI > 100 mg/g, the value of OSI at the hydrocarbon expulsion threshold,
264
the elastic/dissolved gas driving model method, and the hydrocarbon adsorption and vapor
265
adsorption method (Jarvie, 2012; Li et al., 2017; Li et al., 2016; Zhang et al., 2014). The OSI >
266
100 mg/g indicator (Jarvie, 2012) is based on the statistics of marine shale oil production capacity,
267
which may not be suitable for the current research area since the adsorption capacity of kerogen is
268
affected by the kerogen type, maturity (Zhang et al., 2012b), and oil properties (Wei et al., 2012),
269
etc. The elastic/dissolved gas driving model is important for the prediction of mobile oil, but it is
270
difficult to obtain all the geological parameters required for this method (Zhang et al., 2014).
271
In this study, the adsorbed oil content of ten samples was tested by a stepwise heating
272
pyrolysis experiment performed on shales and routine Rock-Eval performed on shales and solvent
273
extracted shales, respectively. The relationship between the heavy oil content (S2-S2’) of the
274
routine Rock-Eval and adsorbed oil content (S2-1) of the stepwise Rock-Eval at the temperature
275
interval ranging from 350°C to 450°C was shown in the Figure 7a. The coefficient between these
276
two parameters is 0.9068, indicating that heavy oil content characterized by the extraction method
277
is slightly higher than the adsorbed oil content obtained from the stepwise experiment. The reason
278
can be interpreted by the factor that the temperature interval of the routine pyrolysis used for the
279
extraction method is relatively wide. Also, the solvent-based extraction method extracts both free
280
oil and adsorbed oil (Sonnenfeld and Canter, 2016). The adsorbed oil content (Oa) is controlled by
281
TOC values (Figure 7b), which can be calculated as shown below:
282
Oa = 2.007 × TOC
(11)
283
The physical meaning of equation 11 is that the coefficient of adsorbed oil content is
284
approximately 2.007, which is greater than the coefficient values of heavy hydrocarbons (S2-S2’)
285
and TOC given in the previous reports, such as the average value of 1.01 reported by Han (Han et
286
al., 2015)) and 0.82 by Li (Li et al., 2018)). Jiang et al. (2016b) show that the kerogen of well Luo
287
69 is rich in sulfur with low hydrocarbon-generating activation energy and it can generate heavy
288
oil in the early stage (low thermal maturities). The shale oil produced from the Es3L of the three
289
wells in the Bonan Sag have high densities (ranging from 0.87 to 0.91 g/cm3), which are greater
290
than that produced in Barnett Shale (Table 2). Therefore, the coefficient of adsorbed oil content in
291
the Bonan Sag is relatively high.
292 293
In this study, the mobile oil content (M) can be obtained from the combination of total oil content (Ot) and the adsorbed oil content (Oa):
M = Ot − Oa
294
= S1 × K H × K L − TOC × 2.007
295
3.4 Inorganic heterogeneity logging evaluation
296
3.4.1 Mineral content evaluation
(12)
297
Since special logging technologies like element-capture spectroscopy logging (ECS) and
298
natural gamma spectrum (NGS) have not been widely used in China, it is necessary to predict the
299
mineral composition from conventional logs. Multivariate fitting and full-volume linear models
300
are two methods widely used to evaluate inorganic minerals (Adiguna, 2012; Mahmood et al.,
301
2018; Zhong et al., 2006; Zorski et al., 2011). However, the volume summary of each component
302
evaluated by the multivariate fitting method is not equal to 100%, which has caused the
303
multivariate fitting method to be questioned. Moreover, previous studies have claimed that not all
304
values obtained from well logging instruments are a simple linear superposition of log response
305
values for each component of the reservoir (Adiguna, 2012; Lai et al., 2015; Xiao et al., 2016). It
306
is therefore difficult to describe the relationship between the content of each mineral and well
307
logs values with a simple linear formula. Fortunately, due to the advantages of an
308
unstructured calculation, the neural network technique has been successfully applied to
309
reservoir parameter predictions (Jamshidian et al., 2015; Shi et al., 2016). We have introduced
310
the principles and workflows of back propagation (BP) network in detail in our previous
311
study (Li et al., 2019), and will give a brief introduction here.
312
BP neural network is a multi-layer feed forward network trained according to an error
313
feedback propagation algorithm. Its structure has three layers: the input layer, the hidden layer,
314
and the output layer. Three layers are connected by weights (Wij and Wjk) and threshold values (aj
315
and bk). Through repeated calibration using a large number of measured samples, the weights,
316
threshold values, and the number of hidden layer nodes, can be optimized (Hecht-Nielsen, 1989).
317
The parameters of the input layer are well logs, while the parameters of the output layer are
318
mineral composition. The shale mineralogy was divided into three groups since it is difficult to
319
evaluate all the mineral contents using the limited conventional logs. These groups consist of clay
320
minerals (illite, chlorite, kaolinite and mixed layer), siliceous minerals (quartz and feldspar-based),
321
and calcareous minerals (calcite, dolomite and siderite). The relationships between the each
322
mineral group and conventional logs were analyzed using equation 13 (Table 3). The logs with a
323
significant correlation coefficient at the 0.01 level were selected as the input parameters of the BP
324
neural network, which were acoustic (AC), density (DEN), neutron (CNL), gamma ray (GR), and
325
resistivity (RT). =
326
∑ ∑ ∑ ∑ ∑ ∑ ∑
(13)
327
where r is the correlation coefficient, xi and yi are variables, and N is the number involved in the
328
calculation.
329
Before the BP network optimization, all input parameters were normalized from -1 to 1 to
330
eliminate the effects of the different dimensions of the input log values and to accelerate the rate
331
of convergence (Lai et al., 2015; Li et al., 2019; Tan et al., 2013). In addition, to promote the
332
representativeness and applicability of the BP network, 200 samples were randomly selected as
333
training samples, 80 samples were selected as validating samples and 70 samples were selected as
334
testing samples. The BP neural network is optimized by using a cross-validation method for
335
training samples and validating samples, and the optimal network is tested by the testing samples.
336
As shown in Figure 8, the predicted values of the training and validating samples of the BP neural
337
network and the measured values of each mineral group show a good linear relationship, the linear
338
coefficients are approximately equal to 1, and the correlation coefficients (R) are more than 0.7. In
339
addition, the distribution of the testing sample points on both sides of the diagonal guarantees the
340
predictive performance of the model, indicating that the BP neural network can be applied to the
341
other wells.
