Journal Pre-proof Natural disasters and their impacts on the silica losses from agriculture in China from 1988 to 2016 Dexiang Zheng, Heng Zhang, Yuze Yuan, Zhong Deng, Ku Wang, Geng Lin, Yi Chen, Jiangjiang Xia, Shao-Fei Jin PII:
S1474-7065(19)30230-X
DOI:
https://doi.org/10.1016/j.pce.2020.102840
Reference:
JPCE 102840
To appear in:
Physics and Chemistry of the Earth
Received Date: 13 November 2019 Revised Date:
16 January 2020
Accepted Date: 24 January 2020
Please cite this article as: Zheng, D., Zhang, H., Yuan, Y., Deng, Z., Wang, K., Lin, G., Chen, Y., Xia, J., Jin, S.-F., Natural disasters and their impacts on the silica losses from agriculture in China from 1988 to 2016, Physics and Chemistry of the Earth (2020), doi: https://doi.org/10.1016/j.pce.2020.102840. 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 Published by Elsevier Ltd.
CRediT author statement
Dexiang Zheng: Conceptualization, Methodology, Software, Investigation, Supervision; Heng Zhang: Conceptualization, Investigation; Yuze Yuan: Writing- Reviewing and Editing; Zhong Deng: Software; Ku Wang: Data Curation, Resources; Geng Lin: Writing- Reviewing and Editing; Yi Chen: Writing- Reviewing and Editing; Jiangjiang Xia: Investigation, Supervision; Shao-Fei Jin: Conceptualization, Methodology, Software, Validation, Formal analysis, Writing - Original Draft, Writing- Reviewing and Editing, Visualization,Supervision.
1 2
Natural disasters and their impacts on the silica losses from
3
agriculture in China from 1988 to 2016
4 5
Dexiang Zhenga#, Heng Zhangc#, Yuze Yuand, Zhong Dengb, Ku Wangb, Geng Lind, Yi Chenb,
6
Jiangjiang Xiae, Shao-Fei Jinb*
7 8
a Forestry College, Fujian Agriculture and Forestry University, Fuzhou, 350108, China
9
b Department of Geography, Minjiang University, Fuzhou, 350108, China
10
c Key Laboratory of Oceanic and Polar Fisheries, Ministry of Agriculture, East China Sea Fisheries
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Research Institute, Chinese Academy of Fishery Sciences, Shanghai 200090, China
12
d College of Mathematics and Data Science, Minjiang University, Fuzhou, 350108, China
13
e Key Laboratory of Regional Climate-Environment for Temperate East Asia, Institute of Atmospheric
14
Physics, Chinese Academy of Sciences, Beijing 100029, China
15 16
#
17
* corresponding author: Shaofei Jin,
[email protected]
18
Address: Minjiang University, NO.200, XiYuanGong Road, MinHou District, Fuzhou, Fujian, China.
19
These authors contributed equally.
20 21
Abstract
22 23
Natural disasters play significant destructive roles in agricultural production. Agriculture has
24
substantially altered the biogeochemical silica cycle via the harvest of the grain and straw of
25
silica-rich crops. China is a developing agricultural country that experiences frequent natural disasters.
26
Although the spatiotemporal changes in the occurrence of natural disasters are well known for
27
individual disaster events, the study of the effects of multiple disasters on cereal crop productivity and
28
the resultant silica harvest is still relatively new. To make the connection between natural disasters
29
and the silica biogeochemical cycle, we compiled a dataset of natural disasters and crop production
30
and silicon contents in cereal crops (rice, wheat, and maize) in China using province-level data from
31
1988 to 2016. Our results show that the area affected by natural disasters declined significantly after
32
2000, and changes in the area affected by natural disasters varied at the province level. From 1988 to
33
2016, the total silica losses from grain and straw harvests due to natural disasters were 7.14 and 53.10
34
million tons, respectively. Half of the silica loss in more than half of the provinces was caused by
35
drought. Our study suggests that drought prevention will increase the size of the silica sink and
36
thereby increase the size of the carbon sink in China’s agriculture.
37 38 39 40
Keywords: Climatic risk; Drought; Hail; Floods; silicon cycle
41
1 Introduction
42 43
Natural disasters, defined as inevitable natural events that occur worldwide, can result in substantial
44
losses of life or severe damage to property. Natural disasters negatively impact crop production(Lesk
45
et al., 2016) and thus threaten the sustainable development of the global food supply (Lesk et al.,
46
2016). Agriculture, a human-dominated system, is highly sensitive to agricultural natural disasters
47
(Miraglia et al., 2009; Philpott et al., 2008), including droughts, floods, low-temperature events,
48
hailstorms, and typhoons (Guan et al., 2015). Forecasting the intensities of these natural disasters in
49
advance can allow communities to take measures to maintain food production, although controlling
50
natural disasters is still currently beyond the scope of human ability (Wang et al., 2019). Furthermore,
51
in the context of more frequent natural disasters (Lei, 2014), the impact of natural disasters on
52
biogeochemical cycles has been investigated, e.g., the carbon cycle (Reichstein et al., 2013) and the
53
nitrogen cycle ((Fuchslueger et al., 2014)). Meanwhile, the agricultural system plays a significant role
54
in regulating biogeochemical cycles, especially those of plant nutrients, e.g., the silicon cycle (Conley,
55
2002; Haynes, 2017; Song et al., 2014a; Song et al., 2013; Song et al., 2014b; Song et al., 2012; Song
56
et al., 2014c; Street‐Perrott and Barker, 2008; Struyf et al., 2009).
57 58
Silicon, the second most abundant element in the earth’s crust and a quasi-essential beneficial nutrient
59
for plants (Epstein, 2009; Marafon and Endres, 2013; Tripathi et al., 2014), plays significant roles in
60
protecting plants from various biotic and abiotic stresses, e.g., drought (Zhu and Gong, 2014) and
61
heavy metal toxicity (Epstein, 1994, 2009). Furthermore, silica (silicon in biogeochemistry) has been
62
considered to play key roles in ecological and biogeochemical processes, specifically in regulating the
63
global carbon cycle via 1) consuming CO2 through mineral weathering (Garrels, 1983); 2) providing
64
long-term carbon sinks for occlusion-carbon in phytoliths in soils and sediments (Parr and Sullivan,
65
2005); and 3) carbon sequestration in oceanic phytoplankton (Carey and Fulweiler, 2012, 2016;
66
Street‐Perrott and Barker, 2008; Struyf et al., 2009). In agriculture, silica is, to date, the only element
67
that is never toxic to plants, and it is used to improve crop productivity (Epstein, 1994; Keeping and
68
Kvedaras, 2008). Therefore, the silica harvest from agriculture has become a new loop in the global
69
silicon cycle (Vandevenne et al., 2012). The global crop harvest accounts for 35% of the total biogenic
70
silica in terrestrial ecosystems annually (Carey and Fulweiler, 2012). Crops such as rice, maize, wheat,
71
and sugarcane accumulate high silica content (more than 1% of dry weight) in their grains and straw
72
(Datnoff et al., 1997; Gocke et al., 2013; Li et al., 2013; Parr and Sullivan, 2011; Song et al., 2014b).
