Does Agricultural Credit Mitigate the Effect of Climate Change on Cereal Production? Evidence from Sichuan Province, China
Abstract
:1. Introduction
- Does the increasing global warming adversely affect cereal production in the context of Sichuan province, China?
- How does agricultural credit mitigate effects of changing climate on cereal production in the context of Sichuan province, China?
- Does the mechanical farming rate improve cereal production in the context of Sichuan province, China?
2. Literature Review
2.1. Relevant Research on the Impact of Climate Change on Cereal Production
2.2. Relevant Research on the Impact of Agricultural Credit on Cereal Production
3. Data and Methods
3.1. Data Sources
3.2. Variable Setting
3.3. Methods
4. Results and Discussions
4.1. Descriptive Statistics
4.2. Unit Root Inspection
4.3. Cointegration Test
4.4. ARDL Long-Term and Short-Term Analysis
4.5. Diagnostic Test
5. Conclusions and Policy Implications
- The impact of climate change on cereal production in Sichuan province is very significant in the long- and short run. Specifically, temperature has a significantly negative impact on cereal production in the short term. In the long term, the impact of temperature on cereal production is negative, but not significant. The reason may be that farmers have adopted new equipment and modern agricultural technologies through obtaining agricultural credit, which makes the negative impact of temperature on cereal production diluted.
- Rainfall has a significantly positive impact on cereal production in the long- and short-run, and the long-run effect is more significant than the short-term effect, which indicates that the current drought risk response in Sichuan province is not ideal, and the impact of weather risk on agricultural production needs to be further controlled in the future.
- Agricultural credit has well hedged the adverse impact of climate change on cereal production in Sichuan province. Specifically, in the long run, agricultural credit has a significantly positive impact on cereal production, and in the short run, agricultural credit also positively promotes cereal production. On the whole, the long-run effect is greater than the short-run effect, as it shows that the long-run credit that may be used for the purchase of agricultural machinery and land consolidation has reduced the adverse effects of climate. Therefore, agricultural credit is a powerful tool to deal with the adverse effect of climate change on agricultural production, and the government should encourage the supply of agricultural credit, especially the long-term ones that may be used for technology advances to mitigate the effect of climate change.
- Mechanical farming rate represents the degree of agricultural technology progress, and it also positively promotes cereal production in Sichuan province in the long- and short term. Therefore, the above conclusions tell us that we should continue to increase the popularization of agricultural technology and strengthen the publicity and popularization of agricultural machinery.
- Agricultural labor force has a significantly positive impacts on cereal production in the long- and short run, and the short-run effect is stronger than the long-run effect. Therefore, relevant departments should create corresponding policies to further prevent the loss of agricultural labor force, so as to stabilize and promote cereal production in Sichuan province.
- Farming size is positively but not significantly related to the cereal production in the long run, implying that farmers can slightly achieve economy of scale in the long run. However, farming size is significantly and negatively related to the cereal production in the short run, which need to be further analyzed in the future.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Definitions | Data Sources |
---|---|---|
CP | Cereal production Cereal production per unit area = total cereal production/cereal sowing area | Sichuan Statistical Yearbook |
CR | Agricultural credit Before 2008, it was the agricultural credit of Sichuan province, and after 2008, it was the agricultural, forestry, animal husbandry and fishery credit of Sichuan province | China Financial Yearbook, China rural financial service report, Wind Database |
TEM | Temperature Select the monthly temperature data from April to July of 40 weather stations in Sichuan province from 1978 to 2018, and calculate the average to obtain the annual average temperature | Monthly dataset of surface climate data in China |
RF | Rainfall Select the monthly rainfall data from April to July of 40 weather stations in Sichuan province from 1978 to 2018, and add the total to obtain the annual cumulative rainfall | Monthly dataset of surface climate data in China |