342
3.4.2 Fracability evaluation
343
The low-permeability characteristics of shale reservoirs determine that they have to be
344
fractured to achieve oil production. The formation of large-scale fracture networks should have a
345
high brittleness index and low fracture toughness to generate more fracture/flow channels at a
346
given energy (Jin et al., 2014, 2015; Sun et al., 2015). There was a positive relationship between
347
the fracture toughness and the Young's modulus (Jin et al., 2014, 2015). Therefore, Young's
348
modulus was used to define the fracability index in this study. An ideal fracturing zone should
349
have a high brittleness index and a low Young's modulus. The mathematical model of the
350
fracability index (FI) can be expressed as:
351 352
FI =
1 ( Bn + En ) 2
(14)
where Bn and En are the normalized brittleness and the normalized Young's modulus, and are
353
defined as:
354
B n = ( B − B m in ) / ( B m a x − B m in
)
(15)
355
E n = ( E m a x − E ) / ( E m a x − E m in
)
(16)
356
where Bmin and Bmax are the minimum and maximum brittleness indexes for the investigated
357
formation, Emin and Emax are the minimum and maximum Young's modulus for the investigated
358
formation. Bmin, Bmax, Emin, Emax are constants. B and E are the brittleness index and the Young's
359
modulus through depth, which are defined as (Jin et al., 2014, 2015):
360
361
B =
E=
V sil + V cal V total
ρ ×( 3×∆ts 2 − 4 ×∆t p2 ) ∆ts 2 ×( ∆ts 2 −∆t p2 )
(17)
(18)
362
where Vsil and Vcal are the siliceous minerals content and the calcareous minerals content. Vtotal is
363
the total mineral content. ρ is the density log, g/cm3. ∆ts is the transverse wave logging data, µs/ft.
364
∆tp is the longitudinal wave logging data, µs/ft.
365
Since transverse wave logging data is limited, 15 samples were selected from Es3L of well
366
Luo 69 to test the transverse wave logging and longitudinal wave logging in the laboratory. The
367
lithology of these samples contains dark shale, gray mudstone, and argillaceous dolomite, which
368
cover the main lithology types of the Es3L in the Bonan Sag. The depth of these samples varies
369
from 2947 m to 3123 m, within the Es3L of well Luo 69. The relationship between the transverse
370
wave logging and longitudinal wave logging are shown in Figure 9. Therefore, the transverse
371
wave logging data can be obtained from the following relationship:
372
∆ t s = 2 .4 9 6 × ∆ t p - 5 1 .1 8 5
(19)
373
The brittleness index of the Es3L of well Luo 69 was evaluated using equation 17 based on
374
the content of calcareous and siliceous minerals. The fracability index (FI) was calculated by the
375
combination of the brittleness index and Young's modulus using equation 14, as shown in Figure
376
10. The color indicates the value of the fracability index. As the color changes from deep blue to
377
red, the shale changes to a more readily fractured rock matrix. High energy may be required to
378
generate cracks in the formations with a high brittleness index and a large Young's modulus, and
379
so these areas should not be used as development targets at the early stage of shale oil exploration.
380
3.5 Lower limit value of the SSI
381
The statistical data of the shale oil productivity (daily output per meter, t/d ▪m-1) and the SSI
382
of the production intervals of the seven wells (see locations in Figure 2) of Es3L in the Bonan Sag
383
have been analyzed, as shown Figure 11. The shale oil productivity increases with the increase of
384
SSI, and there exists an inflection point. When the SSI is less than 0.1, the shale oil productivity is
385
low, and the trend is flat. When the SSI is greater than 0.1, the shale oil productivity increases
386
rapidly. Therefore, we take 0.1 as the lower limit value of the SSI for the favorable shale oil
387
section of the Bonan Sag, and the area where the SSI is greater than 0.1 is the sweet spot of the
388
shale oil.
389
In addition, the relationships between the mobile oil content, the fracability and the shale oil
390
productivity are shown in Figure 12. The shale oil productivity increases with the increase of the
391
mobile oil content and the fracability. The trend of increasing shale oil production with mobile oil
392
content similar to that of the SSI, not the fracability, indicates that the SSI is mainly controlled by
393
the mobile oil content in this area. There also exists an inflection point in the trend of increasing
394
shale oil production with mobile oil content (Figure 12 (a)), and the lower limit value of the
395
mobile oil content can be set as 5 mg/g. The scatter plot between the shale oil productivity and the
396
reservoir fracability is mainly divided into two areas, as shown in Figure 12(b). The high oil
397
production area and the low oil production area can be separated by a fracability of approximately
398
0.7, which is equal to the value of used by Jin et al. (2015) for the Barnett Shale.
399
The statistical data of the shale oil wells show that the mobile oil content of the Es3L in the
400
Bonan Sag ranges from 0 to 30 mg/g, and the fracability ranges from 0.4 to 0.9, i.e, Mmin and Mmax
401
in the Equation (2) are 0 and 30, Fmin and Fmax in the Equation (3) are 0.4 and 0.9, respectively. As
402
shown in Figure 12, when the mobile oil content reaches 5 mg/g and the reservoir fracability
403
reaches 0.7, the shale oil productivity increases and the SSI value calculated by Equation (1) is 0.1,
404
which equal to the lower limit value of the SSI for the favorable shale oil section (Figure 11).
405
Therefore, the geological meaning of the lower limit value of the SSI of 0.1 in the Bonan Sag can
406
be interpreted that a minimum of 5 mg/g mobile oil and a fracability index greater than 0.7 are
407
required to qualify as a sweet spot for a shale oil reservoir.
408
4. Examples and discussion
409
The following section uses the experimental core data and log data from the various shale oil
410
wells of the Bonan Sag to select shale oil sweet spots using the SSI method. Many of the examples
411
in this study are combined with actual oil production and compared with the method proposed by
412
Yang et al. (2015) using the overlapping parameters, thereby demonstrating the effectiveness of
413
the SSI method in shale oil sweet spots selection.
414
4.1 Well Luo 69
415
The first example is well Luo 69, which was systematically cored from 2911.00 to 3140.75 m
416
(9550 to 10,304 ft) in the Es3L and provided good basic data for the exploration and development
417
of shale oil in the Bonan Sag. However, the production testing on the interval from 3040 to 3066
418
m (9974 to 10,059 ft) yielded only 0.85 tons (6.2 bbl) of oil per day with a density of 0.89 g/cm3
419
(Tables 1 and 2).
420
The vertical distribution of the oiliness, fracability, SSI, etc. of Es3L of well Luo 69 have
421
been predicted using conventional logs, as shown in Figure 13. Tracks 1 and 2 are the main well
422
logging curves used for the organic and inorganic evaluation. Track 3 is the depth and track 4 is
423
the lithology. Tracks 5 and 6 are the logging evaluation results of the TOC and S1, which are
424
consistent well with the measured values (black dots). Tracks 7 and 8 are the porosity and oil
425
saturation from the experiments. Track 9 contains total oil and mobile oil. The total oil content is
426
the S1 value after the recovery of light and heavy hydrocarbons, the mobile oil content is obtained
427
by subtracting the amount of adsorbed oil from the total oil content, and the intervals with the
428
mobile oil content greater than 5 mg/g are filled with a yellow color. Tracks 10-12 are the logging
429
evaluation results of the minerals, such as clay minerals, siliceous minerals and calcareous
430
minerals, which are very consistent with the measured values (black dots). Track 13 is the Young’s
431
modulus and track 14 is the brittleness index calculated from the brittleness minerals content.