73
In 2017, the global grain production for wheat, maize, and rice was 0.772, 1.13, and 0.770 billion tons,
74
respectively. China’s agriculture accounted for 14.3%, 14.2%, and 25.0%, respectively, of those totals
75
(http://www.fao.org/faostat/zh/#data/QC/visualize). Furthermore, the total straw production in China
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was 0.98 billion tons in 2016. The straw production from the three cereal crops above accounted for
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83.51% of China’s total straw production (Shi et al., 2019). The harvest of grain and straw from cereal
78
crops (wheat, maize, and rice) in China has been more than 0.46 and 0.81 million tons, indicating that
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these crops make a significant contribution to the agricultural silica harvest.
80 81
China is suffered from natural disaster due to its complex geographical environment and frequent
82
occurring East Asian monsoon (Simelton, 2011; Zhou et al., 2013). These frequent disasters have
83
disturbed the sustainable development of China’s economy and society. For instance, in 2018, natural
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disasters caused 264.5 billion RMB in damage, affected 130 million people, including 589 deaths, and
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affected 20.8 million hundred hectares (ha) of cultivation area. Therefore, natural disasters have
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negative impacts on food production in China. Although previous studies investigated the
87
spatiotemporal patterns of natural disasters and their impacts on grain production (Du et al., 2015; Li
88
et al., 2010; Liu et al., 2012; Shi and Tao, 2014; Zhang, 2004), a comprehensive analysis of multiple
89
natural disaster events and their impacts on different cereal crops
90
et al., 2019). Further, the silica harvest in agriculture has become an inconvenient loop in the global
91
silica cycle (Vandevenne et al., 2012); however, to our knowledge, no studies have estimated the
92
losses to the silica harvest due to natural disasters.
93
has not yet been performed (Guo
94
To address these two research gaps, here, we compiled datasets of natural disasters and crop
95
production in China using data at the provincial level from 1988 to 2016 and measured the silicon
96
contents of different cereal crops to address the gaps between the climatic disasters and the silicon
97
cycle. Further, we asked three questions as follows: 1) How have the effects of natural disasters on
98
different cereal crops changed in China over the past three decades? 2) If the above changes were
99
detected, how do the effects of natural disasters differ for the different cereal crops in each province?
100 101 102
3) How much silica has been lost due to different natural disasters over the past three decades?
103
2 Methods and Materials
104 105
2.1 Study area
106 107
In this study, we investigated the changes in natural disasters and their impacts on silica harvest from
108
1988 to 2016 in all of China using province-level data. China (3˚31’’00’’N–53˚33’0”N,
109
73˚29’59.79”E–135˚2’30’’E), located in eastern Asia, is the fourth largest country in the world and is
110
occupied by more than 1.3 billion people. China feeds more than 20% of the world’s population with
111
only 7% of the world’s land area. Therefore, sustainable agricultural production plays a crucial role in
112
food security for China. Due to the large area of the country, multiple types of natural disasters have
113
occurred across the entire country. To investigate the trends in natural disasters more accurately,
114
according traditional definitions (Li and Jin, 2011), this study divided the 34 provinces into six
115
geographical regions (Table 1): Northeast (NE), North China (N), the Changjiang River region (CJ),
116
Northwest (NW), Southwest (SW), and Southeast (SE) (Figure 1 and Table 1). Three regions (Hong
117
Kong, Macao, and Taiwan) were excluded because the data were unavailable. The six geographical
118
regions each have specific characteristics and are described here. The NE region, which includes
119
Heilongjiang, Jilin, and Liaoning, has been identified as the key zone for ecological conservation and
120
food security in China. The N region, including Beijing, Tianjin, Hebei, Henan, Shandong, and Shanxi,
121
is the second largest agricultural development region in China and has thousands of years of
122
agricultural history. The CJ, which includes Shanghai, Jiangsu, Zhejiang, Anhui, Hubei, Hunan, and
123
Jiangxi, is known as the “land of fish and rice” in China. The NW region, which includes Inner
124
Mongolia, Shaanxi, Ningxia, Gansu, Qinghai, and Xinjiang, is well known as the origin place of
125
ancient Chinese agriculture and plays a crucial role in modern agriculture in semi-arid and arid
126
agroecosystems. The SW region, which includes Chongqing, Sichuan, Guizhou, Yunnan, and Xizang,
127
was once known as the “land of abundance”. The SE region, which includes Fujian, Guangdong,
128
Guangxi, and Hainan, is located in the subtropical zone with high temperatures and has been the
129
location for experiments in high-yield agriculture that produce three rice crops per year.
130 131
Figure 1. Map of China’s provincial administrative divisions and geographical regions in this study.
132
NE: Northeast; N: North China; CJ: Changing River regions; NW: Northwest, SW: Southwest, and SE:
133
Southeast.
134 135 Code NE N CJ
Table 1. Geographical regions in this study. Provinces Heilongjiang, Jilin, and Liaoning Beijing, Tianjin, Hebei, Henan, Shandong, Shanxi Shanghai, Jiangsu, Zhejiang, Anhui, Hubei, Hunan, Jiangxi
NW SW SE
Inner Mongolia, Shaanxi, Ningxia, Gansu, Qinghai, Xinjiang Chongqing, Sichuan, Guizhou, Yunnan, Xizang Fujian, Guangdong, Guangxi, Hainan
136 137 138
2.2 Data sources
139 140
The natural disaster data were collected from the China Rural Statistical Yearbook
141
(http://data.cnki.net/yearbook/Single/N2019030220). These data included the annual areas of different
142
disaster effect intensities. Disaster intensity was divided into three categories: mild, moderate, and
143
severe. These categories were determined by the grain loss caused by the natural disasters. The mild
144
effect was defined as when the grain loss was between 10% and 30%; the moderate effect was defined
145
as when the grain loss was between 30% and 70%; and the severe effect was defined as when the
146
grain loss was more than 70%. Furthermore, data on the areas affected by natural disasters were
147
collected for four disaster types: floods, droughts, low temperatures, and hail. In this study, the
148
cultivation area and productivity data for three cereal crops, i.e., rice, wheat, and maize, were
149
collected
150
(http://data.cnki.net/yearbook/Single/N2017120001). All data were collected and analysed at the
151
provincial level.
from
the
China
Agriculture
Statistical
Report
152 153
2.3 Methods
154 155
Equations 1-5 are the formulas used to calculate the silica loss due to natural disasters from the grain
156
and straw in the entire study area.