LAB | Agricultural labor force Select the number of employed persons in agriculture, forestry, animal husbandry and fishery in Sichuan province from 1978 to 2018 | Sichuan Statistical Yearbook |
MFR | Mechanical farming rate Mechanical farming rate = acreage under mechanized farming/total cultivated area | China Rural Statistical Yearbook |
FS | Farming size Refers to the cultivated land area in Sichuan province, with a period from 1978 to 2018 | Sichuan Statistical Yearbook |
LNCP | LNCR | LNTEM | LNRF | LNLAB | LNMFR | LNFS | |
---|---|---|---|---|---|---|---|
Mean | 1.9544 | 5.5254 | 2.7818 | 6.6973 | 7.8314 | −1.4349 | 6.1400 |
Median | 2.0136 | 5.8775 | 2.7788 | 6.7164 | 7.8778 | −1.6584 | 6.1299 |
Maximum | 2.0755 | 7.5604 | 2.8332 | 6.8512 | 8.0710 | −0.2346 | 6.5126 |
Minimum | 1.5661 | 2.3124 | 2.7344 | 6.4974 | 7.4687 | −2.2160 | 5.9671 |
Std. Dev. | 0.1286 | 1.5451 | 0.0277 | 0.0765 | 0.1791 | 0.6612 | 0.1599 |
Skewness | −1.5450 | −0.4814 | 0.1713 | −0.8053 | −0.5762 | 0.6221 | 1.2941 |
Kurtosis | 4.6852 | 2.1997 | 1.8970 | 3.3726 | 2.0963 | 1.9341 | 4.0605 |
OBS | 41 | 41 | 41 | 41 | 41 | 41 | 41 |
Intercept and Trend | Intercept | |||
---|---|---|---|---|
Level | 1st Diff | Level | 1st Diff | |
Augmented Dickey-Fuller (ADF) | ||||
LNCP | −3.0484 | −6.9796 *** | −3.4001 | −6.5797 *** |
LNCR | −2.4442 | −5.3702 *** | −2.3152 | −5.0026 *** |
LNTEM | −5.6681 *** | −7.3661 *** | −0.1588 | −7.3580 *** |
LNRF | −5.5349 *** | −5.6426 *** | −5.5894 *** | −5.6191 *** |
LNMFR | −3.1235 | −6.4317 *** | 1.2928 | −5.3968 *** |
LNLAB | −2.9892 | −4.3390 *** | 0.5671 | −2.0924 |
LNFS | −0.9339 | −6.3017 *** | −0.8768 | −6.0483 *** |
Phillips and Peron (PP) | ||||
LNCP | −3.6220 ** | −7.3022 *** | −6.8658 *** | −6.6558 *** |
LNCR | −2.0468 | −5.3526 *** | −2.2571 | −5.0026 *** |
LNTEM | −6.6494 *** | −23.9532 *** | −2.7825 * | −21.1014 *** |
LNRF | −5.5452 *** | −27.3467 *** | −5.6008 *** | −21.7643 *** |
LNMFR | −3.3151 * | −6.4774 *** | 0.8976 | −5.5859 *** |
LNLAB | −2.8409 | −4.4958 *** | 1.0170 | −2.5621 |
LNFS | −0.9339 | −6.3428 *** | −1.0278 | −6.0483 *** |
Bounds Critical Value | F-Statistic Value | ||
---|---|---|---|
Significance levels | Lower Bound I(0) | Upper Bound I(1) | |
10% | 1.99 | 2.94 | |
5% | 2.27 | 3.28 | 5.33 |
2.5% | 2.55 | 3.61 | |
1% | 2.88 | 3.99 |
Variables | Coefficient | Std. Error | t-Statistic | Prob. |
---|---|---|---|---|
Long-Run Analysis | ||||
LNCR | 0.107099 *** | 0.017418 | 6.148641 | 0.0000 |
LNTEM | −0.679704 | 0.549725 | −1.236444 | 0.2259 |
LNRF | 0.342674 *** | 0.119907 | 2.857838 | 0.0077 |
LNMFR | 0.059265 | 0.078891 | 0.751227 | 0.4584 |
LNLAB | 0.522860 ** | 0.215313 | 2.428378 | 0.0214 |
LNFS | 0.037835 | 0.062508 | 0.605292 | 0.5495 |
Short-Run Analysis | ||||
D(LNCP(−1)) | 0.225356 | 0.133492 | 1.688157 | 0.1018 |
D(LNTEM) | −0.652947 *** | 0.198015 | −3.297469 | 0.0025 |
D(LNRF) | 0.201094 *** | 0.069350 | 3.306751 | 0.0069 |
D(LNLAB) | 0.678963 ** | 0.306320 | 2.216515 | 0.0344 |
D(LNCR) | 0.044181 | 0.031626 | 1.396990 | 0.1727 |
D(LNMFR) | 0.089340 ** | 0.040720 | 2.194013 | 0.0361 |
D(LNFS) | −0.078594 ** | 0.036039 | −2.180789 | 0.0372 |
ECM(−1) | −0.952772 *** | 0.274494 | −3.471007 | 0.0016 |
C | 0.007154 | 0.005319 | 1.345012 | 0.1887 |
R squared | 0.590900 | Mean dependent var | 0.011692 | |
Adj R squared | 0.481806 | S.D. dependent var | 0.046976 | |
F statistic | 5.416458 | Akaike info criterion | −3.736596 | |
Prob. (F statistic) | 0.000289 | Schwarz criterion | −3.352697 | |
Hannan–Quinn criter. | −3.598856 | Durbin–Watson stat | 2.067782 |
F-statistic | 0.335978 | Prob. F (2,17) | 0.7175 |
Obs *R-squared | 0.937441 | Prob. Chi-Square (2) | 0.6258 |
F-statistic | 2.519543 | Prob. F (1,37) | 0.1210 |
Obs *R-squared | 2.486420 | Prob. Chi-Square (1) | 0.1148 |
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He, W.; Chen, W.; Chandio, A.A.; Zhang, B.; Jiang, Y. Does Agricultural Credit Mitigate the Effect of Climate Change on Cereal Production? Evidence from Sichuan Province, China. Atmosphere 2022, 13, 336. https://doi.org/10.3390/atmos13020336
He W, Chen W, Chandio AA, Zhang B, Jiang Y. Does Agricultural Credit Mitigate the Effect of Climate Change on Cereal Production? Evidence from Sichuan Province, China. Atmosphere. 2022; 13(2):336. https://doi.org/10.3390/atmos13020336
Chicago/Turabian StyleHe, Wensong, Wei Chen, Abbas Ali Chandio, Bangzheng Zhang, and Yuansheng Jiang. 2022. "Does Agricultural Credit Mitigate the Effect of Climate Change on Cereal Production? Evidence from Sichuan Province, China" Atmosphere 13, no. 2: 336. https://doi.org/10.3390/atmos13020336
APA StyleHe, W., Chen, W., Chandio, A. A., Zhang, B., & Jiang, Y. (2022). Does Agricultural Credit Mitigate the Effect of Climate Change on Cereal Production? Evidence from Sichuan Province, China. Atmosphere, 13(2), 336. https://doi.org/10.3390/atmos13020336