432
Track 15 is the fracability estimated using the combination of the brittleness index and the
433
Young’s modulus, and the intervals with the fracability greater than 0.7 are filled with a yellow
434
color. Track 16 is the vertical distribution of the SSI based on the mobile oil content and the
435
fracability of the shale reservoirs, and the intervals with the SSI greater than 0.1 are filled with a
436
yellow color in this track. Track 17 shows the sweet spots selected by the previous method
437
proposed by Yang et al. (2015) using the superposition of TOC, S1, porosity, oil saturation and
438
brittleness index. Track 18 shows the sweet spots selected by the SSI method proposed in this
439
study.
440
There are almost no depth intervals with the SSI greater than 0.1 in the Es3L of well Luo 69
441
(the thickness of the intervals at 3043 m (9983 ft) and 3059 m (10,036 ft) with the SSI greater than
442
0.1 are too thin to be considered in this study), therefore, nothing was shown in the track 18 of
443
Figure 13. The area enclosed by the red box from 3040 to 3066 m (9974 to 10,059 ft) is the oil
444
testing interval, although this interval has the characteristics of moderate maturity (Ro range from
445
0.7% to 0.93% in Es3L, with an average value of 0.8% (Lu et al., 2017; Wang et al., 2013)), high
446
organic matter, porosity, oil saturation, and brittleness (Table 4). The average values of the mobile
447
oil content and reservoir fracability in this interval are only 3.94 mg/g and 0.68, respectively. The
448
values of the SSI in this oil production test interval are generally less than 0.1, indicating that this
449
interval is not an appropriate shale oil sweet spot of well Luo 69, as shown by the oil production
450
testing results with low oil production of 0.85 tons per day.
451
Using the previous methods based on the combination of TOC, S1, porosity, oil saturation,
452
and brittleness index (Yang et al., 2015; Zou et al., 2013) suggests that interval from 2990 to 3066
453
m (9809 to 10,059 ft) as a sweet spot. The standard parameters used in previous methods are
454
shown in Table 5. The intervals of each parameter used by the previous method beyond the
455
standards are filled with peach color, as shown in Figure 13. It is evident that the sweet spots
456
selected by the previous methods in Es3L of Luo 69 are not consistent with the actual oil testing
457
results.
458
4.2 Well Luo 67
459
The second example is well Luo 67. Its location is shown in Figure 2. As a low oil production
460
well in the Bonan Sag, well Luo 67 yielded 2.1 tons (15.4 bbl) of oil per day with a density of 0.91
461
g/cm3 in the interval from 3287 to 3310 m (10,784 to 10,859 ft) (Table 1). Unlike well Luo 69, as
462
the coring was limited, therefore, the analysis for TOC, pyrolysis, porosity, oil saturation and
463
mineral compositions of this well were only carried on several samples in the Es3L. For this
464
reason, we used the organic and inorganic logging evaluation models established by well Luo 69
465
to calculate the TOC, S1 and mineral contents, and validated the results with measured values from
466
core data of well Luo 67. The vertical distribution of the oiliness, fracability, and SSI in Es3L of
467
well Luo 67 have been predicted using the conventional logs, as shown in Figure 14. The curves
468
of tracks 5 and 6 are the logging evaluation results of the TOC and S1 based on the organic
469
logging evaluation models established by the data of well Luo 69, and the curves of tracks 8-10
470
are the logging evaluation results of each mineral group based on the inorganic logging evaluation
471
models. The vertical distribution of the predicted values match well with the measured values,
472
indicating that the organic and inorganic logging evaluation models established by well Luo 69 are
473
reliable and can be applied to the other wells in the study area.
474
The abundance of organic matter (oiliness) and reservoir fracability calculated from
475
conventional logs shows a decrease with the depth increase in Es3L of well Luo 67. There exists
476
an oiliness peak at the interval from 3300 to 3310 m (10,826 to 10,859 ft) from the measured
477
values of cuttings, and this peak is located in the range of the oil testing interval from 3287 to
478
3310 m (10,784 to 10,859 ft) (the area enclosed by the red box in Figure 14). Compared with the
479
oil testing interval of well Luo 69, although well Luo 67 has higher mobile oil content (with an
480
average value of 6.2 mg/g), the oil production of well Luo 67 is also low after fracturing. The
481
reason for this may be interpreted from the fracability calculated from the conventional logs,
482
which ranges from 0.53 to 0.77, with an average value of 0.63, which is smaller than the lower
483
limit value of 0.7 and indicates poor fracability.
484
The depth intervals with the SSI greater than 0.1 in the Es3L of well Luo 67 range from 3178
485
to 3230 m (10,426 to 10,597 ft) and from 3302 to 3306 m (10,833 to 10,846 ft). Since the
486
thickness of the interval from 3302 to 3306 m is too thin to economically produce oil, we only
487
take the interval from 3178 to 3230 m as the sweet spot in Es3L of well Luo 67 (Track 16 of
488
Figure 14).
489
Track 15 in Figure 14 shows the three sweet spots of well Luo 67 selected by the method
490
proposed by Yang et al. (2015) using the superposition of the TOC, S1 and brittleness index. The
491
first sweet spot is located from 3170 to 3230 m (10,400 to 10,597 ft), which is roughly consistent
492
with the results of the SSI method proposed in this paper. The second and third sections are
493
located in the intervals from 3264 to 3277 m (10,708 to 10,751 ft) and the intervals from 3299 to
494
3312 m (10,823 to 10,866 ft), respectively, which are not selected by the SSI method. Although
495
the oiliness (TOC and S1) and brittleness index in the second and the third sections are greater
496
than the values of Yang’s method (Yang et al., 2015), the low shale oil mobility characters of the
497
second section (mobile oil content less than 5 mg/g) and the poor fracability characters of the third
498
section (average value of fracability is 0.69) suggests that these two intervals are not suitable
499
sweet spots of well Luo 67. The oil productivity of the third section (Table 1) in well Luo 67 also
500
supports this view.
501
4.3 Well Xinyishen 9
502
The third example is applied on well Xinyishen 9. Unlike wells Luo 69 and Luo 67, well
503
Xinyishen 9 is a commercial oil well with high oil production of 38.5 tons (283 bbl) per day in
504
Es3L, and the accumulated oil production has reached 13,164 tons (96,755 bbl) (Wang et al.,
505
2013). The location of well Xinyishen 9 is shown in Figure 2.
506
The organic and inorganic logging evaluation models of well Luo 69 were used to understand
507
the oiliness and reservoir fracability, and to predict the vertical distribution of the SSI of well
508
Xinyishen 9, as shown in Figure 15. The interval from 3388 to 3405 m (11,115 to 11,171 ft) is
509
perforated for oil production (the area of red box circled in Figure 15), although this interval does
510
not have accompanying core analysis. The logging evaluation results indicate that this interval is
511
characterized by high oil abundance of organic matter, high mobility, and can easily be fractured
512
(Table 4). The SSI ranges from 0.08 to 0.31 with an average value of 0.17, suggesting that this
513
interval is a true sweet spot in Es3L for well Xinyishen 9. The result of the oil testing production
514
in this interval is 38 tons per day, which provides sufficient evidence to test the SSI method for
515
shale oil sweet spots prediction. In addition, the values of the mobile oil content, fracability, SSI,
516
and the thickness of the oil tested intervals are much larger than those of well Luo 67 (Figure 14),
517
resulting in a comparatively higher productivity for well Xinyishen 9. The other interval with SSI
518
greater than 0.1 in Es3L for well Xinyishen 9 ranges from 3361 to 3384 m (11,027 to 11,102 ft),
519
which could also be considered as a shale oil sweet spot for well Xinyishen 9, as shown in track
520
16 of Figure 15.