157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172
where i represents the province; k represents the crop type; j represents the disaster type; Silica loss
173
from Grain (ton) represents the total silica loss from grain in China; Silica loss from Straw (ton)
174
represents the total silica loss from straw in China; Yield represents the yield of each crop per ha;
175
AreaDisa represents the area affected by the disasters; CerealAreaR represents the ratio of different
= ∑ ∑ ! × 0.01 Equation (1)
,
× =
,
×
∑ = ∑ ∑ × 0.01 Equation (2)
! ×
×
! ×
∑
×
×
×
×
∑ % = ∑ ∑ × × × '1 − ) , − )* , + × 0.01 Equation (3) % = ∑ ∑ ! × , × '1 − )
+
,
∑ × × − )* , + × × 0.01 Equation (4)
×
×
×
×
×
% Equation (5)
176
cereal cultivation areas; Silicon represents the silicon contents in grain or straw in different cereal
177
crops; Intensity represents the loss of grain or straw caused by different intensities of natural disasters;
178
GtS represents the ratio of grain to straw in different provinces and cereal crops; STR represents the
179
rate of straw returning in different provinces and for different cereal crops; STB represents the rate of
180
straw burning in different provinces and for different cereal crops; SD represents the standard
181
deviation of the intensities of the different natural disasters; and 0.01 is the conversion factor in the
182
equations. The detailed information for the parameters mentioned above is provided below. The grain
183
to straw ratio is listed in Table 2 and was compiled from the study (Liu and Li, 2017)[Liu and Li 2017,
184
and refs therein]. The straw returning rates and straw burning rates in different regions for wheat,
185
maize, and rice in different study periods are listed in Table 3 and Table 4, respectively [Liu and Li
186
2017, and refs therein]. The intensity of natural disasters is listed in Table 5. The mean silica content
187
in wheat, maize, and rice was collected from (National Agricultural Technology Extension Service
188
Center, 1999) and is listed in Table 6.
189 190 Crops Wheat Maize Rice 191 192 193 194
Table 2. Ratio of grain to straw in different regions for wheat, maize, and rice. Region NE 1.56 1.11 0.91
N 1.34 1.23 0.97
CJ 1.39 1.29 1.08
NW 1.1 1.29 1.03
SW 1.49 1.28 0.95
SE 1.36 1.27 0.93
195 196
197 198 199
200
Table 3. Straw returning rates in different regions for wheat, maize, and rice in different study periods. Region NE N CJ NW SW SE 1980s Wheat 0.3 0.27 0.3 0.3 0.31 0.32 Maize 0.3 0.27 0.29 0.29 0.3 0.31 Rice 0.21 0.23 0.21 0.21 0.22 0.23 1990s Wheat 0.12 0.44 0.47 0.3 0.31 0.32 Maize 0.05 0.42 0.29 0.29 0.3 0.31 Rice 0.12 0.38 0.43 0.21 0.22 0.23 2000s Wheat 0.67 0.69 0.42 0.33 0.34 0.32 Maize 0.12 0.5 0.33 0.25 0.32 0.31 Rice 0.28 0.15 0.41 0.16 0.37 0.4 2010s Wheat 0.54 0.87 0.75 0.46 0.41 0.32 Maize 0.27 0.81 0.7 0.5 0.42 0.4 Rice 0.54 0.7 0.75 0.66 0.64 0.77 Table 4. Burning rates of straw in different regions for wheat, maize, and rice in different study periods. Region NE N CJ NW SW SE 1980s Wheat 0.26 0.26 0.26 0.26 0.26 0.26 Maize 0.26 0.23 0.26 0.26 0.26 0.26 Rice 0.49 0.46 0.44 0.24 0.3 0.48 1990s Wheat 0.48 0.4 0.26 0.26 0.26 0.26 Maize 0.45 0.45 0.26 0.26 0.26 0.26 Rice 0.49 0.46 0.44 0.24 0.3 0.48 2000s Wheat 0.4 0.23 0.45 0.3 0.41 0.28 Maize 0.55 0.36 0.49 0.27 0.35 0.47 Rice 0.49 0.46 0.44 0.24 0.3 0.48 2010s Wheat 0.26 0.84 0.16 0.14 0.31 0.28 Maize 0.42 0.12 0.22 0.29 0.31 0.47 Rice 0.17 0.04 0.13 0.04 0.1 0.2
201 202 203 Lower
Table 5. Definition of the intensity categories for natural disasters. Mild Moderate Severe 10% 30% 80%
Mean SD Upper 204 205 206 207
20% 5.10% 30%
55% 12.76% 80%
90% 5.10% 30%
Total silicon content analysis in winter wheat under different water stress conditions
Wheat Maize Rice
Table 6. Mean silica content (% dry weight) in wheat, maize, and rice Si Content (% dry weight) Grain Straw 0.12 3.15 0.06 2.98 0.36 9.45
208 209
2.4 Statistical analysis
210
A linear regression method was applied to identify the changes in silica loss due to natural disasters
211
and the changes in the affected areas in each province from 1988 to 2017. All statistical analysis and
212
plot creation was performed using R programming software (R Core Team, 2019). All raw data and
213
codes for the analyses can be found in Supplementary file 1 and Supplementary file 2, respectively.
214 215
3 Result
216 217
3.1 Trends in the affected areas of natural disasters from 1988 to 2017
218 219
Figure 2 shows the changes in the areas of the three cereal crops affected by the different natural
220
disasters from 1988 to 2016. The changes in the areas affected by disasters of the three intensity levels
221
showed similar patterns (Figure 2). Droughts and floods were the main natural disasters. For maize,
222
the affected area showed an increase before 2003 and then a decrease after 2003. For rice and wheat, a
223
linear decline was observed for the mild effect category from 1988 to 2016; flat trends were observed
224
before 2000 for the moderate effect and the severe effect, and linear declines were observed in these
225
two categories after 2000. Figure 3 shows the corresponding ratios of disaster-affected areas to the
226
total crop cultivation areas over the past three decades. The results showed a similar pattern to that
227
shown in Figure 2. In short, for the mild effect, the mean affected areas for maize, rice, and wheat
228
accounted for 14.07%, 16.24%, and 14.23% of the total cultivation areas, respectively; for moderate
229
effect, the mean affected areas for maize, rice and wheat accounted for 7.34%, 8.50%, and 7.44% of
230
their cultivation areas, respectively; for the severe effect, the mean affected areas for maize, rice and
231
wheat accounted for 1.75%, 2.04%, and 1.79% of their cultivation areas, respectively. In total, the
232
areas of mild effect, moderate effect, and severe effect accounted for 48.50%, 25.31%, and 6.07% of
233
the cereal cultivation area, respectively (Figure 4). Further, the maximum percentages of cultivation
234
area affected by the mild effect, moderate effect, and severe effect were 77.05%, 42.33%, and 11.89%,
235
respectively. Despite the disadvantages caused by natural disasters, the cereal grain yield still
236
continues to grow (Figure 5). In 2016, the mean grain yields for maize, rice, and wheat were 5971.33,
237
6861.74, and 5327.08 kg/ha, respectively.
238 239 240
Maize
Rice
Wheat
25000 20000 Mild
15000 10000 5000
10000 Moderate
Area (Thousand ha)
0 12500
7500 5000 2500 0 3000
Severe
2000 1000 0 1990
2000
2010
1990
2000
2010
1990
2000
2010
Year
241
Drought
Flood
Hail
LowTemp
Total
242
Figure 2. Trends in the area affected by natural disasters from 1988 to 2016. The smooth lines in each
243
panel represent loss trends.
