Journal Pre-proofs Introduction to the special issue on spatial modelling and analysis of ore-forming processes in mineral exploration targeting Oliver P. Kreuzer, Mahyar Yousefi, Vesa Nykänen PII: DOI: Reference:
S0169-1368(20)30040-8 https://doi.org/10.1016/j.oregeorev.2020.103391 OREGEO 103391
To appear in:
Ore Geology Reviews
Received Date: Revised Date: Accepted Date:
14 January 2020 4 February 2020 5 February 2020
Please cite this article as: O.P. Kreuzer, M. Yousefi, V. Nykänen, Introduction to the special issue on spatial modelling and analysis of ore-forming processes in mineral exploration targeting, Ore Geology Reviews (2020), doi: https://doi.org/10.1016/j.oregeorev.2020.103391
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.
© 2020 Elsevier B.V. All rights reserved.
2
Introduction to the special issue on spatial modelling and analysis of ore-forming processes in mineral exploration targeting
3
Oliver P. Kreuzer1,2,*, Mahyar Yousefi3,*, Vesa Nykänen4
1
4 5 6 7
1Corporate 2Economic
Geology Research Centre (EGRU), College of Science & Engineering, James Cook University, Townsville, QLD 4811, Australia
8
3Faculty
9 10
Geoscience Group (CGSG), PO Box 5128, Rockingham Beach, WA 6969, Australia
4 Information
of Engineering, Malayer University, Malayer, Iran
Solutions, Geological Survey of Finland, Rovaniemi, Finland
*Corresponding authors: E-mail addresses:
[email protected] (O.P. Kreuzer);
[email protected] (M. Yousefi).
11 12
Abstract
13
Ore deposits are diverse with much of their diversity attributable to the complex interplay of ore-
14
forming processes with a variety of geological environments, over a range of scales and both in space
15
and time. This diversity makes it difficult for geoscientists to accurately predict the location of
16
undiscovered ore deposits. Improving our understanding of the processes that are critical to ore deposit
17
formation would help us to hone our predictive capabilities. However, this task is difficult to achieve
18
as we cannot observe these genetic processes first-hand and different parameters and ingredients are
19
important at different scales. Modelling offers a means of simulating and analysing ore-forming
20
processes and their mappable expressions. This knowledge can then be used to build a predictive model
21
by translating key process components into spatial proxies that can be mapped or recognized in mineral
22
exploration data. Modelling and analysis of ore-forming processes are therefore critical for the future
23
success of mineral exploration. Currently underutilized in exploration targeting, the application of
24
statistical and mathematical concepts can help steer geoscientists towards a better understanding of the
25
complex geological processes critical in the formation of mineral deposits and, ultimately, improved
26
exploration success rates. This editorial article presents a brief introduction to the main concepts that
27
support a collection of articles published in a virtual special issue (VSI) of Ore Geology Reviews
28
entitled “Spatial modelling and analysis of ore-forming processes in mineral exploration targeting”.
29
The articles examine three critical themes: (1) Translating the expressions of ore-forming processes and
30
critical parameters of mineral systems into mappable spatial proxies; (2) identifying mineral deposit
31
footprints through geochemical and geophysical data analysis; and (3) targeting and improving the
32
discovery chance of mineral deposits by way of spatial data analysis.
33
Keywords
34
Geographic Information Systems (GIS), Spatial Modelling, Ore-Forming Processes, Exploration
35
Targeting, Mineral Systems
1
37
1. Introduction
38
This editorial article introduces and discusses the implications of a collection of diverse, yet interlinked,
39
research and review articles, published in a virtual special issue (VSI) of Ore Geology Reviews entitled
40
“Spatial modelling and analysis of ore-forming processes in mineral exploration targeting”.
41
2. Underlying subject areas
42
2.1. Mineral exploration targeting
43
Mineral exploration is undertaken in stages (Lord et al., 2001), with each stage designed to arrive at the
44
next decision point of whether or not to keep exploring a particular area based on the results obtained.
45
As a general rule, each consecutive exploration stage is more expensive due to the progressively more
46
intensive nature of the work required (Kreuzer et al., 2015). According to Hronsky and Groves (2008),
47
the initial predictive targeting stage, referred to here as mineral exploration targeting, presents a major
48
geoscientific challenge that has important implications for the following direct-detection stages of
49
exploration. In other words, if the initial ground selection is done poorly, it is irrelevant how efficient
50
and effective the subsequent work may be carried out (Hronsky and Groves, 2008).
51
As argued by Hronsky (2004), mineral exploration targeting is a scientific endeavour that requires the
52
integration of genetic ore deposit models with data, information and knowledge derived from other
53
fields, such as geophysics, geochemistry, remote sensing, spatial analysis, mineral economics, decision
54
science and probability theory, to deliver a successful business outcome.
55
2.2. Ore-forming processes
56
The last two decades have seen growing acceptance of holistic approaches to mineral exploration
57
targeting based on a greater awareness and improved understanding of the range of geological processes
58
required to form and preserve ore deposits at all scales, both in space and time (Hronsky, 2004; Kreuzer
59
et al., 2008; Hronsky and Groves, 2008; McCuaig et al., 2010; McCuaig and Hronsky, 2014; Hagemann
60
et al., 2016). The emergence of the mineral systems concept (Wyborn et al., 1994; Knox-Robinson and
61
Wyborn, 1997), an adaptation of the previously proposed petroleum systems concept (Magoon and
62
Dow, 1994), has arguably had the greatest influence on mineral exploration targeting, in particular the
63
approach taken by many national and state geological survey organisations and university research
64
groups (McCuaig et al., 2010; Hagemann et al., 2016).
65
Whilst holistic ore deposit models are not a new concept (cf. Kirkham, 1993), the minerals system
66
concept is far broader in its reach than the traditional, forensic source–transport–trap analysis, typically
67
undertaken at the deposit scale, in that it considers ore deposit formation in the framework of much
68
larger lithospheric-scale processes (Hagemann et al., 2016). In this context, an ore deposit can be
69
thought of as the product of five critical genetic processes (Wyborn et al., 1994; Knox-Robinson and
70
Wyborn, 1997):
2
71
or fluids, metals and ligands) from their crustal and/or mantle sources;
72 73
80
Deposition: All geological processes required for efficient extraction of metals from melts or fluids passing through the traps; and
78 79
Trap: All geological processes required for focusing melt or fluid flow into physically and/or chemically responsive sites that can accommodate significant volumes of ore and gangue;
76 77
Transport: All geological processes required for driving the melt- or fluid-assisted transfer of the ore components from source to trap;
74 75
Source: All geological processes required for extracting the necessary ore components (melts
Preservation: All geological processes required to preserve the accumulated metals through time.