521
The interval from 3361 to 3424 m (11,027 to 11,233 ft) can be selected as the shale oil sweet
522
spot of well Xinyishen 9 based on the Yang’s method (Yang et al., 2015) (track 15 of Figure 15).
523
Although this zones is characterized by high oil production, two sections, such as the interval from
524
3384 to 3388 m (11,102 to 11,115 ft) and the interval from 3407 to 3424 m (11,178 to 11,233 ft)
525
(the areas enclosed by the blue boxes in Figure 15), indicate low shale oil mobility (mobile oil
526
content is only 4.1 mg/g on average) and relative low shale fracability, suggesting that these zones
527
are not good quality sweet spots.
528
Based on the above analysis, the shale oil mobility and the shale reservoir fracability are two
529
critical factors that must be taken into account for the prediction of shale oil sweet spots. As a
530
novel approach proposed in this study, the SSI method is suggested to be feasible for the
531
identification of shale oil sweet spots, and has the following advantages compared with previous
532
methods: (1) It combines the properties of shale oil mobility and shale reservoir fracability and
533
eliminates the instances of only organic matter sweet spots or inorganic sweet spots. (2) It has
534
better consistency with the actual output of shale oil. (3) With the advantage of high-resolution
535
logging (i.e., FMI provides data at much finer scales, such as 0.0254m per sample), the SSI
536
method can accurately evaluate the vertical distribution of shale oil sweet spots even if there is no
537
core analysis data available.
538
It should be noted that the method for selecting sweet spots proposed in this study is from the
539
perspective of mobile oil content and reservoir fracability. However, as lacustrine shales often
540
generate polar-rich petroleum with high molecular weight waxes, oil flow can be hindered even in
541
highly stimulated wells. Other factors, such as oil quality, reservoir pressure, gas-to-oil ratio (GOR)
542
etc. are also important for the shale oil production. Therefore, during the entire process of risking
543
targets, various geological characteristics or parameters should be considered comprehensively. In
544
addition, gas injection, in situ formation heating, microwave, and other technologies could be
545
adopted to highly help move the petroleum out of the source rock after reservoir stimulation.
546
5. Conclusion
547
This paper proposed a new method (SSI) that uses a combination of shale oil mobility and shale
548
reservoir fracability to predict the sweet spots of shale oil using conventional logs.
549
The SSI is obtained by the product of the normalized mobility and the fracability index. The
550
higher the mobile oil content and fracability, the higher SSI value will be, and the better the
551
reservoir properties will be. The new method avoids the situation where just an organic matter
552
sweet spot or an inorganic sweet spot is defined. Together, with the advantage of a conventional
553
logging suite, this method can predict the vertical distribution of sweet spots even if there is no
554
core data or special logging data.
555
The SSI method was successfully applied to the sweet spots prediction of the Es3L lacustrine
556
shale in the Bonan Sag, Bohai Bay Basin, China. The organic and inorganic logging evaluation
557
models have been established by the improved ∆logR method and the BP neural network based on
558
the use of the core measurements and conventional logs of well Luo 69 to predict the oiliness and
559
fracability, and the method were verified by well Luo 67 and well Xinyishen 9. The lower limit
560
value of the SSI used to define the sweet spots was set to 0.1 through its correlation with the shale
561
oil production. Three wells of the Bonan Sag have verified the effectiveness, reliability and
562
adaptability of the SSI method in the prediction of sweet spots using conventional logs.
563
Acknowledgements
564
This study was funded by the National Natural Science Foundation of China (no. 41922015,
565
41672116),
566
2017ZX05049-004-003), and the Fundamental Research Funds for the Central Universities (no.
567
17CX02057 and no. 18CX06031A). The authors also thank Dan Jarvie for his valuable advice and
568
comments that improved this paper.
569
References
570 571 572 573 574 575
Adiguna, H., 2012. Comparative study for the interpretation of mineral concentrations, total porosity,
the
National
Science
and
Technology
Major
Project
of
China
(no.
and TOC in hydrocarbon-bearing shale from conventional well logs. Chen, G., Bai, Y., Chen, X., Xu, B., Zhu, Y., Feng, R., Chen, L., 2016. A new identification method for the longitudinal integrated shale oil/gas sweet spot and its quantitative evaluation. Acta Petrolei Sinica. Chen, G., Lu, S., Zhang, J., Wang, M., Li, J., Xu, C., Pervukhina, M., Wang, J., 2017a. Estimation of
576 577 578 579 580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619
enriched shale oil resource potential in E2s4L of Damintun sag in Bohai Bay Basin, China. Energy & Fuels 31, 3635-3642. Chen, S., Zhao, W., Ouyang, Y., Zeng, Q., Yang, Q., Hou, H., Gai, S., Bao, S., Li, X., 2017b. Prediction of sweet spots in shale reservoir based on geophysical well logging and 3D seismic data: A case study of Lower Silurian Longmaxi Formation in W4 block, Sichuan Basin, China. Energy Exploration & Exploitation. Clarkson, C.R., Solano, N., Bustin, R.M., Bustin, A.M.M., Chalmers, G.R.L., He, L., Melnichenko, Y.B., Radliński, A.P., Blach, T.P., 2013. Pore structure characterization of North American shale gas reservoirs using USANS/SANS, gas adsorption, and mercury intrusion. Fuel 103, 606-616. Delvaux, D., Martin, H., Leplat, P., Paulet, J., 1990. Comparative Rock-Eval pyrolysis as an improved tool for sedimentary organic matter analysis. Organic Geochemistry 16, 1221-1229. Espitalié, J., Makadi, K.S., Trichet, J., 1984. Role of the mineral matrix during kerogen pyrolysis. Organic Geochemistry 6, 365-382. Espitalie, J., Madec, M., Tissot, B., Mennig, J., Leplat, P., 1977. Source rock characterization method for petroleum exploration, Offshore Technology Conference. Offshore Technology Conference. Glaser, K.S., Miller, C.K., Johnson, G.M., Toelle, B., Kleinberg, R.L., Miller, P., Pennington, W.D., 2013. Seeking the sweet spot: Reservoir and completion quality in organic shales. Oilfield Review 25, 16-29. Hakami, A., Ellis, L., Al-Ramadan, K., Abdelbagi, S., 2016. Mud gas isotope logging application for sweet spot identification in an unconventional shale gas play: A case study from Jurassic carbonate source rocks in Jafurah Basin, Saudi Arabia. Marine and Petroleum Geology 76, 133-147. Han, Y., Mahlstedt, N., Horsfield, B., 2015. The Barnett Shale: Compositional fractionation associated with intraformational petroleum migration, retention, and expulsion. AAPG Bulletin 99, 2173-2202. Hecht-Nielsen, R., 1989. Theory of the backpropagation neural network. Heege, J.T., Zijp, M., Nelskamp, S., Douma, L., Verreussel, R., Veen, J.T., Bruin, G.D., Peters, R., 2015. Sweet
spot
identification
in
underexplored
shales
using
multidisciplinary
reservoir
characterization and key performance indicators: Example of the Posidonia Shale Formation in the Netherlands
. Journal of Natural Gas Science & Engineering 27, 558-577.