244
Maize
Rice
Wheat
Mild
0.1 0.0 0.15 0.10
Moderate
0.05 0.00 0.04 0.03
Severe
Ratio of disaster−affected area to total cultivation area
0.2
0.02 0.01 0.00 1990
2000
2010
1990
2000
2010
1990
2000
2010
Year
245
Drought
Flood
Hail
LowTemp
Total
246
Figure 3. Trends in the ratio of the natural disaster-affected area to the total cultivation area for
247
different disaster intensities and different crops from 1988 to 2016.
248 249
0.8 0.6 Mild
0.4 0.2
0.4 0.3
Moderate
Ratio of disaster area
0.0
0.2 0.1 0.0 0.100
Severe
0.075 0.050 0.025 0.000 1990
2000
2010 Year
250
Drought
Flood
Hail
LowTemp
Total
251
Figure 4 Trends in the ratio of the area affected by each natural disaster type to the total cultivation
252
area from 1988 to 2016.
253
7000
6000
Yield (kg/ha)
5000
4000
3000
2000 1990
2000
2010 Year
254 255
Maize
Rice
Wheat
Figure 5. Changes in the yield of rice, wheat, and maize in China from 1988 to 2016.
256 257
3.2 Trends in the affected areas for different natural disasters at the provincial level
258 259
Changes in the area affected by mild (Figure 6), moderate (Figure 7), and severe (Figure 8) natural
260
disasters were observed at the provincial level. In terms of mild natural disasters (Figure 6), for maize,
261
drought was the main disaster and occurred in NE, N, and Inner Mongolia in NW; for rice, drought
262
and flooding were the main disasters impacting the cultivation area in CJ and SE; for wheat, drought
263
was the main impact factor in N. For moderate disasters (Figure 7), a similar pattern was found as that
264
for mild disasters at the provincial level for maize and rice, while the affected area for wheat showed a
265
dramatic decline after 2003. For severe disasters (Figure 8), maize in the regions of N and Inner
266
Mongolia in NW was impacted by drought; the provinces of Jiangxi and Hunan showed the obvious
267
impact of flooding on rice; and wheat in the provinces of Shandong, Henan, and Shanxi was strongly
268
impacted by drought.
269 270
In addition, linear changes in the cereal cultivation areas for each province are shown in Tables 7-9.
271
For maize (Table 7), the areas of mild effects in Jilin, Henan, and Shandong decreased by 41.95, 41.15,
272
and 37.74 thousand ha annually, respectively, while a growth rate of 59.78 thousand ha annually was
273
found in Inner Mongolia. Furthermore, the affected areas in Inner Mongolia increased annually by
274
35.74 and 10.07 thousand ha for the moderate and severe effects, respectively. For rice, the area
275
affected by natural disasters decreased in most provinces except Heilongjiang Province. The increase
276
rates for areas of mild, moderate, and severe effects were 23.34, 14.16, and 1.6 thousand ha annually,
277
respectively. For wheat, the area affected by natural disasters decreased in most provinces except
278
Xinjiang Province, where the increase rates for the areas of mild, moderate, and severe effects were
279
11.72, 10.42, and 1.36 thousand ha annually, respectively. The statistically significant values from the
280
linear analysis are shown in supplementary file 3.
281 282
Flood
Hail
LowTemp
Total
Maize Rice
Province
Drought
Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang
Wheat
1990 2000 2010
1990 2000 2010
1990 2000 2010
1990 2000 2010
1990 2000 2010
Year
Area (10^3 ha)
283 284 285 286
0
500 100015002000
Figure 6. Changes in the area affected by different mild natural disasters for rice, maize, and wheat in each province from 1988 to 2016.
287 288 Flood
Hail
LowTemp
Total
Maize Rice
province
Drought
Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang
Wheat
1990 2000 2010
1990 2000 2010
1990 2000 2010
1990 2000 2010
1990 2000 2010
year
Area (10^3 ha)
289 290
0
500 100015002000
Figure 7 Changes in the area affected by different moderate natural disasters for rice, maize, and
291
wheat in each province from 1988 to 2016. Flood
Hail
LowTemp
Total
Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang
Maize Rice
province
Drought
Wheat
1990 2000 2010
1990 2000 2010
1990 2000 2010
1990 2000 2010
1990 2000 2010
year
Area (10^3 ha)
292 293 294
0
250 500 750 1000
Figure 8 Changes in the area affected by different severe natural disasters for rice, maize, and wheat in each province from 1988 to 2016.
295
296 297
Table 7 Linear changes in the maize cultivation area affected by different natural disasters from 1988 to 2016. Mild Region
Moderate
Severe
Province Drought Flood Hail LowTemp Total Drought Flood Hail LowTemp Total Drought Flood Hail LowTemp Total Heilongjiang 11.66
NE
-1.22
10.33
-2.88 2.95
-0.38
10.58
-0.3
-0.47 0.65
-0.12
-0.14
-15.94 -19.39 -2.43
-5.15
-41.94 -6.39 -12.74 -1.89
-2.89
-25.71 -1.38
-4.22 -0.44
-0.45
-7.25
Liaoning
-3.32
-4.98 -2.4
-1.46
-10.34
0.56
-3.69 -1.15
-0.9
-4.11
1.81
-1.81 -0.13
-0.15
-0.63
Beijing
-2.46
-0.1 -0.52
0.01