81
Where one or more of these processes is missing, ore formation is precluded. As such, the mineral
82
systems concept is essentially a probabilistic concept in that if the probability of occurrence of any of
83
the critical processes became zero, then no deposit would have formed. This principle is one of the key
84
strengths of the mineral systems approach. By integrating mineral systems models into a probabilistic
85
framework, a prior probability of success can be calculated for discovery of a potentially economic
86
mineral deposit within a particular search area. This thinking has been applied to measuring exploration
87
success (Lord et al., 2001), exploration decision-making and target ranking (Kreuzer et al., 2008),
88
economic risk analysis (Partington, 2010) and prospectivity analysis (e.g., Nykänen and Salmirinne,
89
2007; González-Álvarez et al., 2010; Kreuzer et al., 2010; Joly et al., 2012; Yousefi and Carranza, 2015
90
a,b; Chudasama et al., 2018).
91
2.3. Spatial modelling and analysis
92
The advent of commercial geographic information systems (GIS) in the mid- to late 1980s, in
93
combination with significant advancements in computing technology, not only enabled the management
94
and spatial querying of ever increasing amounts of data but also promoted the development of new,
95
powerful statistical and soft computational models, facilitating pattern recognition and predictive spatial
96
modelling (Porwal and Kreuzer, 2010; McCuaig and Hronsky, 2014; Hagemann et al., 2016; Yousefi
97
and Nykänen, 2017). These developments have had profound impact on mineral exploration targeting
98
workflows today.
99
Mineral prospectivity modelling (MPM) has been specifically developed to improve the effectiveness
100
of exploration targeting by augmenting the geoscientist’s expertise with automated tools for efficient
101
and reproducible data processing and the integration of multi-source and multi-scale datasets (Carranza,
102
2008; Yousefi and Carranza, 2015a; Almasi et al., 2017; Hagemann et al., 2016). MPM is a multi-step
103
process that, in general terms, entails the (1) identification, capture and weighting of the mappable
104
expressions (also known as proxies or targeting criteria) of the targeted mineral system, (2) generation
105
of predictor or evidence maps representing the proxies, (3) combination of the predictor maps through
106
computational functions, and (4) generation of prospectivity maps designed to inform mineral
3
107
exploration targeting and target ranking (Bonham-Carter, 1994; Carranza, 2008; Chudasama et al.,
108
2018).
109
The first of the above steps is highly contingent upon the conceptual model of the targeted ore deposit
110
type in that the quality of the conceptual model and its translation into a targeting model ultimately
111
determine the quality of the resulting prospectivity maps (cf. McCuaig et al., 2010; Joly et al., 2012;
112
Yousefi and Carranza, 2015a; Chudasama et al., 2018). Whilst much effort has been directed by the
113
MPM research community toward refining, improving and validating the computational modelling
114
techniques at the core of MPM (e.g., weights of evidence, fuzzy logic, artificial neural networks: Porwal
115
and Kreuzer, 2010) and methods for weighting and integrating predictor maps (e.g., Yousefi, 2017;
116
Yousefi and Nykänen, 2017), little work has gone into qualifying and quantifying the potential impact
117
of the underlying conceptual model on the MPM results (cf. Kreuzer et al., 2015), and how to best
118
translate a conceptual model into an effective targeting model (cf. McCuaig et al., 2010; Czarnota et
119
al., 2010).
120 121
3. Spatial modelling and analysis of ore-forming processes in mineral exploration targeting
122 123
3.1. Translating the expressions of ore-forming processes and critical parameters of mineral systems into mappable spatial proxies
124
Ore deposits reflect the tectonic environment in which they formed and, thus, are diagnostic of this
125
environment (Jenkin et al., 2015; Huston et al., 2016). Ore-forming processes, on the other hand, are
126
complex and not directly observable. Instead, they must be inferred from geological observations and
127
the interpretation of geochemical, geophysical and remote sensing data. Just like in forensic science,
128
geoscientists draw from various scientific disciplines to help them to piece together data, information
129
and knowledge in order to uncover and evaluate the mappable evidence of particular ore-forming
130
processes. Despite many significant conceptual advancements, in particular the advent of plate tectonics
131
and recognition of the supercontinent cycle, our understanding of ore-forming processes and
132
appreciation of their mappable expressions remains limited and incomplete.
133
Given these limitations, translating our incomplete understanding of ore-forming processes into an
134
effective targeting system that it is focused on criteria that are mappable in available or obtainable
135
spatial datasets (cf. McCuaig et al., 2010) is one of the most difficult tasks in exploration targeting. In
136
their landmark paper “Translating the mineral systems approach into an effective exploration targeting
137
system”, McCuaig et al. (2010) described a methodology of how to best approach such a translation.
138
However, to date, detailed case studies on this subject are very limited in the literature (e.g., Chudasama
139
et al., 2018). The first theme of this VSI, entitled “Translating the expressions of ore-forming processes
140
and critical parameters of mineral systems into mappable spatial proxies”, is aimed at alleviating this
141
deficiency by presenting a series of contributions that address this subject matter area:
142 143
Skirrow et al. (2019) describe a method of mapping iron oxide copper-gold (IOCG) potential in several regions of Australia adopting a holistic, multi-scale mineral systems approach. The
4
144
authors provide a detailed account of how the components of the IOCG system can be translated
145
into mappable criteria and IOCG potential maps can be generated by integrating diverse and
146
rich input data sets. The results of the knowledge-driven analyses of IOCG potential not only
147
successfully predict the majority of the known IOCG deposits but also highlight possible new
148
greenfields plays.
149
Ford et al. (2019) present a detailed workflow for translating a mineral system model to
150
mappable spatial proxies for mineral potential mapping, using case studies from the southern
151
New England Orogen, Australia. These studies serve to illustrate the importance of developing
152
a clear understanding of the targeted mineral system and generating high-quality data that
153
accurately map the system. Both aspects are prerequisites for producing geologically
154
meaningful mineral potential maps.
155
Kreuzer et al. (2019) describe an approach to generating new exploration targets at the
156
approximately 12 Moz Au Sigma-Lamaque gold mine, Val d’Or district, Quebec. The case
157
study presented in this article illustrates how a predictive model can be generated by translating
158
components of a mineral system into an exploration targeting model and how spatial proxies of
159
ore-forming processes can be recognized and mapped in the available mineral exploration data.
160
The work presented in this article is based on the authors’ third prize-winning submission to
161
the high-profile Integra Gold Rush Challenge, a global crowdsourced exploration targeting
162
challenge.