Hua, Y., Xiaobing, N.I.U., Liming, X.U., Shengbin, F., Yuan, Y.O.U., Liang, X., Fang, W., Zhang, D., 2016. Exploration potential of shale oil in Chang7 member, upper Triassic Yanchang formation, Ordos Basin, NW China. Petroleum Exploration and Development 43, 560-569. Jamshidian, M., Hadian, M., Zadeh, M.M., Kazempoor, Z., Bazargan, P., Salehi, H., 2015. Prediction of free flowing porosity and permeability based on conventional well logging data using artificial neural networks optimized by Imperialist competitive algorithm – A case study in the South Pars gas field. Journal of Natural Gas Science and Engineering 24, 89-98. Jarvie, D.M., 2012. Shale resource systems for oil and gas: Part 2—Shale-oil resource systems. Jia, J., Bechtel, A., Liu, Z., Strobl, S.A.I., Sun, P., Sachsenhofer, R.F., 2013. Oil shale formation in the Upper Cretaceous Nenjiang Formation of the Songliao Basin (NE China): implications from organic and inorganic geochemical analyses. International Journal of Coal Geology 113, 11-26. Jiang, C., Chen, Z., Mort, A., Milovic, M., Robinson, R., Stewart, R., Lavoie, D., 2016a. Hydrocarbon evaporative loss from shale core samples as revealed by Rock-Eval and thermal desorption-gas chromatography analysis: Its geochemical and geological implications. Marine and Petroleum
620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663
Geology 70, 294-303. Jiang, Q., Li, M., Qian, M., Li, Z., Li, Z., Huang, Z., Zhang, C., Ma, Y., 2016b. Quantitative characterization of shale oil in different occurrence states and its application. Petroleum Geology & Experiment. Jiang, Z.X., Zhang, W.Z., Liang, C., Wang, Y.S., Liu, H.M., Chen, X., Sinica, A.P., 2014. Characteristics and evaluation elements of shale oil reservoir. Acta Petrolei Sinica 35, 184-196. Jin, X., Shah, S.N., Roegiers, J.-C., Zhang, B., 2014. Fracability evaluation in shale reservoirs-an integrated petrophysics and geomechanics approach, SPE hydraulic fracturing technology conference. Society of Petroleum Engineers. Jin, X., Shah, S.N., Roegiers, J.-C., Zhang, B., 2015. An integrated petrophysics and geomechanics approach for fracability evaluation in shale reservoirs. SPE Journal 20, 518-526. Jiu, K., Ding, W., Huang, W., Zhang, Y., Zhao, S., Hu, L., 2013. Fractures of lacustrine shale reservoirs, the Zhanhua Depression in the Bohai Bay Basin, eastern China. Marine and Petroleum Geology 48, 113-123. Kirschbaum, M.A., Mercier, T.J., 2013. Controls on the deposition and preservation of the Cretaceous Mowry Shale and Frontier Formation and equivalents, Rocky Mountain region, Colorado, Utah, and WyomingControls on the Mowry Shale and Frontier Formation, Rocky Mountain Region. AAPG bulletin 97, 899-921. Lai, J., Wang, G., Huang, L., Li, W., Ran, Y., Wang, D., Zhou, Z., Chen, J., 2015. Brittleness index estimation in a tight shaly sandstone reservoir using well logs. Journal of Natural Gas Science and Engineering 27, 1536-1545. Li, J., Lu, S., Wang, M., Chen, G., Tian, W., Jiao, C., 2019. A novel approach to the quantitative evaluation of the mineral composition, porosity, and kerogen content of shale using conventional logs: A case study of the Damintun Sag in the Bohai Bay Basin, China. Interpretation 7, T83-T95. Li, J., Lu, S., Xie, L., Zhang, J., Xue, H., Zhang, P., Tian, S., 2017. Modeling of hydrocarbon adsorption on continental oil shale: A case study on n-alkane. Fuel 206, 603-613. Li, J., Shi, Y., Zhang, X., 2014. Control factors of enrichment and producibility of shale oil: A case study of Biyang Depression. Earth Science—Journal of China University of Geosciences 39, 848-857. Li, M., Chen, Z., Ma, X., Cao, T., Li, Z., Jiang, Q., 2018. A numerical method for calculating total oil yield using a single routine Rock-Eval program: A case study of the Eocene Shahejie Formation in Dongying Depression, Bohai Bay Basin, China. International Journal of Coal Geology 191, 49-65. Li, Z., Zou, Y.R., Xu, X.Y., Sun, J.N., Li, M., Peng, P.A., 2016. Adsorption of mudstone source rock for shale oil – Experiments, model and a case study. Organic Geochemistry 92, 55-62. Liang, X., Wang, G., Xu, Z., Zhang, J., Chen, Z., Xian, C., Lu, H., Liu, C., Zhao, C., Xiong, S., 2016. Comprehensive evaluation technology for shale gas sweet spots in the complex marine mountains, South China: A case study from Zhaotong national shale gas demonstration zone. Natural Gas Industry B 3, 27-36. Liu, C., Shuang-Fang, L.U., Xue, H.T., 2014. Variable-coefficient
logR model and its application in
shale organic evaluation. Progress in Geophysics 29, 312-317. Liu, N., Wang, G., 2016. Shale gas sweet spot identification and precise geo-steering drilling in Weiyuan Block of Sichuan Basin, SW China. Petroleum Exploration and Development 43, 1067 1075. Lu, S., Huang, W., Chen, F., Li, J., Wang, M., Xue, H., Wang, W., Cai, X., 2012. Classification and
664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707
evaluation criteria of shale oil and gas resources: Discussion and application. Petroleum exploration and development 39, 268-276. Lu, S., Liu, W., Wang, M., Zhang, L., Wang, Z., Chen, G., Xiao, D., Li, Z., Hu, H., 2017. Lacustrine shale oil resource potential of Es 3 L Sub-Member of Bonan Sag, Bohai Bay Basin, Eastern China. Journal of Earth Science 28, 996-1005. Lu, S., Xue, H., Wang, M., Xiao, D., Huang, W., Li, J., Xie, L., Tian, S., Wang, S., Li, J., 2016. Several key issues and research trends in evaluation of shale oil. Acta Petrolei Sinica. Mahmood, M.F., Ahmad, Z., Ehsan, M., 2018. Total organic carbon content and total porosity estimation in unconventional resource play using integrated approach through seismic inversion and well logs analysis within the Talhar Shale, Pakistan. Journal of Natural Gas Science and Engineering 52, 13-24. Modica, C.J., Lapierre, S.G., 2012. Estimation of kerogen porosity in source rocks as a function of thermal transformation: Example from the Mowry Shale in the Powder River Basin of Wyoming. AAPG bulletin 96, 