-3.07
-1.06
0.04 -0.11
0.01
-1.14
-0.18
-0.01 -0.03
0
-0.26
Tianjin
-2.95
-0.13 -0.54
0.05
-3.55
-1.23
0.07 -0.17
0.01
-1.32
-0.28
-0.04 -0.03
0
-0.39
Hebei
-18.28
0.08 -1.38
1.79
-18.09 -6.95
-1.01 -1.92
1.13
-8.95
-1.12
-0.84 -0.57
0.2
-2.86
Henan
-20.94 -4.02 -0.28
-1.03
-41.15 -13.83 -2.03 -0.42
-0.43
-16.65 -2.62
-0.83 -0.51
-0.14
-6.11
Shandong
-31.05
-4.1 -4.92
0.53
-37.74 -13.97 -3.78 -2.19
0.1
-19.14 -3.08
-1.36 -0.59
0.01
-5.24
Shanxi
1.79
0.52 1.78
3.33
7.28
-0.16
0.13
Shanghai
-0.21
-0.26 -0.09
-0.03
-0.59
-0.06
Jiangsu
-4.36
-4.84 -0.98
-0.51
-10.64
Zhejiang
-0.11
-0.37 -0.12
0.19
Anhui
-2.94
-0.48 -0.22
Hubei
-2.53
1.7 -0.31
Hunan
-0.04
Jiangxi
-0.22
Inner Mongolia
40.5
Jilin
-8.85 4.2
9.31
N
CJ
Shaanxi NW
2.99
-0.06
-0.09 0.24
0.56
0.38
-0.15 -0.04
-0.01
-0.26
-0.01
-0.04 -0.01
0
-0.06
-2.1
-2.02 -0.53
-0.21
-4.83
-0.4
-0.56 -0.09
-0.02
-1.06
0.23
-0.04
-0.22 -0.05
0.06
0.04
-0.03
-0.07 -0.01
0
-0.01
0.18
-3.06
-2.24
-1.37 -0.37
0.05
-3.72
-0.39
-0.24 -0.08
-0.01
-0.62
1.6
0.41
-1.78
0.77 -0.16
0.58
-0.61
-0.45
0.04 -0.06
0.05
-0.49
1.09
2.23
-0.02
0.29
0.61
0.92
0.1
-0.04 0.01
0.1
0.18
-0.13 -0.05
0.02
-0.37
-0.07
-0.09 -0.02
0.01
-0.17
-0.01
-0.06 -0.01
0
-0.08
6.68 8.32
4.39
59.78 25.01
3.06 5.28
2.45
35.74
7.34
1.27
0.57
10.07
-14.98 -1.64 0.73
0.64
-15.39 -7.42
-1.45 0.41
0.17
-8.35
-2.21
-0.23 0.07
0.11
-2.49
0.1
0
1.2
Ningxia
3.51
0.24 0.64
0.92
5.29
1.89
0.12 0.37
0.29
2.65
0.37
0.03 0.14
0.1
0.59
Gansu
9.98
1.83 2.51
4.7
18.87
5.73
1.35 1.62
2.1
10.71
0.73
0.18
0.3
0.25
1.39
Qinghai
0.39
0.1
0.32
0.22
1.03
0.17
0.05 0.23
0.09
0.55
0.01
0.01 0.05
0.01
0.08
Xinjiang
3.27
1.49 5.74
3.36
14.54
2.17
1.07
2.15
10.04
0.21
0.21 1.04
0.29
1.61
Chongqing -11.68 -3.77 -0.97
0.02
-18.2
-5.95
-2.69 -1.16
-0.21
-10.69 -1.26
-0.43 -0.41
-0.03
-2.29
0.31
-20.89 -6.53
-2.45 -1.21
-0.02
-9.59
-1.25
-0.74 -0.27
-0.01
-2.47
0.17
1.62
0.38
2.99
Sichuan SW
1.55
1
1.6
-14.07 -3.94 -3.13
4.7
Guizhou
0.71
-1.15 -0.71
1.49
0.19
2.05
-0.94 -0.57
0.45
0.92
1.8
-0.2
0
Yunnan
10.91
-0.13 1.34
3.54
15.94
7.49
-0.26 0.7
1.29
9.41
2.43
-0.03 0.26
Xizang
-0.18
-0.02 -0.01
-0.01
-0.21
-0.05
-0.01
0
0
-0.07
-0.01
0
0
0
-0.01
Fujian
-0.08
-0.16 -0.01
0.09
0.1
-0.03
-0.07
0
0.04
0.05
-0.01
-0.02
0
0.01
0.01
Guangxi
-4.48
-2.21 -0.55
0.93
-3.63
-2.71
-1.44 -0.36
0.34
-3.34
-0.67
-0.66 -0.09
-0.01
-1.54
Hainan
-0.34
-0.36 -0.27
0
-0.78
-0.05
-0.18 -0.14
0
-0.28
-0.01
-0.05 -0.03
0
-0.04
Guangdong
-0.26
-0.09 -0.14
0.14
1.37
-0.11
-0.11 -0.07
0.04
0.51
-0.02
-0.05 -0.02
0.01
0.11
SE
298 299 300
Table 8. Linear changes in the rice cultivation area affected by different natural disasters from 1988 to 2016. Mild Region
Moderate
Severe
Province Drought Flood Hail LowTemp Total Drought Flood Hail LowTemp Total Drought Flood Hail LowTemp Total
NE
Heilongjiang
15
2.06 3.34
0.21
23.34
9.1
1.72 2.12
0.26
14.16
0.39
0.66 0.46
0.02
1.6
Jilin
-2.53
-3.64 -0.38
-0.97
-7.33
-0.95
-2.4 -0.32
-0.56
-4.58
-0.22
-0.79 -0.08
-0.09
-1.32
Liaoning
-4.37
-1.8 -1.05
-0.59
-7.28
-1.66
-1.32 -0.5
-0.35
-3.51
0.08
-0.61 -0.07
-0.06
-0.82
Beijing
-0.39
-0.08 -0.16
0
-0.63
-0.17
-0.03 -0.07
0
-0.28
-0.03
-0.01 -0.02
0
-0.06
Tianjin
-1.02
-0.15 -0.27
0
-1.44
-0.42
-0.06 -0.12
0
-0.6
-0.09
-0.02 -0.02
0
-0.16
Hebei
-1.99
-0.32 -0.46
-0.02
-2.82
-0.9
-0.22 -0.33
0.01
-1.45
-0.17
-0.08 -0.08
0
-0.37
Henan
-5.07
-0.99 -0.14
-0.25
-10.17 -3.24
-0.5 -0.13
-0.11
-3.94
-0.61
-0.19 -0.12
-0.03
-1.45
Shandong
-1.6
-0.3 -0.29
0
-2.12
-0.74
-0.23 -0.13
0
-1.07
-0.16
-0.08 -0.03
0
-0.28
Shanxi
-0.22
-0.04 -0.02
-0.02
-0.3
-0.11
-0.02 -0.01
-0.01
-0.15
-0.02
-0.01
0
-0.03
Shanghai
-6.23
-7.53 -2.62
-0.95
-17.18 -1.62
-4.52 -1.29
-0.3
-7.66
-0.39
-1.25 -0.28
-0.06
-1.8
Jiangsu
-21.76 -25.47 -4.81
-2.43
-54.16 -10.46 -10.69 -2.65
-1.02
-24.63 -2.02
-2.98 -0.44
-0.12
-5.47
Zhejiang
-15.78 -26.67 -6.52
2.46
-39.64
-15.08 -2.85
0.76
-20.48 -2.09
-4.19 -0.7
0.03
-5.32
Anhui
-21.87 -12.37 -2.73
-0.71
-36.64 -12.63 -12.04 -2.44
-0.21
-26.81 -2.33
-3.14 -0.52
-0.07
-5.69
Hubei
-30.81 -9.58 -3.8
3.49
-40.99 -17.05 -5.38 -1.67
1.08
-23.1
-3.66
-2.09 -0.53
-0.03
-6.84
Hunan
-37.35 -23.22 -3.72
13.74
-49.34 -20.26 -17.55 -2.33
8.22
-31.2
-2.71
-6.76 -0.31
1.42
-8.36
Jiangxi
-53.11 -11.81 -7.33
4.17
-66.19 -19.42 -7.77 -2.9
2.15
-27.18 -3.85
-5.66 -0.73
0.74
-10.07
N
CJ
NW
SW
-6.1
0
Inner Mongolia
0.08
-0.09 0.03
0.02
0.03
0.14
-0.13 0.05
0
0.05
0.11
-0.04 0.01
0.01
0.06
Shaanxi
-2.86
-0.49 -0.06
-0.01
-3.45
-1.43
-0.33 -0.02
-0.02
-1.83
-0.38
-0.08 -0.01
0
-0.49
-0.01 0.03
Ningxia
0.41
0
0.04
0.12
0.56
0.28
0
0.04
-0.01
0.29
0.03
0.01
0.04
Gansu
-0.03
-0.01
0
0.02
-0.02
-0.01
0
0
0.01
0
-0.01
0
0
0
-0.01
Qinghai
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
Xinjiang
0.03
0.05 0.23
0.28
0.72
0.1
0.06 0.33
0.19
0.68
0
0.01 0.08
0.02
0.09
Chongqing
-18.4
-6.32 -1.57
-0.04
-29.06 -9.35
-4.4 -1.8
-0.35