163
DeWolfe et al. (2019) present a new 3D volcanic reconstruction of the giant Kidd Creek
164
volcanogenic massive sulphide (VMS) deposit, Canada, generated by translating complex
165
geological data acquired through core logging and underground mapping indicates. The model
166
illustrates that the volcanic setting of, and ore-forming environment at, Kidd Creek is much
167
larger than previously thought. In addition, the new volcanic reconstruction highlights primary
168
volcanic controls on hydrothermal fluid flow, and therefore ore formation, and how these
169
features can be translated into mappable spatial proxies that can be used in exploration
170
targeting.
171
Holden et al. (2019) describe a text mining algorithm, GeoDocA, designed for fast extraction
172
of geological knowledge from open-file mineral exploration reports. The results of the study
173
demonstrate the effectiveness of GeoDocA, supporting fast, automated analysis of large text
174
repositories, such as exploration reports, to quickly locate and extract information about the
175
targeted mineral systems and associated geological environments in particular areas of interest.
176
3.2. Identifying mineral deposit footprints through geochemical and geophysical data analysis
177
Exploration geochemical data are a powerful, cost-effective and scalable exploration tool that has been
178
widely applied by mineral explorers and government organisations alike (Agnew, 2004; Cohen et al.,
179
2010). Despite a multitude of caveats relating to, for example, the sample media (e.g., stream sediments,
180
soils, till, rock chips), sampling methods and analytical techniques (Grunsky and de Caritat, 2019),
5
181
geochemical datasets are invaluable with respect to: (1) Better constraining lithological units and
182
defining stratigraphy; (2) better understanding whole-rock fertility, hydrothermal fluid pathways and
183
potential trap sites; and (3) identifying element dispersion patterns and/or geochemical anomalies and,
184
thus, potential exploration targets (Agnew, 2004; Cohen et al., 2007; Grunsky and de Caritat, 2019;
185
Brauhart, 2019).
186
Geophysical (e.g., gravity, magnetic, electromagnetic and radiometric) data are particularly useful for
187
mapping the subsurface and developing a better understanding of the geology and structure of a search
188
area, especially where outcrop is poor. Lithostructural (solid) geology interpretations of geophysical
189
data serve as indirect targeting tools, highlighting potentially favourable lithologies and structural
190
settings such as possible fluid pathways and traps. However, given the right conditions and physical
191
rock properties, exploration geophysics have also proven highly effective as direct-detection tools with
192
respect to targeting, for example, diamondiferous kimberlite, unconformity-related uranium,
193
volcanogenic massive sulphide or IOCG deposits (Ford et al., 2007).
194
In short, both tools are crucial in mineral exploration targeting: They offer means to understand and
195
map expressions of ore-forming processes and identify ore deposit footprints and signatures. As such,
196
it is not surprising that both methods have played significant roles in numerous green- and brownfields
197
discoveries, including of many major and giant ore deposits (e.g., Paterson, 1966; Cox and Curtis, 1977;
198
Rutter and Esdale, 1985; Crebs, 1996; Carlile et al., 1998; Craven et al., 2000; Sillitoe, 2000; Collins,
199
2001; Baker and Waugh, 2005; Bennett et al., 2014; Witherly and Mackee, 2015; Hope and Andersson,
200
2016). Given their significance, the second VSI theme entitled “identifying mineral deposit footprints
201
through geochemical and geophysical data analysis” focuses on the use of exploration geochemistry
202
and geophysics in spatial data analysis and how these methods can aid in better defining mappable
203
expressions of ore-forming processes and generating more reliable exploration targeting models:
204
Byrne et al. (2019) use geophysical models to illustrate a spatial relationship between magnetic
205
susceptibility signatures and wall-rock alteration assemblages at Highland Valley, Canada’s
206
largest porphyry copper mining district. Based on their models of magnetic susceptibility data,
207
the authors define a geophysical footprint around the porphyry copper deposits that extends 1–
208
4 km away from the intrusive centres and correlates with porphyry-related vein and alteration
209
domains. Byrne et al. conclude that variability in magnetic susceptibility provides a proxy for
210
mapping key ore-forming processes that can be used to target additional porphyry copper
211
mineralisation.
212
Chen et al. (2019) base their research on the premise that ore-forming processes can result in
213
both element enrichment and depletion, and that simultaneous consideration of both processes
214
is advantageous in geochemical anomaly modelling. To address the above, the authors adapt
215
the cosine similarity measure method, a tool for pattern recognition of ore-related geochemical
216
anomalism, to facilitate the simultaneous modelling of both enrichment and depletion of ore-
217
related pathfinder elements. The performance of this new approach is tested on porphyry copper
218
exploration data from the Manzhouli belt, China, illustrating its efficiency with respect to
6
219
geochemical anomaly recognition and the definition of more reliable geochemical exploration
220
targets.
221
Zekri et al. (2019) compare the use of joint singular value decomposition and semi-discrete
222
decomposition and non-negative matrix factorisation with univariate analysis of raw data, to
223
detect multi-element patterns in soils related to geochemical dispersion from Mississippi
224
Valley-Type lead-zinc deposits in the Irankuh district of central Iran. The study illustrates that
225
matrix decomposition techniques are effective in modelling geochemical patterns associated
226
with ore-forming processes and help generate more reliable mineral potential maps.
227
Nguyen and Vu (2019) combine a number of approaches, namely the Robust Mahalanobis
228
Distance, spatial autocorrelation analysis, and robust statistics, into a new method for
229
identifying multivariate geochemical anomalies, the effectiveness of which is illustrated in a
230
case study of the Jiurui ore district, China. Here, the spatial variability of the geochemical data
231
and their degree of spatial autocorrelation is measured at different scales to identify and model
232
both negative and positive ore-related geochemical anomalies. The resulting geochemical
233
evidence map can be integrated with other evidence maps for use in MPM.
234
Wang et al. (2019) apply a machine learning method known as maximum margin metric
235
learning to analysing geochemical exploration data from a polymetallic belt in the southwestern
236
Fujian Province, China. An adaptive coherence estimator detector is used to identify and better
237
constrain geochemical anomalies. Comparison of the resulting anomaly maps with maps
238
derived by other means using statistical analyses tools confirms the superior performance of
239
the maximum margin metric learning algorithm, suggesting this method can deliver credible
240
results.
241
Ghasemzadeh et al. (2019) describe an approach to geochemical data analysis at the district
242
scale. The authors evaluate and compare two methods, spatial U-statistic and concentration-
243
area fractal modelling, using stream sediment data from the Baft porphyry copper district, Iran,
244
as the input. The case study demonstrates that the concentration-area fractal approach more
245
effectively decomposes geochemical anomalies and yields a more precise geochemical
246
targeting model.