87-108. Pan, S., Horsfield, B., Zou, C., Yang, Z., Gao, D., 2017. Statistical analysis as a tool for assisting geochemical interpretation of the Upper Triassic Yanchang Formation, Ordos Basin, Central China. International Journal of Coal Geology 173, 51-64. Passey, Q.R., Creaney, S., Kulla, J.B., Moretti, F.J., Stroud, J.D., 1990. A practical model for organic richness from porosity and resistivity logs. AAPG bulletin 74, 1777-1794. Sharma, R.K., Chopra, S., 2016. Identification of sweet spots in shale reservoir formations. first break 34, 43-51. Shi, D., Li, M., Pang, X., Chen, D., Zhang, S., Wang, Y., Jin, Q., 2005. Fault-fracture mesh petroleum plays in the Zhanhua Depression, Bohai Bay Basin: Part 2. Oil-source correlation and secondary migration mechanisms. Organic Geochemistry 36, 203-223. Shi, X., Liu, G., Cheng, Y., Yang, L., Jiang, H., Chen, L., Jiang, S., Wang, J., 2016. Brittleness index prediction in shale gas reservoirs based on efficient network models. Journal of Natural Gas Science and Engineering 35, 673-685. Song, G.Q., Zhang, L.Y., Lu, S.F., Xu, X., Zhu, R., Wang, M., Li, Z., 2013. Resource evaluation method for shale oil and its application. Earth Science Frontiers 20, 221-228. Sonnenfeld, M.D., Canter, L., 2016. How mobile is your total oil saturation? SARA analysis implications for bitumen viscosity and UV fluorescence in Niobrara Marl and Bakken Shale, supported by FIB-SEM observations of kerogen, bitumen, and residual oil saturations within Niobrara marls and chalks. AAPG Search & Discovery# 41903. Sun, J., Han, Z., Qin, R., 2015. Log evaluation method of fracturing performance in tight gas reservoir. Acta Petrolei Sinica 36, 74-80. Tan, M., Liu, Q., Zhang, S., 2013. A dynamic adaptive radial basis function approach for total organic carbon content prediction in organic shale. Geophysics 78, D445-D459. Wang, M., Guo, Z., Jiao, C., Lu, S., Li, J., Xue, H., Li, J., Li, J., Chen, G., 2019. Exploration progress and geochemical features of lacustrine shale oils in China. Journal of Petroleum Science and Engineering 178, 975-986. Wang, M., Liu, Y., Lu, S., 2016. Classification and oil system of continental shale: Es3 L sub-member of Bonan sag, Jiyang depression, Eastern China. Arabian Journal of Geosciences 9, 178. Wang, M., Tian, S., Chen, G., Xue, H., Huang, A., Wang, W., 2014. Correction method of light hydrocarbons losing and heavy hydrocarbon handling for residual hydrocarbon (S1) from shale.
708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750 751
Acta Geologica Sinica (English Edition) 88, 1792-1797. Wang, M., Wilkins, R.W.T., Song, G., Zhang, L., Xu, X., Li, Z., Chen, G., 2015. Geochemical and geological characteristics of the Es3L lacustrine shale in the Bonan sag, Bohai Bay Basin, China. International Journal of Coal Geology 138, 16-29. Wang, Y.S., Li, Z., Gong, J.Q., Zhu, J.J., Hao, Y.Q., Hao, X.F., Wang, Y., 2013. Discussion on an evaluation method of shale oil and gas in Jiyang Depression: A case study on Luojia area in Zhanhuasag. Acta Petrolei Sinica 34, 83-90. Wei, Z., Zou, Y.R., Cai, Y., Lei, W., Luo, X., Peng, P.A., 2012. Kinetics of oil group-type generation and expulsion: An integrated application to Dongying Depression, Bohai Bay Basin, China. Organic Geochemistry 52, 1-12. Xiao, D., Lu, S., Lu, Z., Zhang, L., Guo, S., Gu, M., 2016. Inversion method of shale oil reservoir mineral component content and its application in the Fourth Member of the Shahejie Formation in the Damintun Sag,Liaohe Depression. Oil & Gas Geology. Yang, Z., Hou, L., Tao, S., Cui, J., Songtao, W.U., Lin, S., Pan, S., 2015. Formation and “sweet area” evaluation of liquid-rich hydrocarbons in shale strata. Petroleum Exploration & Development Online 42, 609-620. Yong, W., Wang, X., Song, G., Liu, H., Zhu, D., Zhu, D., Ding, J., Yang, W., Yan, Y., Zhang, S., 2016. Genetic connection between mud shale lithofacies and shale oil enrichment in Jiyang Depression, Bohai Bay Basin. Petroleum Exploration & Development 43, 759-768. Zanganeh, B., Ahmadi, M., Hanks, C., Awoleke, O., 2015. The role of hydraulic fracture geometry and conductivity profile, unpropped zone conductivity and fracturing fluid flowback on production performance of shale oil wells. Journal of Unconventional Oil & Gas Resources 9, 103-113. Zhang, J., Lin, L., Li, Y., Xuan, T., Zhu, L.L., Xing, Y., Jiang, S., Jing, T., Yang, S., 2012a. Classification and evaluation of shale oil. Earth Science Frontiers 19, 322-331. Zhang, L., Youshu, B., Juyuan, L., Zheng, L.I., Rifang, Z.H.U., Zhang, J., 2014. Movability of lacustrine shale oil: a case study of Dongying Sag, Jiyang Depression, Bohai Bay Basin. Petroleum Exploration and Development 41, 703-711. Zhang, T., Ellis, G.S., Ruppel, S.C., Milliken, K., Yang, R., 2012b. Effect of organic-matter type and thermal maturity on methane adsorption in shale-gas systems. Organic Geochemistry 47, 120-131. Zhong, G., Qianyu, L.I., Qiang, C., Zaitian, M.A., 2006. Oligocene Mineral Component Inversion Based on Geophysical Well Logs from ODP Hole 1148A,South China Sea. Journal of Tongji University 34, 1403-1407. Zhu, R., Zhang, L., Li, J., Liu, Q., Zheng, L., Ru, W., Lei, Z., 2015. Quantitative evaluation of residual liquid hydrocarbons in shale. Acta Petrolei Sinica 36, 13-18. Zorski, T., Ossowski, A., Srodon, J., Kawiak, T., 2011. Evaluation of mineral composition and petrophysical parameters by the integration of core analysis data and wireline well log data: the Carpathian Foredeep case study. Clay Minerals 46, 25-45. Zou, C., Yang, Z., Cui, J., Zhu, R., Hou, L., Tao, S., Yuan, X., Songtao, W.U., Lin, S., Wang, L., 2013. Formation mechanism, geological characteristics and development strategy of nonmarine shale oil in China. Petroleum Exploration & Development 40, 15-27. Zou, C., Yang, Z., Tao, S., Li, W., Wu, S., Hou, L., Zhu, R., Yuan, X., Wang, L., Gao, X., 2012. Nano-hydrocarbon and the accumulation in coexisting source and reservoir. Petroleum Exploration and Development 39, 15-32.