-16.96 -1.98
-0.73 -0.63
-0.05
-3.63
Sichuan
-27.51 -9.13 -6.01
0.08
-42.67 -12.64 -5.25 -2.36
-0.23
-19.5
-2.41
-1.54 -0.52
-0.05
-4.9
Guizhou
-2.41
-2.61 -1.44
0.79
-5.84
0.36
-1.71 -0.95
0.14
-2.23
1.29
-0.4 -0.09
0.11
0.71
Yunnan
6.13
-1.11 0.64
2.29
8.11
4.81
-0.75 0.36
0.8
5.33
1.64
-0.16 0.16
0.26
1.83
Xizang
-0.05
-0.01
0
-0.07
-0.02
0
-0.02
0
0
0
Fujian
-8.96 -19.62 -1.77
0.19
-27.75 -3.43
-9.88 -0.8
-0.25
-13.67 -0.72
-2.54 -0.18
0.11
-3.18
Guangxi
-22.86 -11.52 -2.79
3.48
-24.61 -13.74 -7.16 -1.75
1.28
-18.56 -3.22
-3.04 -0.43
-0.06
-7.34
Hainan
-10.98 -12.25 -8.91
-0.03
-25.11 -1.59
0
-9.74
-0.3
-1.63 -1.06
0
-1.6
Guangdong
-27.8 -21.07 -9.2
-1.18
-43.73 -11.24 -12.37 -4.3
-0.8
-20.99
-2.2
-3.54 -1.01
-0.17
-5.35
0
0
0
0
0
SE
301 302 303
-6.04 -4.75
Table 9. Linear changes in the wheat cultivation area affected by different natural disasters from 1988 to 2016. Mild
Moderate
Severe
Region Provicine Drought Flood Hail LowTemp Total Drought Flood Hail LowTemp Total Drought Flood Hail LowTemp Total Heilongjiang -21.45 -20.14 -1.7 NE
-2.36
-45.65 -10.1
-9.89 -0.67
-1.3
-21.97 -1.92
-2.94 -0.15
-0.23
-5.32
Jilin
-1.32
-0.83 -0.22
-0.22
-2.61
-0.65
-0.52 -0.13
-0.11
-1.48
-0.15
-0.17 -0.03
-0.02
-0.4
Liaoning
-2.37
-1.1
-0.21
-4.02
-1.14
-0.72 -0.23
-0.12
-2.21
-0.24
-0.28 -0.04
-0.02
-0.61
Beijing
-2.22
-0.31 -0.74
0
-3.28
-0.97
-0.1 -0.3
0
-1.37
-0.18
-0.02 -0.08
0
-0.32
Tianjin
-2.75
-0.26 -0.61
0.03
-3.58
-1.14
-0.04 -0.23
0.01
-1.4
-0.26
-0.05 -0.05
0
-0.39
-0.35
N
Hebei
-29.9
0.63
-19.47 -2.25
-1.28 -1.07
0.1
-5.16
-59.22 -12.35 -2.82
-3.23
-115.1 -36.72 -6.11 -2.04
-1.27
-45.94 -6.98
-2.22 -1.37
-0.34
-15.93
-58.12 -11.8 -10.19
-0.24
-78.24 -25.92 -8.34 -4.42
-0.08
-37.94 -5.46
-2.71 -1.13
-0.01
-9.8
Shanxi
-20.08 -4.13 -0.94
-0.25
-25.55 -10.51 -2.05 -0.1
-0.3
-13.08 -2.06
-0.66 -0.08
0.16
-3.03
-1.71
-2.08 -0.72
-0.25
-4.72
-1.23 -0.35
-0.08
-2.09
-0.12
-0.34 -0.08
-0.02
-0.49
Jiangsu
-20.99 -25.64 -4.75
-2.49
-53.7 -10.03 -10.85 -2.62
-1.04
-24.39 -1.94
-3.02 -0.44
-0.12
-5.42
Zhejiang
-2.09
-3.53 -0.84
0.09
-5.98
Anhui
-19.04 -9.41 -2.25
-0.28
Hubei
-15.92
-5.3
-2.03
Hunan
-2.62
Jiangxi
-1.49
-0.44
0
-3
-0.27
-0.54 -0.09
-0.01
-0.75
-29.83 -11.49 -10.1 -2.16
-0.08
-23.27
-2.1
-2.51 -0.46
-0.05
-4.78
1.56
-21.82 -8.77
-2.95 -0.9
0.44
-12.23 -1.87
-1.12 -0.28
-0.04
-3.59
-2.49 -0.36
-0.06
-5.56
-1.41
-1.51 -0.17
-0.02
-3.13
-0.27
-0.46 -0.03
-0.01
-0.79
-0.8
-0.23
-0.09
-2.62
-0.56
-0.48 -0.09
-0.04
-1.18
-0.11
-0.18 -0.02
-0.01
-0.35
-15.38 -4.81
-2.3
-1.5
-24.04
-8.4
-3.59 -0.83
-1.1
-13.95
-1
-1.14 -0.2
-0.1
-2.84
Shaanxi
-32.17 -5.92 -1.27
-0.46
-40.01 -16.12 -3.87 -0.57
-0.4
-21.05 -4.17
-0.92 -0.13
0.01
-5.59
Ningxia
-2.43
-0.43 -0.67
-0.5
-4.08
-0.79
-0.2 -0.25
-0.5
-1.77
-0.29
-0.09 -0.01
-0.06
-0.57
-11.46 -2.96 -1.34
3.07
-13.03 -4.18
-1.06 -0.25
1.28
-4.46
-1.29
-0.48 -0.04
0.21
-1.86
Qinghai
-2.79
-0.57 -0.56
0.68
-3.29
-1.14
-0.1 -0.24
0.27
-1.22
-0.38
-0.03 -0.1
0.04
-0.52
Xinjiang
0.15
1.15
5.05
3.85
11.72
1.15
1.18 5.49
2.52
10.42
-0.11
1.27
0.29
1.36
Chongqing -13.21 -6.73
Gansu
SW
-38.44 -12.69 -2.89 -4.32
Henan
Inner Mongolia
NW
0.68
Shandong
Shanghai
CJ
-3.41 -5.49
-0.81
-1.96 -0.36
0.2
-1.3
-0.58
-23.64 -6.38
-4.19 -1.31
-0.44
-13.01 -1.32
-0.74 -0.46
-0.06
-2.74
Sichuan
-21.64 -8.35
-4.7
-0.26
-35.06 -9.92
-4.65 -1.91
-0.3
-15.92 -1.87
-1.32 -0.42
-0.06
-3.93
Guizhou
-3.88
-3.17
-1.6
-0.15
-8.95
-1.25
-1.86 -0.97
-0.18
-4.32
0.18
-0.46 -0.17
0
-0.56
Yunnan
0.71
-1.61 -0.17
0.53
-0.6
1.3
-0.95 -0.06
0.14
0.4
0.55
-0.22 0.02
0.08
0.36
Xizang
-2.91
-0.36 -0.14
-0.19
-3.62
-0.89
-0.2 -0.09
-0.08
-1.26
-0.18
-0.04 -0.01
0
-0.25
Fujian
-0.75
-1.63 -0.17
-0.16
-2.89
-0.3
-0.84 -0.07
-0.09
-1.41
-0.06
-0.22 -0.02
-0.02
-0.33
Guangxi
-0.25
-0.15 -0.02
0
-0.45
-0.14
-0.09 -0.01
0
-0.25
-0.03
-0.03
0
0
-0.07
Hainan
0
0
0
0
0
0
0
0
0
0
0
0
0
Guangdong
-0.71
-0.43
-0.2
-0.06
-1.46
-0.3
-0.02
-0.67
-0.06
0
-0.16
SE
304 305
0
0
-0.23 -0.1
-0.06 -0.02
306 307
3.3 Agricultural silica loss due to natural disasters
308
Due to the high levels of silica in the main cereal crops, we calculated the loss of silica caused by
309
natural disasters. Figure 9 shows the loss of silica in the grain harvest from the different natural
310
disasters from 1988 to 2016. There was no significant change in the amount of silica lost silica during
311
the entire study period. Rice accounted for the most silica lost due to the disasters. Over the entire
312
study period, for mild disasters, the annual mean silica loss in maize, rice, and wheat was 7.89, 65.07,
313
and 11.25 thousand tons, respectively; for moderate disasters, the annual mean silica loss in maize,
314
rice, and wheat was 11.41, 90.34, and 14.64 thousand tons, respectively; for severe disasters, the
315
annual mean silica loss in maize, rice, and wheat was 4.58, 35.30, and 5.78 thousand tons, respectively.