247
Gaillard et al. (2020) adopt a lithogeochemical approach to delineating hydrothermal fluid
248
pathways in the Malartic district, Québec. Ore-associated pathfinder elements delineate broad
249
enrichment patterns around the deposit and are used to understand hydrothermal fluid
250
circulation. A statistical approach based on the comparison of the mass balance results with the
251
background composition provides robust constraints on the magnitude and extent of the
252
lithogeochemical halos. The results of this study demonstrate that whole-rock
253
lithogeochemistry can provide a valuable tool with which to define vectors toward gold
254
mineralization in a regional exploration context.
255
7
256
3.3. Targeting and improving the discovery chance of mineral deposits by way of spatial data analysis
257
The volume of geoscience and mineral exploration data generated, stored and examined today has
258
increased substantially compared to previous decades, and so has data diversity, resulting in greater
259
challenges for spatial data analysis and a requirement for more efficient analytical procedures. For
260
example, there is a strong need for new approaches to handling and analysing subsurface data as
261
collected during drilling programs and geophysical surveys. There is also strong need for new tools
262
capable of pre-processing exploration data and translating these data into appropriate formats
263
facilitating data analysis and their integration with other relevant data. Geographic information systems
264
(GIS) provide an ideal platform for the development and application of such tools, as illustrated, for
265
example, by the emergence of GIS-based spatial data mining technology, driven by powerful algorithms
266
(e.g., Goyal et al., 2017).
267
As discussed by Nykänen et al. (2008a,b), analysing the spatial relationships between mineral deposits
268
and exploration data can reveal trends and patterns that may aid in guiding exploration targeting and,
269
ultimately, making new discoveries. The third theme of this VSI, entitled “targeting and improving the
270
discovery chance of mineral deposits by way of spatial data analysis”, taps into this thematic. It presents
271
a series of papers describing cutting-edge approaches to spatial data analysis. The case studies presented
272
under this umbrella represent a broad spectrum in that they use both knowledge- and data-driven
273
methods (Bonham-Carter, 1994), adopt both supervised and unsupervised approaches and cover both
274
2D and 3D realms:
275
Ferrier et al. (2019) describe a novel exploration tool integrating field and ASTER SWIR and
276
TIR satellite imagery that provides an enhanced means of resolving surface expressions of
277
epithermal-porphyry systems. Alteration zones associated with such systems exposed on the
278
island of Lesvos, Greece, were clearly resolved by the remote sensing data and an intimate
279
spatial relationship between strongly altered rocks and topographic highs was identified at a
280
number of locations. A knowledge-based, integrated MPM approach implemented in this study
281
yielded results that closely match the hydrothermal alteration mapped in the field, supporting
282
the accuracy of this methodology.
283
Niiranen et al. (2019) describe a knowledge-driven fuzzy logic approach to MPM targeting
284
orogenic gold deposits in northern Finland. The modelling is implemented in a stepwise manner
285
simulating successive stages of mineral exploration, each marked by a reduction in search space
286
and increase in data resolution. The regional scale prospectivity map outlines the central part
287
of the Central Lapland Greenstone belt as the most prospective area for orogenic gold in
288
northern Finland. The belt scale model identifies several camp sized targets, whilst the camp
289
scale model produces prospect size targets. The authors conclude that remodelling of the most
290
prospective targets at progressively finer scales is a worthwhile undertaking and delivers
291
important new detail even if the input data are the same.
292 293
Nielsen et al. (2019) describe the development of a 3D mineral potential model for the Tampia gold deposit, Yilgarn Craton, Western Australia, and how this model helped constrain resource
8
294
estimation, better understand grade distribution and continuity, and predict the location of new
295
gold mineralisation for future exploration drilling to expand the gold resource at Tampia.
296
Results from a closely-spaced infill drilling program undertaken after the modelling, confirmed
297
the continuity of the predicted post probability values, suggesting that the mineral potential
298
model predicts the location and distribution of gold mineralisation within the area drilled. The
299
results were also better and more continuous than predicted by an independent resource
300
estimate.
301
Zhang et al. (2019) employ total horizontal derivative, multi-scale edge detection (worms) and
302
two-dimensional empirical mode decomposition of district-scale gravity and magnetic data to
303
extract geophysical information reflecting deep-seated structures and concealed intrusions in
304
the Wulong gold district, Liaodong Peninsula, China. In addition, deposit-scale 3D modelling
305
and controlled-source audio-frequency magnetotelluric data are used to identify potential ore-
306
controlling structures. The results of this integrated, multi-scale geological and geophysical
307
study suggest that both the Early Cretaceous intrusions and gold deposits are spatially and
308
genetically associated with a network of NE-SW- and NW-SE-striking faults.
309
Torppa et al. (2019) present an MPM case study of the Central Lapland Greenstone Belt in
310
northern Finland that combines the unsupervised clustering together and fuzzy logic integration
311
method. The study also illustrates the benefits of applying empirical (data-driven) methods to
312
MPM. The authors argue that increased uptake of empirical computational methods in MPM
313
would lead to a more efficient and methodical use of the input data and reduce the subjectivity
314
surrounding expert knowledge and judgement.
315
Uchôa et al. (submitted) present a multi-scale, mineral systems-driven approach to MPM,
316
using the orogenic gold deposits in the Rio das Velhas Greenstone Belt, Brazil, as a case study.
317
Multivariate statistical techniques and the fuzzy logic method are employed to enhance and
318
map expressions of the gold mineral system at the province, district and camp scales. A key
319
observation is that the gold prospective areas predicted by the models vary according to the
320
scale of the analysis with progressively smaller targets identified as data quality and density
321
improve from the province to camp scale. A novel factor in the approach is the assessment of
322
the targeting criteria and their proxies according to their spatial resolution and the presentation
323
in form of multi-scale maps.
324
Ramezanali et al. (2019) propose the application of a hybrid methodology, combining the
325
Best-Worst Method and Additive Ratio Assessment approaches to MPM, using vein-type
326
copper mineralisation in the Kuhsiah-e-Urmak district, Iran, as a case study. The results of the
327
proposed hybrid methodology were statistically compared to those obtained through alternative
328
methods, demonstrating the superiority of the newly proposed hybrid approach. Subsequent
329
field investigation of the most prospective targets led to the identification of outcropping copper
330
mineralisation, further corroborating the approach.
9
331
Sun et al. (2019) employ several machine learning algorithms, including support vector
332
machine, artificial neural networks and random forest, in their approach to MPM of copper
333
skarn systems in the Tongling ore district, eastern China. As indicated by the model
334
performance statistics, the random forest model outperforms the other models in terms of
335
predictive accuracy and efficiency. That is, the random forest model captures most of the known
336
deposits within the smallest prospective tracts.
337
Keykhay-Hosseinpoor et al. (2020) present a machine learning-based approach to MPM
338
targeting porphyry copper-gold systems in the Dehsalm district, eastern Iran, integrating the
339
outputs of restricted Boltzmann machine and random forest models. The target areas delineated
340
in the combined model occupy 4.2% of the study area and contain 82% of the known copper-
341
gold occurrences. The most prospective areas coincide with structures that are spatially
342
associated with known copper-gold occurrences and, thus, provide clear targets for future
343
exploration.