752
Figure captions
753 754 755 756 757 758 759 760 761 762 763 764 765 766 767 768 769 770 771 772 773 774 775 776 777 778 779 780 781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796 797 798 799 800 801 802 803
Figure 1. Workflow of shale oil sweet spots evaluations. TOC = total organic carbon; S1 = volatile hydrocarbon content; SSI = sweet spot index Figure 2. (A) Location of the Zhanhua Sag in China. (B) Location of the Bonan Sag and wells distribution (modified after Wang et al., 2015). Figure 3. Schematic diagram of the stepwise heating pyrolysis procedure. The red line represents the temperature; the blue line represents the signal intensity. Figure 4. (A) Crossplot of total organic carbon (TOC) from core analysis vs. ∆logRTOC. (B) Crossplot of volatile hydrocarbon content (S1) from core analysis vs. ∆logRS1. R2 = correlation coefficient; y= TOC or S1; x = ∆logRTOC or ∆logRS1. Figure 5. Crossplot of bitumen “A” vs. S1. S1 = volatile hydrocarbon content; R2 = correlation coefficient; x = S1; y = chloroform asphalt “A”. Figure 6. Relationships between light hydrocarbon recovery coefficient (KL) and (A) maturity (Ro) and (B) depth (modified after Zhu et al., 2015). Figure 7. (A) Crossplot of adsorbed oil content vs. heavy oil content (S2-S2’). (B) Crossplot of adsorbed oil content vs. total organic carbon (TOC). R2 = correlation coefficient; x = TOC or heavy oil; y = adsorbed oil content. Figure 8. Crossplot of measured values vs. predicted values. (A) Training and validating samples of clay minerals. (B) Testing samples of clay minerals. (C) Training and validating samples of siliceous minerals. (D) Testing samples of siliceous minerals. (E) Training and validating samples of calcareous minerals. (F) Testing samples of calcareous minerals. x = predicted values; y = measured values. Figure 9. Relationship between the transverse wave logging and longitudinal wave logging. x = longitudinal wave; y = transverse wave. Figure 10. Evaluation model for shale reservoir fracability. The colors represent the value of the fracability index. Figure 11. Crossplot of shale oil productivity vs. the SSI in the Bonan Sag. Shale oil productivity presents the daily output per meter of the testing interval; the pink dotted line represents the trend. Figure 12. (A) Crossplot of shale oil productivity vs. mobile oil content in the Bonan Sag. (B) Crossplot of shale oil productivity vs. fracability index in the Bonan Sag. Figure 13. Prediction of the vertical distribution of shale oil sweet spots in Es3L of well Luo 69 in the Bonan Sag. RT = resistivity log; DEN = density log; AC = acoustic log; GR = gamma ray log; TOC = total organic carbon; S1 = volatile hydrocarbon content; BI = brittleness index; FI = fracability index; SSI = sweet spot index; SS1 = the sweet spots selected by the previous method proposed by Yang et al. (2015); SS2 = the sweet spots selected by the SSI method; the area enclosed by the red box is the oil testing interval. Figure 14. Prediction of the vertical distribution of shale oil sweet spots in Es3L of well Luo 67, in the Bonan Sag. RT = resistivity log; DEN = density log; AC = acoustic log; GR = gamma ray log; TOC = total organic carbon; S1 = volatile hydrocarbon content; BI = brittleness index; FI = fracability index; SSI = sweet spot index; SS2 = the sweet spots selected by the SSI method; the area enclosed by the red box is the oil testing interval. Figure 15. Prediction of the vertical distribution of shale oil sweet spots in Es3L of well Xinyishen 9, Bonan Sag. RT = resistivity log; DEN = density log; AC = acoustic log; GR = gamma ray log; TOC = total organic carbon; S1 = volatile hydrocarbon content; BI = brittleness index; FI = fracability index; SSI = sweet spot index; SS2 = the sweet spots selected by the SSI method. The area enclosed by the red box is the oil testing interval. Table 1. Well Oil Production of Es3L in Bonan Sag Table 2. Comparison of Shale Oil Densities from Different Locations Table 3. Correlations between Mineral Groups and Log Data Table 4. Characteristics of the Testing Oil Intervals of Well Luo 69, Well Luo 67 and Well Xinyishen 9 in the Bonan Sag Table 5. Lower Limit Values for the Shale Oil Sweet Spots Selection of the Previous Methods
804 805 806
Figure 1. Workflow of shale oil sweet spots evaluations. TOC = total organic carbon; S1 = volatile hydrocarbon content; SSI = sweet spot index.
807 808 809
Figure 2. (A) Location of the Zhanhua Sag in China. (B) Location of the Bonan Sag and wells distribution (modified after Wang et al., 2015).
810 811 812
Figure 3. Schematic diagram of the stepwise heating pyrolysis procedure. The red line represents the temperature; the blue line represents the signal intensity. FID = flame ionization detector.
813 814 815 816
Figure 4. (A) Crossplot of total organic carbon (TOC) from core analysis vs. ∆logRTOC. (B) Crossplot of volatile hydrocarbon content (S1) from core analysis vs. ∆logRS1. R = correlation coefficient; y= TOC or S1; x = ∆logRTOC or ∆logRS1.
817 818 819
Figure 5. Crossplot of bitumen “A” vs. S1. S1 = volatile hydrocarbon content; R = correlation coefficient; x = S1; y = bitumen “A”.
820 821 822
Figure 6. Relationships between light hydrocarbon recovery coefficient (KL) and (A) maturity (Ro) and (B) depth (modified after Zhu et al., 2015).
823 824 825 826
Figure 7. (A) Crossplot of adsorbed oil content vs. heavy oil content (S2-S2’). (B) Crossplot of adsorbed oil content vs. total organic carbon (TOC). R = correlation coefficient; x = TOC or heavy oil; y = adsorbed oil content.
827 828 829 830 831 832
Figure 8. Crossplot of measured values vs. predicted values. (A) Training and validating samples of clay minerals. (B) Testing samples of clay minerals. (C) Training and validating samples of siliceous minerals. (D) Testing samples of siliceous minerals. (E) Training and validating samples of calcareous minerals. (F) Testing samples of calcareous minerals. x = predicted values; y = measured values.
833 834 835
Figure 9. Relationship between the transverse wave logging and longitudinal wave logging. x = longitudinal wave; y = transverse wave.
836 837 838
Figure 10. Evaluation model for shale reservoir fracability. The colors represent the value of the fracability index.
839 840 841
Figure 11. Crossplot of shale oil productivity vs. the SSI in the Bonan Sag. Shale oil productivity presents the daily output per meter of the testing interval; the pink dotted line represents the trend.
842 843 844
Figure 12. (A) Crossplot of shale oil productivity vs. mobile oil content in the Bonan Sag. (B) Crossplot of shale oil productivity vs. fracability index in the Bonan Sag.