316
Further, Figure 10 illustrates the loss of silica in the straw harvest due to different natural disasters
317
from 1988 to 2016. In recent years, the silicon loss in maize straw was similar to that in rice straw,
318
while the silica loss in wheat straw showed a decreasing trend after 1997. Finally, the changes in the
319
total silica loss from the different cereal crops are illustrated in Figure 11. Over the entire study period,
320
for mild disasters, the annual mean total silica loss in maize, rice, and wheat was 0.16, 0.44, and 0.09
321
million tons, respectively; for moderate disasters, the annual mean total silica loss in maize, rice, and
322
wheat was 0.24, 0.44, and 0.13 million tons, respectively; for severe disasters, the annual mean total
323
silica loss in maize, rice, and wheat was 0.10, 0.24, and 0.05 million tons, respectively. In addition, the
324
total annual silica loss due to natural disasters is presented in Figure 12. Significant declines (all P <
325
0.05) were observed in the total silica loss from 1988 to 2016. The decrease in silica loss from the
326
grain and straw harvests was 3.15 and 37.17 thousand tons, respectively. Over the entire study period,
327
the total silica loss from the grain and straw harvests was 7.14 and 53.10 million tons, respectively. At
328
the provincial level, the total silica loss caused by natural disasters is shown in Figure 13. For mild
329
disasters, the silica loss caused by drought accounted for more than half of the silica loss from maize,
330
rice, and wheat in 15, 17, and 18 of the 31 provinces, respectively. For moderate disasters, the silica
331
loss from drought accounted for more than half of the silica loss from maize, rice, and wheat in 13, 16,
332
and 14 of the 31 provinces, respectively. For severe disasters, the silica loss from floods accounted for
333
more than half of the silica loss from maize, rice, and wheat in 10, 10, and 12 of the 31 provinces,
334
respectively; and the silica loss from drought accounted for more than half of the silica loss from
335
maize, rice, and wheat in 14, 14, and 10 of the 31 provinces, respectively.
336 337 Mild
Moderate
Severe
1e+05 Drought
1e+04 1e+03 1e+05
Flood
1e+03 10000 3000 1000 300
Hail
1e+05 LowTemp
Silicon loss in grain (ton)
1e+04
1e+04 1e+03 1e+02
Total
1e+05 3e+04 1e+04 3e+03 1990
2000
2010
1990
2000
2010
1990
2000
2010
Year Maize
338
Rice
Wheat
339
Figure 9. Trends in silica loss from the grain harvest in maize, rice, and wheat due to different natural
340
disasters from 1988 to 2016. The shaded regions represent one standard deviation of the silica loss in
341
the grain.
342
Mild
Moderate
Severe
3e+05 1e+05 3e+04 1e+04 3e+03 1e+05
Flood
3e+04
Hail
1e+04 3e+03 1e+05
LowTemp
Silicon loss in straw (ton)
Drought
3e+05 1e+05 3e+04 1e+04 3e+03
1e+04 1e+03 1e+06
Total
1e+05 1e+04
1990
2000
2010
1990
2000
2010
1990
2000
2010
Year Maize
343
Rice
Wheat
344
Figure 10 Trends in silica loss from the straw harvest in maize, rice, and wheat due to different natural
345
disasters from 1988 to 2016. The shaded regions represent one standard deviation of the silica loss in
346
the straw.
347 348 349
Mild
Moderate
Severe
3e+05 1e+05 3e+04 1e+04 3e+03 1e+05
Flood
3e+04
Hail
Total silicon loss (ton)
Drought
3e+05 1e+05 3e+04 1e+04 3e+03
1e+04 3e+03
LowTemp
1e+05 1e+04 1e+03
Total
1e+06 3e+05 1e+05 3e+04 1990
2000
2010
1990
2000
2010
1990
2000
2010
Year Maize
350
Rice
Wheat
351
Figure 11 Trends in silica loss from agricultural production in maize, rice, and wheat due to different
352
natural disasters from 1988 to 2016. The shaded regions represent one standard deviation of the silica
353
loss in China’s agriculture.
354
Silica loss (millioin tons)
3.0
1.0
0.3
1990
2000
2010 Year
Grain
Straw
Total
355 356
Figure 12. Trends in silica loss caused by natural disasters in China’s agricultural areas from 1988 to
357
2016. Lines represent the fitted linear regression trends.
358 359
Moderate
Severe
Maize Rice
Provicne
Mild
Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang Guangdong Hainan Guangxi Fujian Xizang Yunnan Guizhou Sichuan Chongqing Xinjiang Qinghai Gansu Ningxia Shaanxi Inner Mongolia Jiangxi Hunan Hubei Anhui Zhejiang Jiangsu Shanghai Shanxi Shandong Henan Hebei Tianjin Beijing Liaoning Jilin Heilongjiang
Wheat
0
25
50
75
100 0
25
50
75
100 0
25
50
75
100
Relative silica loss (%)
360 361
Flood
Hail
LowTemp
Drought
Figure 13 Cumulative relative silica loss due to different natural disasters from 1988 to 2016 for each
362
province. The vertical line represents the 50% contribution to the total loss. Due to the high silica
363
losses from drought and flood, if the bar for drought or flood overlaps with the vertical lines, more
364
than 50% of the silica loss was caused by that type of disaster.
365
366
Discussion
367 368
In this study, we attempted to link natural disasters and the silicon biogeochemical cycle in
369
agricultural ecosystems using China as an example. Following the questions proposed, we found that
370
1) the area affected by natural disasters showed significant declining trends after 2000; 2) the changes
371
in the area affected by individual types of natural disasters varied at the provincial level; and 3) from
372
1988 to 2016, the total silica loss from the grain and straw harvest due to natural disasters was 7.14
373
and 53.10 million tons, respectively.
374 375
To address the connection between natural disasters and biogeochemical cycles, we first analysed the
376
frequency and intensity of natural disasters affecting different cereal crops, because cereal crops
377
accounted for 92.7% of the total crop production in 2016 and contain high levels of silica (Li et al.,
378
2013; Song et al., 2014c; Vandevenne et al., 2012). However, few studies have focused on the
379
changes in the area of main crop cultivation regions that is affected by natural disasters due to data
380
limitations. To address this, we estimated the affected area for the different crops using the cultivation
381
ratio, which mirrors the relative changes for the different crops. This method is acceptable for use
382
because the changes in the yields of the cereal crops showed similar trends over the past years (Figure
383
5). Further, we proposed a proxy, the maximum index, for the ratio of the affected area to the total
384
cultivation area, because experiencing the maximum impact of a natural disaster can challenge and
385
improve the ability of governments to face these disasters. Here, we calculated that the maximum
386
percentage of the cultivation area affected by mild, moderate, and severe natural disasters was 77.05%,
387
42.33%, and 11.89%, respectively. All of these maximum effects occurred at the beginning of the
388
2000s; after that, the area affected by natural disasters declined. This implied that the experience of
389
overcoming natural disasters in China can be promulgated to developing agricultural countries.
390 391
Although previous studies have fully investigated the characteristics of individual natural disasters in
392
China (Chen and Yang, 2013; Hao et al., 2012; He et al., 2013; Li et al., 2012), studies at the national
393
scale could obscure the detailed impacts of natural disasters at smaller scales, e.g., the provincial scale.
394
Our study showed that changes in the area affected by individual natural disasters varied by province
395
over the past three decades. Several natural factors, e.g., the vast geographic regions and their
396
ecological characteristics, could explain these variations. Although the quantitative impacts (linear or
397
nonlinear trends) of different disasters on rice and wheat production have been described using spatial
398
and temporal analysis (Chen et al., 2018; Shi and Tao, 2014; Wang et al., 2016; Zhang et al., 2018;
399
Zhang et al., 2014a; Zhang et al., 2014b; Zhang et al., 2014c), we performed a comprehensive analysis
400
of the impacts of natural disasters on different crops. Three provinces, Inner Mongolia, Heilongjiang,
401
and Xinjiang, are notable because of the increasing trends in the yield of their dominant crops.
402 403
Our study evaluated silica loss due to natural disasters in China over the past three decades. Due to the
404
high silica content in cereal straw, the total silica loss from straw was 7.5 times that from grain,
405
indicating the importance of straw in the silicon cycle. From 1988 to 2016, the total silica loss from
406
the grain and straw harvest in China was 7.14 and 53.10 million tons, respectively. The annual global
407
agricultural silica harvest is still unclear. Matichenkov and Bocharnikova 2001 (Matichenkov and
408
Bocharnikova, 2001) estimated that approximately 220 million tons of silica are produced annually
409
from agriculture, while Carey and Fulweiler (2012) (Carey and Fulweiler, 2012) calculated that the
410
annual silica production was approximately 52.8 million tons from four main crops (maize, rice, wheat,
411
and sugarcane). According to a similar method used in a later study, the silica loss from natural
412
disasters in China’s agriculture accounted for 3.93% of the world’s silica harvest. Silica loss has a
413
dual nature; the loss increases the soil silicon supply but also decreases the silica sink capability of the
414
agricultural system (Vandevenne et al., 2012). Furthermore, silica loss from drought accounted for
415
more than half of the total silica loss found in more than half of the provinces in China. Previous
416
studies have proven that silicon fertilizer applications can alleviate drought stress (Gong et al., 2005;
417
Gong et al., 2003; Zhu and Gong, 2014). Further, this study implies that drought prevention will be
418
beneficial for increasing the silica sink and thus potentially improving the carbon sink (Song et al.,
419
2014a; Song et al., 2014b).
420 421
There were several limitations in this study. The first one is the model parameters used in calculating
422
the silicon loss due to natural disasters. In this study, regional parameters (grain to straw ratio, straw
423
returning and burning rate) were used rather than the province-level data due to the lack of observed
424
data, and the silicon contents in grain and straw were assessed using average data from across the
425
entire study area. Therefore, key parameters at the provincial level are needed for a more precise
426
analysis in the future. The second limitation is the specific affected area for each individual crop,
427
because there were no detailed data on the affected areas of maize, rice, and wheat. In this study, we
428
derived the affected area for each crop by assuming the ratio of individual cultivation to the total
429
cultivation area. Therefore, a particular dataset for the specific affected area for each crop must be
430
compiled in the future. The third limitation is the silica input from applied fertilizers, especially the
431
organic fertilizer produced from the straw silage Due to the limitation of available dataset observed for
432
the utilization chain of straw in China’s agriculture, precise tracking for the straw utilization should be
433
carried out in future.
434 435 436
437
Conclusion
438
Our work shows that the effects of natural disasters on China’s agriculture lessened significantly after
439
2000 but showed various change patterns at the provincial level. Further, this study estimated that
440
from 1988 to 2016, the total silica loss due to natural disasters from the grain and straw harvest was
441
7.14 and 53.10 million tons, respectively. Although we made the connection between natural disasters
442
and the silicon biogeochemical cycle in this study, moving forward, against the backdrop of global
443
warming, we must explicitly estimate the changes in silica pump and the contribution of silica to the
444
agricultural effects of natural disasters on the carbon budget.
445 446
Acknowledgements
447 448
This study was supported by the National Key Research and Development Program of China (Grant
449
No. 2016YFA0602503), the National Natural Science Foundation of China (Grant Nos. 41701099,
450
2019J1648; 2018-S-110), and the Open Project Program of the Research Center of Data Science,
451
Technology and Applications, Minjiang University, China (No. MJXY-KF-2019002).
452 453
454 455 456
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Highlights Cultivation area affected by natural disasters declined significantly after 2000 in China.
Changes in affected areas of natural disasters varied at provincial level in China from 1988 to 2016.
Annual silica loss due to natural disasters from grain and straw harvest was 0.24 and 1.83 million tons, respectively.
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.