344
Swain et al. (2019) analyse 23 drill holes from the Gadag goldfield, India, using fractal analysis
345
to better constrain possible fluid pathways. The fractal dimension values obtained in this
346
analysis range from 0.014 to 3.000 with the higher values taken to indicate the presence of
347
interconnected fault-fracture networks representing permeable fluid pathways. The lower
348
values are taken to indicate unfavourable fluid pathways. Given the spatial correlation between
349
higher-grade gold ores and structures represented by steep fractal gradients, the results have
350
implications for exploration targeting in less well and unexplored areas.
351
Sengar et al. (2020) discuss the effectiveness of spectroscopic techniques in identifying
352
hydrothermal alteration zones. The authors use the SWIR bands of ASTER to map phyllic,
353
argillic and propylitic alteration associated with the Mundiyawas-Khera copper deposit, Alwar
354
Basin, India, and corroborate their results with results obtained from petrographic studies and
355
XRD analyses. The integrated approach resulted in a comprehensive remotely sensed
356
hydrothermal alteration map illustrating the spatial distribution of the copper-related
357
hydrothermal alteration zones and has implications for copper exploration in the greater Alwar
358
basin.
359
4. Putting the above into context
360 361
4.1.
362
Hronsky and Kreuzer (2019) emphasise that despite many decades of development, MPM is not yet
363
widely used or accepted by the global mineral exploration industry. According to the authors, practical
364
issues that limit the effectiveness of MPM include the failure (1) of input data to uniformly and
365
objectively represent the search space of interest; (2) to include as input data critical targeting-relevant
366
geoscientific elements not included or easily mapped in the available or obtainable datasets; (3) to
367
appropriately match the scale of input geological data to the prospectivity model applied; (4) to
Applying MPM to exploration targeting: Fundamental practical issues and suggested solutions for the future
10
368
appropriately define the boundaries of the study, both in terms of extent and geological events; and (5)
369
to recognise strong dependency between input layers and misuse of the mineral systems concept. It is
370
considered that these problems are not in principle barriers to the eventual successful deployment of
371
MPM as a targeting technology. However, future approaches to spatial prospectivity modelling need to
372
explicitly address these concerns. It is suggested that the most effective method may be a hybrid of
373
subjective human geological interpretation and objective, machine-based analysis, that captures the best
374
aspects of these alternative approaches; that is, an intelligence amplification (IA) rather than an artificial
375
intelligence (AI) approach.
376 377
4.2.
378
Yousefi et al., (2019) describe how exploration decision-making has become much more complex in
379
the wake of big data, in particular with respect to questions about how to best manage and use the data
380
to obtain information, generate knowledge and gain insight. The authors note that one of the ways in
381
which the mineral exploration industry works with big data is by using GIS. For example, GIS platforms
382
are often used for integration, interrogation and interpretation of diverse geoscience and mineral
383
exploration data with the goal of refining and prioritising known and identifying new targets. In this
384
paper, Yousefi et al. (1) briefly discuss the importance of carefully translating conceptual ore deposit
385
models into effective exploration targeting maps, (2) propose and describe what we term exploration
386
information systems (EIS): a new idea for an information system designed to better integrate the
387
conceptual mineral deposit model (i.e., the critical and constituent processes of the targeted mineral
388
system) with data available to support exploration targeting, and (3) discuss how best to categorise
389
mineral systems in an EIS as scale-dependent subsystems to form mineral deposits. The authors’ vision
390
for the future use of EIS in exploration targeting is one whereby the mappable ingredients of a targeted
391
mineral system are translated and combined into a set of weighted evidence (or proxy) maps
392
automatically, resulting in an auto-generated mineral prospectivity map and a series of ranked
393
exploration targets. Yousefi et al. do not envisage the EIS replacing human input and ingenuity; rather
394
they envisage the EIS as an additional tool in the exploration toolbox and as an intelligence amplifying
395
system in which humans are making use of machines to achieve the best possible results.
396
5. Concluding Remarks
397
This VSI was borne out of the Guest Editors’ desire to showcase and advance the science of MPM and
398
promote greater uptake of MPM by the global mineral exploration industry. One way this could happen
399
is through the discovery of a significant ore deposit as a direct result of MPM. In the meantime, greater
400
dissemination and accessibility of the tools and skills required for MPM may help stimulate broader
401
uptake as may the resolution of the failures highlighted by Hronsky and Kreuzer (2019). These failures
402
are not related to limitations in the MPM algorithms, but rather to some fundamental issues in the typical
403
use of input data and prospectivity maps.
Exploration information systems–A proposal for the future use of GIS in mineral exploration targeting
11
404
A key outcome and direct result of our working on this VSI was the idea of a new information system
405
for mineral exploration targeting designed to better integrate the conceptual mineral deposit model with
406
data available to support exploration targeting. The idea of an exploration information systems (EIS),
407
summarized and discussed in Yousefi et al. (2019), encapsulates all aspects we believe are required for
408
a step change in MPM and the broader field of mineral exploration targeting using GIS. Future
409
implementation of an EIS as a framework for converting data to information, information to knowledge,
410
and knowledge to insight, would facilitate problem-solving in mineral exploration targeting and provide
411
a platform where mineral systems insight can be converted into mappable criteria and the prediction of
412
undiscovered mineral deposits. Such an information system would also help address and alleviate the
413
knowledge gap surrounding ore-forming processes.
12
414
Acknowledgements
415
The Guest Editors thank Franco Pirajno, the Editor-in-Chief of Ore Geology Reviews, for his ongoing
416
support and making this Special Issue possible. In the same vein, we extend our gratitude to Mary
417
Ayyamperumal, the Journal Manager, and Emily Wan, the Special Issues Coordinator, for their
418
unwavering support and assistance. A very warm thank you goes to the authors who responded to our
419
call for papers. In addition, we are extremely grateful to the reviewers listed below (in alphabetical
420
order) for their time, dedication and valuable feedback, which ensured the quality and success of this
421
Special Issue: Maysam Abedi, Peyman Afzal, James Austin, Amin Bassrei, Frank Bierlein, Richard
422
Blewett, Alazar Yosef Billay, Matt Bruce, Antonella Buccianti, Kris Butera, John Carranza, Thais
423
Andressa Carrino, David Clark, Li Zhen Cheng, Alvaro Crosta, Pablo Andrada de Palomera, Pasi Eilu,
424
Moslem Fatehi, Leonardo Feltrin, Arianne Ford, Steve Gardoll, Ignacio Gonzalez-Alvarez, Eric
425
Grunsky, Mark Hannington, Jeff Harris, Shawn Hood, Jon Hronsky, Simon Jowitt, Mark Lindsay, Yue
426
Liu, Anthony Mamuse, Philippa Mason, Václav Metelka, Johann Mitloehner, Ahmad Reza Mokhtari,
427
Giovanni Mongelli, Simon Nielsen, Gregor Alan Partington, Alok Porwal, Anthony Reid, Ronald Reid,
428
Pierre-Simon Ross, Majid Tangestani, Johanna Troppa, Jian Wang, Wenlei Wang, Andy Wilde, Tom
429
Wise, and Renguang Zuo. In addition, we would like to point out here that many of the above reviewed
430
more than one manuscript. Special thanks also go to the anonymous reviewers who dealt with the
431
contributions authored by the Guest Editors.
13
433
References
434
Agnew, P.D., 2004, Applications of geochemistry in targeting with emphasis on large stream and lake
435
sediment data compilations. In: SEG 2004—Predictive Mineral Discovery Under Cover, Perth, 27
436
September-1 October 2004, Extended Abstracts, 139-144.
437 438
Almasi, A., Yousefi, M., Carranza, E.J.M., 2017. Prospectivity analysis of orogenic gold deposits in Saqez-Sardasht Goldfield, Zagros Orogen, Iran. Ore Geology Reviews, 91, 1066-1080.
439
Baker, P.M., Waugh, R.S., 2005. The role of surface geochemistry in the discovery of the Babel and
440
Nebo magmatic nickel–copper–PGE deposits. Geochemistry: Exploration, Environment, Analysis,
441
5(3), 195-200.
442
Bennett, M., Gollan, M., Staubmann, M., Bartlett, J., 2014. Motive, means, and opportunity: key factors
443
in the discovery of the Nova-Bollinger magmatic nickel-copper sulfide deposits in Western
444
Australia. Society of Economic Geologists, Special Publication, 18, 301-320.
445 446 447 448
Bonham-Carter, G.F. 1994. Geographic information systems for geoscientists: Modelling with GIS. Pergamon, Oxford, 398 p. Brauhart, C.W., 2019. The role of geochemistry in understanding mineral systems. ASEG Extended Abstracts, 2019(1), 1-5.
449
Byrne, K., Lesage, G., Morris, W.A., Enkin, R.J., Gleeson, S.A., Lee, R.G., 2019. Variability of outcrop
450
magnetic susceptibility and its relationship to the porphyry Cu centers in the Highland Valley
451
Copper district. Ore Geology Reviews 107, 201-217.
452
Carlile, J.C., Davey, G.R., Kadir, I., Langmead, R.P., Rafferty, W.J., 1998. Discovery and exploration
453
of the Gosowong epithermal gold deposit, Halmahera, Indonesia. Journal of Geochemical
454
Exploration, 60(3), 207-227.
455 456
Carranza, E.J.M., 2008. Geochemical anomaly and mineral prospectivity mapping in GIS. Handbook of Exploration and Environmental Geochemistry 11, Elsevier, Amsterdam, 368 p.
457
Chen, J., Yousefi, M., Zhao, Y., Zhang, C., Zhang, S., Mao, Z., Peng, M., Han, R., 2019. Modelling
458
ore-forming processes through a cosine similarity measure: Improved targeting of porphyry copper
459
deposits in the Manzhouli belt, China. Ore Geology Reviews 107, 108-118.
460 461
Cohen, D.R., Kelley, D.L., Anand, R., Coker, W.B., 2010. Major advances in exploration geochemistry, 1998–2007. Geochemistry: Exploration, Environment, Analysis, 10(1), 3-16.
462
Chudasama, B., Kreuzer, O.P., Thakur, S., Porwal, A.K., Buckingham, A.J., 2018. Surficial uranium
463
mineral systems in Western Australia: Geologically-permissive tracts and undiscovered
464
endowment. In: Quantitative and Spatial Evaluations of Undiscovered Uranium Resources,
465
International Atomic Energy Agency, IAEA-TECDOC-1861, 446-614.
466 467
Collins, S., 2001. Tritton copper deposit, Girilambone NSW. A geophysical discovery. Exploration Geophysics, 32(4), 147-151.
468
Cox, R., Curtis, R., 1977. The discovery of the Lady Loretta zinc-lead-silver deposit, northwest
469
Queensland, Australia—A geochemical exploration case history. Journal of Geochemical
470
Exploration, 8(1-2), 189-202.
14
471
Craven, B., Rovira, T., Grammer, T., Styles, M., 2000. The role of geophysics in the discovery and
472
delineation of the Cosmos nickel sulphide deposit, Leinster area, Western Australia. Exploration
473
Geophysics, 31(2), 201-209.
474
Crebs, T.J., 1996. Discovery geophysics of the Voisey's Bay Ni-Cu-Co deposit, Labrador, Canada. In:
475
Society of Exploration Geophysicists, SEG Technical Program Expanded Abstracts, 617-618.
476
Czarnota, K., Blewett, R.S., Goscombe, B., 2010. Predictive mineral discovery in the eastern Yilgarn
477
Craton, Western Australia: An example of district scale targeting of an orogenic gold mineral
478
system. Precambrian research, 183(2), 356-377.
479
DeWolfe, Y.M., Gibson, H.L., Richardson, D., 2019. 3D reconstruction of volcanic and ore-forming
480
environments of a giant VMS system: A case study from the Kidd Creek Mine, Canada. Ore
481
Geology Reviews 101, 532-555.
482
Ferrier, G., Gana, A., Pope, R., 2019. Prospectivity mapping for high sulfidation epithermal porphyry
483
deposits using an integrated compositional and topographic remote sensing dataset. Ore Geology
484
Reviews 107, 353-363.
485
Ford, K., Keating, P., Thomas, M.D., 2007. Overview of geophysical signatures associated with
486
Canadian ore deposits. In: Mineral deposits of Canada—A synthesis of major deposit-types, district
487
metallogeny, the evolution of geological provinces, and exploration methods. Geological
488
Association of Canada, Mineral Deposits Division, Special Publication, 5, 939-970.
489
Ford, A., Peters, K.J., Partington, G.A., Blevin, P.L., Downes, P.M., Fitzherbert, J.A., Greenfield, J.E.,
490
2019. Translating expressions of intrusion-related mineral systems into mappable spatial proxies
491
for mineral potential mapping: Case studies from the Southern New England Orogen, Australia.
492
Ore Geology Reviews 111, 102943.
493
Gaillard, N., Williams-Jones, A.E., Clark, J.R., Salvi, S., Perrouty, S., Linnen, R.L., Olivo, G.R., 2020.
494
The use of lithogeochemistry in delineating hydrothermal fluid pathways and vectoring towards
495
gold mineralization in the Malartic district, Québec. Ore Geology Reviews, 103351.
496
Ghasemzadeh, S., Maghsoudi, A., Yousefi, M., Mihalasky, M.J. 2019. Stream sediment geochemical
497
data analysis for district-scale mineral exploration targeting: Measuring the performance of the
498
spatial U-statistic and C-A fractal modeling. Ore Geology Reviews 113, 103115.
499
González-Álvarez, I., Porwal, A.K., Beresford, S.W., McCuaig, T.C., Maier, W.D., 2010.
500
Hydrothermal Ni prospectivity analysis of Tasmania, Australia. Ore Geology Reviews 38, 168-183.
501
Goyal, H., Sharma, C., Joshi, N., 2017. An integrated approach of GIS and spatial data mining in big
502 503 504 505 506
data. International Journal of Computer Applications 169(11), 1-6. Grunsky, E.C., de Caritat, P., 2019. State-of-the-art analysis of geochemical data for mineral exploration. Geochemistry: Exploration, Environment, Analysis, 2019-031. Hagemann, S.G., Lisitsin, V.A., Huston, D.L., 2016. Mineral system analysis: Quo vadis. Ore Geology Reviews 76, 504-522.
15
507
Holden, E.J., Liu, W., Horrocks, T., Wang, R., Wedge, D., Duuring, P., Beardsmore, T., 2019.
508
GeoDocA–fast analysis of geological content in mineral exploration reports: A text mining
509
approach. Ore Geology Reviews 111, 102919.
510 511 512 513 514 515
Hope, M., Andersson, S., 2016. The discovery and geophysical response of the Atlántida Cu–Au porphyry deposit, Chile. Exploration Geophysics, 47(3), 237-247. Hronsky, J.M.A., 2004, The science of exploration targeting. Centre for Global Metallogeny, SEG 2004 Conference, Perth, University of Western Australia Publication 33, 129-133. Hronsky, J.M., Groves, D.I., 2008. Science of targeting: definition, strategies, targeting and performance measurement. Australian Journal of Earth Sciences, 55(1), 3-12.
516
Hronsky, J.M.A, Kreuzer, O.P., 2019. Applying spatial prospectivity mapping to exploration targeting:
517
Fundamental practical issues and suggested solutions for the future. Ore Geology Reviews 107,
518
647-653.
519
Huston, D.L., Mernagh, T.P., Hagemann, S.G., Doublier, M.P., Fiorentini, M., Champion, D.C., Jaques,
520
A.L., Czarnota, K., Cayley, R., Skirrow, R., Bastrakov, E., 2016. Tectono-metallogenic systems—
521
the place of mineral systems within tectonic evolution, with an emphasis on Australian examples.
522
Ore Geology Reviews, 76, 168-210.
523
Jenkin, G.R., Lusty, P.A., McDonald, I., Smith, M.P., Boyce, A.J. Wilkinson, J.J., 2015. Ore deposits
524
in an evolving Earth: An introduction. Geological Society of London, Special Publications 393, 1-
525
8.
526
Joly, A., Porwal, A.K., McCuaig, T.C., 2012. Exploration targeting for orogenic gold deposits in the
527
Granites-Tanami Orogen: Mineral system analysis, targeting model and prospectivity analysis. Ore
528
Geology Reviews 48, 349-383.
529
Keykhay-Hosseinpoor, M., Kohsary, A.H., Hossein-Morshedy, A., Porwal, A., 2020. A machine
530
learning-based approach to exploration targeting of porphyry Cu-Au deposits in the Dehsalm
531
district, Eastern Iran. Ore Geology Reviews, 116, 103234.
532 533
Kirkham, R.V., Sinclair, W.D., Thorpe, R.I. Duke, J.M., eds., 1993. Mineral deposit modeling. Geological Association of Canada, Special Paper 40, 770 p.
534
Knox-Robinson, C.M., Wyborn, L.A.I., 1997. Towards a holistic exploration strategy: Using
535
geographic information systems as tool to enhance exploration. Australian Journal of Earth
536
Sciences 44, 453-463.
537
Kreuzer, O.P., Etheridge, M.A., Guj, P., McMahon, M.E., Holden, D.J., 2008. Linking mineral deposit
538
models to quantitative risk analysis and decision-making in exploration. Economic Geology 103(4),
539
829-850.
540
Kreuzer, O.P., Markwitz, V., Porwal, A.K., McCuaig, T.C., 2010. A continent-wide study of Australia's
541
uranium potential—Part I: GIS-assisted manual prospectivity analysis. Ore Geology Reviews 38,
542
334-366.
543
Kreuzer, O.P., Miller, A.V., Peters, K.J., Payne, C., Wildman, C., Partington, G.A., Puccioni, E.,
544
McMahon, M.E., Etheridge, M.A., 2015. Comparing prospectivity modelling results and past
16
545
exploration data: A case study of porphyry Cu–Au mineral systems in the Macquarie Arc, Lachlan
546
Fold Belt, New South Wales. Ore Geology Reviews 71, 516-544.
547
Kreuzer, O.P., Buckingham, A., Mortimer, J., Walker, G., Wilde, A., Appiah, K., 2019. An integrated
548
approach to the search for gold in a mature, data-rich brownfields environment: a case study from
549
Sigma-Lamaque, Quebec. Ore Geology Reviews 111, 102977.
550
Lord, D., Etheridge, M.A., Willson, M., Hall, G., Uttley, P.J., 2001. Measuring exploration success: An
551
alternative to the discovery-cost-per-ounce method of quantifying exploration success, Society of
552
Economic Geologists Newsletter 45, 1 and 10-16.
553
Magoon, L.B., Dow, W.G., 1994. The petroleum system. In: Magoon, L.B., Dow, W.G., (eds.), The
554
Petroleum System: From Source to Trap. American Association of Petroleum Geologists, Memoir
555
60, 3-24.
556 557 558 559 560 561 562 563 564 565
McCuaig, T.C., Hronsky, J.M.A., 2014. The mineral system concept: the key to exploration targeting. Society of Economic Geologists, Special Publication 18, 153-176. McCuaig, T.C., Beresford, S., Hronsky, J., 2010. Translating the mineral systems approach into an effective exploration targeting system. Ore Geology Reviews 38, 128-138. Nguyen, T.T., Vu, T.D., 2019. Identification of multivariate geochemical anomalies using spatial autocorrelation analysis and robust statistics. Ore Geology Reviews 111, 102985. Nielsen, S.H.H., Partington, G.A., Franey, D., Dwight, T., 2019. 3D mineral potential modelling of gold distribution at the Tampia gold deposit. Ore Geology Reviews 109, 276-289. Niiranen, T., Nykänen, V., Lahti, I., 2019. Scalability of the mineral prospectivity modelling–An orogenic gold case study from northern Finland. Ore Geology Reviews 109, 11-25.
566
Nykänen, V., Groves, D. I,; Ojala, V. J., Eilu, P., Gardoll, S. J. 2008a. Reconnaissance-scale conceptual
567
fuzzy-logic prospectivity modelling for iron oxide copper-gold deposits in the northern
568
Fennoscandian Shield, Finland. Australian Journal of Earth Sciences 55 (1), 25-38.
569
Nykänen, V., Groves, D. I., Ojala, V. J., Gardoll, S. J. 2008b. Combined conceptual/empirical
570
prospectivity mapping for orogenic gold in the northern Fennoscandian Shield, Finland. Australian
571
Journal of Earth Sciences 55 (1), 39-59.
572
Nykänen, V., Salmirinne, H., 2007. Prospectivity analysis of gold using regional geophysical and
573
geochemical data from the Central Lapland Greenstone Belt, Finland. Geological Survey of
574
Finland, 44, 251-269.
575
Partington, G.A., 2010. Developing models using GIS to assess geological and economic risk: An
576
example from VMS copper gold mineral exploration in Oman. Ore Geology Reviews, 38, 197-207.
577
Paterson, N.R., 1966. Mattagami Lake Mines—A discovery by geophysics. Mining Geophysics, 1, 185-
578 579 580
196. Porwal, A.K., Kreuzer, O.P., 2010. Introduction to the special issue: Mineral prospectivity analysis and quantitative resource estimation. Ore Geology Reviews 38, 121–127.
17
581
Ramezanali, A.K., Feizi, F., Jafarirad, A., Lotfi, M., 2019. Application of Best-Worst Method and
582
Additive Ratio Assessment in mineral prospectivity mapping: A case study of vein-type copper
583
mineralization in the Kuhsiah-e-Urmak area, Iran. Ore Geology Reviews, 117, 103268.
584 585
Rutter, H., Esdale, D.J., 1985. The geophysics of the Olympic Dam discovery. Exploration Geophysics, 16(3), 273-276.
586
Sengar, V.K., Venkatesh, A.S., Ray, P.C., Sahoo, P.R., Khan, I., Chattoraj, S.L., 2020. Spaceborne
587
mapping of hydrothermal alteration zones associated with the Mundiyawas-Khera copper deposit,
588
Rajasthan, India, using SWIR bands of ASTER: Implications for exploration targeting. Ore
589
Geology Reviews, 103327.
590 591
Sillitoe, R.H., 2000. Gold-rich porphyry deposits: descriptive and genetic models and their role in exploration and discovery. Reviews in Economic Geology, 13, 315-345.
592
Skirrow, R. G., Murr, J., Schofield, A., Huston, D. L., van der Wielen, S., Czarnota, K., Coghlan, R.,
593
Highet, L. M., Connolly, D., Doublier, M., Duan, J., 2019. Mapping iron oxide Cu-Au (IOCG)
594
mineral potential in Australia using a knowledge-driven mineral systems-based approach. Ore
595
Geology Reviews 113, 103011.
596
Sun, T., Chen, F., Zhong, L., Liu, W., Wang, Y., 2019. GIS-based mineral prospectivity mapping using
597
machine learning methods: A case study from Tongling ore district, eastern China. Ore Geology
598
Reviews 109, 26-49.
599 600 601 602
Swain, S. K., Roy, P.N.S., Mukherjee, B., Sawkar, R.H., 2019. Fractal dimension and its translation into a model of gold spatial proxy. Ore Geology Reviews 110, 102935. Torppa, J., Nykanen, V., Molnar, F., 2019. Unsupervised clustering and empirical fuzzy memberships for mineral prospectivity modeling. Ore Geology Reviews 107, 58-71.
603
Uchôa, J.C.F., Toledo, C.L.B., Silva, A.M., Mendonça, A.F., Hagemann, S.G., Kreuzer, O.P., Carmelo,
604
A., submitted. Multi-process and multi-scale spatial predictive analysis of an orogenic Archean
605
gold system, Rio das Velhas Greenstone Belt, Brazil. Ore Geology Reviews.
606
Wang, Z., Dong, Y., Zuo, R., 2019. Mapping geochemical anomalies related to Fe–polymetallic
607
mineralization using the maximum margin metric learning method. Ore Geology Reviews 107,
608
258-265.
609 610
Witherly, K., Mackee, G., 2015. Geophysical responses over the Cannington Ag-Zn-Pb deposit, Queensland. ASEG Extended Abstracts, 2015(1), 1-5. DOI: 10.1071/ASEG2015ab179.
611
Wyborn, L.A.I., Heinrich, C.A., Jaques, A.L., 1994. Australian Proterozoic mineral systems: Essential
612
ingredients and mappable criteria. Australasian Institute of Mining and Metallurgy Publication
613
Series 5, 109-115.
614
Yousefi, M., 2017. Recognition of an enhanced multi-element geochemical signature of porphyry
615
copper deposits for vectoring into mineralized zones and delimiting exploration targets in Jiroft
616
area, SE Iran. Ore Geology Reviews 83, 200-214.
617 618
Yousefi, M., Carranza, E.J.M., 2015a. Fuzzification of continuous-value spatial evidence for mineral prospectivity mapping. Computers & Geosciences 74, 97-109.
18
619
Yousefi, M., Carranza, E. J. M., 2015b. Prediction-area (P-A) plot and C-A fractal analysis to classify
620
and evaluate evidential maps for mineral prospectivity modeling. Computers & Geosciences 79,
621
69-81.
622 623
Yousefi, M., Nykänen, V., 2017. Introduction to the special issue: GIS-based mineral potential targeting. Journal of African Earth Sciences 12, 1-4.
624
Yousefi, M., Kreuzer, O.P., Nykänen, V., Hronsky, J.M.A., 2019. Exploration information systems –
625
A proposal for the future use of GIS in mineral exploration targeting. Ore Geology Reviews 111,
626
103005.
627 628
Zekri, H., Mokhtari, A.R., Cohen, D.R., 2019. Geochemical pattern recognition through matrix decomposition. Ore Geology Reviews, 104, 670-685.
629
Zhang, Z., Wang, G., Carranza, E.J.M., Zhang, J., Tao, G., Zeng, Q., Sha, D., Li, D., Shen, J., Pang, Z.,
630
2019. Metallogenic model of the Wulong gold district, China, and associated assessment of
631
exploration criteria based on multi-scale geoscience datasets. Ore Geology Reviews 114, 103138.
632 633 634 635 636 637 638 639
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:
640 641 642 643 644 645 646 647
Highlights No applicable
648 649 650
Graphical abstract Not applicable
19