845 846 847 848 849 850 851
Figure 13. Prediction of the vertical distribution of shale oil sweet spots in Es3L of well Luo 69 in the Bonan Sag. RT = resistivity log; DEN = density log; AC = acoustic log; GR = gamma ray log; TOC = total organic carbon; S1 = volatile hydrocarbon content; BI = brittleness index; FI = fracability index; SSI = sweet spot index; SS1 = the sweet spots selected by the previous method proposed by Yang et al. (2015); SS2 = the sweet spots selected by the SSI method; the area enclosed by the red box is the oil testing interval.
852 853 854 855 856 857
Figure 14. Prediction of the vertical distribution of shale oil sweet spots in Es3L of well Luo 67, in the Bonan Sag. RT = resistivity log; DEN = density log; AC = acoustic log; GR = gamma ray log; TOC = total organic carbon; S1 = volatile hydrocarbon content; BI = brittleness index; FI = fracability index; SSI = sweet spot index; SS2 = the sweet spots selected by the SSI method; the area enclosed by the red box is the oil testing interval.
858 859 860 861 862 863
Figure 15. Prediction of the vertical distribution of shale oil sweet spots in Es3L of well Xinyishen 9, Bonan Sag. RT = resistivity log; DEN = density log; AC = acoustic log; GR = gamma ray log; TOC = total organic carbon; S1 = volatile hydrocarbon content; BI = brittleness index; FI = fracability index; SSI = sweet spot index; SS2 = the sweet spots selected by the SSI method. The area enclosed by the red box is the oil testing interval.
864
865 866
Table 1. Well Oil Production of Es3L in Bonan Sag Well name
Interval
Top depth (m [ft])
Bottom depth(m [ft])
Oil Rate(t/day [b/day])
Gas Rate(t/day [b/day])
Method
Thickness (m [ft])
Luo 69 Yi 142 Yi 283 Xinyishen 9 Yi 172 Bogu 4 Luo 67 Yi 97 Luo 19 Luo 42
Es3L Es3L Es3L Es3L Es3L Es3L Es3L Es3L Es3L Es3L
3040 (9974) 2901.5 (9519) 3646.15 (11962) 3355.11 (11007) 3230.4 (10598) 3913.2 (12838) 3287 (10784) 2977 (9767) 2936 (9632) 2828.13 (9279)
3066 (10059) 2908.3 (9542) 3700 (12139) 3435.29 (11270) 3252 (10669) 3926.3 (12881) 3310 (10859) 3016 (9895) 2962 (9718) 2861 (9386)
0.85 (6.2) 7 (51.5) 10.2 (75) 38.5 (283) 0.2 (1.2) 1.6 (11.4) 2.1 (15.4) 23.1 (169.8) 43.5 (319.7) 79.9 (587.3)
nd nd nd 870 (30720) nd nd nd nd nd 7750 (273653)
Testing Testing Fracturing Flowing Testing Testing Acidification Swabbing Acidification Flowing
26 (85.3) 5.7 (18.7) 53.85 (176.7) 80 (262.5) 11.5 (37.7) 6.2 (20.3) 17 (55.8) 18 (59.1) 26 (85.3) 32.9 (107.8)
Each well location is described in Figure 2. Abbreviations: Es3L = lower sub member of the third member of the Eocene Shahejie Formation; nd = no data available.
867
868 869
Table 2. Comparison of Shale Oil Densities from Different Locations Type
Density (g/cm3)
Gravity (API)
Location
Shale oil Shale oil Shale oil Shale oil Shale oil
0.89 0.87 0.91 0.84 0.78-0.88
27 31 24 36 30-50
Well Luo 69, Es3L shale of Jiyang Depression, China Well Xinyishen 9, Es3L shale of Jiyang Depression, China Well Luo 67, Es3L shale of Jiyang Depression, China Well 3-Mitcham, Barnett Shale of Fort Worth Basin, USA Eagle Ford Shale
References: (Jarvie, 2012)and (Zanganeh et al., 2015). Abbreviation: Es3L = lower sub member of the third member of the Eocene Shahejie Formation.
870
Table 3. Correlations between Mineral Groups and Log Data AC (us/ft)
DEN (g/cm3)
Clay minerals
0.53
-0.55
Siliceous minerals
0.44
Calcareous minerals
-0.53
Groups
871 872
CNL (%)
GR (API)
RT (Ω·m)
CAL (IN)
PE (b/e)
Sample numbers
0.71
0.65
-0.46
0.12
-0.13
353
-0.46
0.56
0.53
0.11
-0.04
353
0.55
-0.69
-0.64
-0.15
0.12
353
-0.15 0.23
The band marked with is significantly correlated at the 0.01 level Abbreviations: AC = acoustic log; DEN = density log; CNL = neutron log; GR = gamma ray log; RT = resistivity log; CAL = caliper log; PE = photo electricity.
873
Table 4. Characteristics of the Testing Oil Intervals of Well Luo 69, Well Luo 67 and Well Xinyishen 9 in the Bonan Sag Well name
Luo 69 Luo 67 Xinyishen 9 874 875
Testing oil Interval (m [ft])
TOC (%)
S1 (mg/g)
Porosity (%)
OS (%)
BI
3040-3046 (9974-10059) 3287-3310 (10784-10859) 3388-3405 (11115-11171)
1.48-7.52 (3.83) 1.14-4.14 (2.37) 1.50-5.21 (3.39)
0.40-6.18 (2.61) 1.01-4.03 (2.29) 2.70-7.40 (5.00)
3.50-15.30 (7.10)
65.90-96.40 (87.80)
-
-
-
-
0.64-0.94 (0.81) 0.72-0.92 (0.82) 0.72-0.92 (0.83)
MC
(mg/g)
0.03-23.16 (3.94) 2.5-10.8 (6.15) 4.6-12.32 (6.52)
FI
SSI
0.56-0.93 (0.68) 0.53-0.78 (0.67) 0.49-0.91 (0.72)
0-0.59 (0.07 0.05-0.2 (0.09 0.08-0.31 (0.13
Abbreviations: OS = oil saturation; BI = brittleness index; MC = mobile oil content; FI = fracability index; SSI = sweet spot index; A-B/C = A represents the minimum value, B represents the maximum value, C represents the average value.
876
877 878
Table 5. Lower Limit Values for the Shale Oil Sweet Spots Selection of the Previous Methods Parameters
Ro %
TOC %
S1 mg/g
Porosity %
OS %
BI
standards
>0.8
>2
>2
>3
>60
>0.7
References: Yang et al. (2015), and Zou et al. (2013). Abbreviations: Ro = Vitrinite reflectance; TOC = total organic carbon; S1 = volatile hydrocarbon content; OS = oil saturation; BI = brittleness index.
1.
The organic and inorganic heterogeneous evaluation methods were established by conventional logs and validated by measured core data.
2.
An adsorbed oil model was established using the stepwise heating pyrolysis experiment.
3.
A new method called sweet spot index (SSI) model was developed by the combination of shale oil mobility and shale reservoir fracability.
4.
The lower limit value of the SSI was set to 0.1 based on the shale oil production data in Bonan Sag.
Declaration of interests ☒ The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper. ☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: