Study on the Contribution of Land Use and Climate Change to Available Water Resources in Basins Based on Vector Autoregression (VAR) Model
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Calculation of AWRs in the Basin
2.3. Construction Steps in VAR Model between AWRs and LU and Precipitation in the Basin
2.4. Analysis of VAR Model between AWRs and LU and Precipitation in the Basin
2.5. Error Correction Model Analysis
3. Results
3.1. Temporal Variation in AWRs and PREP in YRB
3.2. Establishment of VAR Model
3.3. VAR Analysis Results
4. Discussion
5. Conclusions
- (1)
- Overall, the AWRs in the YRB showed a downward trend, and the time series of AWRs and the area of AD, WD, GD, CD, and PREP were stable after logarithmic and differential processing. The Johansen cointegration test was used to determine that there was a long-term stable relationship between the area of different land types, annual PREP, and AWRs in the basin, indicating that the constructed VAR model was feasible.
- (2)
- There was a lag in the response of AWRs to changes in LU and PREP in the YRB in the current year, which occurred in the next year. The impacts of different land types on AWRs in the YRB were different. Meanwhile, the same land type had different effects on AWRs in different periods in the YRB. In the long run, the contribution degree of each influencing factor to changes in AWRs was 23.76% (AD), 6.09% (PREP), 4.56% (CD), 4.40% (WD), and 4.34% (GD), which lay the foundation for land planning in the YRB.
- (3)
- The framework proposed in this study quantified AWRs in the YRB and analyzed the contribution rates of its influencing factors, indicating that human activities and climate change have different effects on the short-term and long-term effects of AWRs in the YRB. These research ideas and methods can provide new ideas for similar research in other river basins and water resource allocation and LU planning.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Land Use Type | Coverage (%) | Dynamic Attitude (%) | |||
---|---|---|---|---|---|
2001 | 2010 | 2019 | 2001–2010 | 2010–2019 | |
Agricultural land | 46.82 | 44.70 | 42.61 | −2.12 | −2.10 |
Woodland | 40.92 | 42.30 | 45.71 | 1.38 | 3.41 |
Grassland | 7.62 | 6.85 | 4.09 | −0.77 | −2.76 |
Water and wetland | 0.37 | 0.49 | 0.52 | 0.11 | 0.03 |
Construction land | 4.27 | 5.66 | 7.08 | 1.39 | 1.41 |
Unused land | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 |
Total | 100.00 | 100.00 | 100.00 |
Variable | ADF Test Statistic | p Value | Critical Values at Different Significance Levels | Conclusion | ||
---|---|---|---|---|---|---|
1% | 5% | 10% | ||||
LNAWR | −3.297 | 0.0667 | −4.380 | −3.600 | −3.240 | Unstable |
D (LNAWR) | −4.991 | 0.0000 | −3.750 | −3.000 | −2.630 | Stable |
LNAD | −2.253 | 0.4600 | −4.380 | −3.600 | −3.240 | Unstable |
D (LNAD) | −3.692 | 0.0042 | −3.750 | −3.000 | −2.630 | Stable |
LNWD | 0.388 | 0.9966 | −4.380 | −3.600 | −3.240 | Unstable |
D (LNWD) | −2.207 | 0.2036 | −3.750 | −3.000 | −2.630 | Unstable |
DD (LNWD) | −7.858 | 0.0000 | −3.750 | −3.000 | −2.630 | Stable |
LNGD | 1.235 | 1.0000 | −4.380 | −3.600 | −3.240 | Unstable |
D (LNGD) | −0.447 | 0.9020 | −3.750 | −3.000 | −2.630 | Unstable |
DD (LNGD) | −3.382 | 0.0116 | −3.750 | −3.000 | −2.630 | Stable |
LNCD | 0.218 | 0.9959 | −4.380 | −3.600 | −3.240 | Unstable |
D (LNCD) | −2.422 | 0.1356 | −3.750 | −3.000 | −2.630 | Unstable |
DD (LNCD) | −5.872 | 0.0000 | −3.750 | −3.000 | −2.630 | Stable |
LNPREP | −3.915 | 0.0019 | −3.750 | −3.000 | −2.630 | Stable |
Trace Test | ||||
---|---|---|---|---|
H0: rank = r | eigenvalue | Trace statistic | Critical values at 5% | p value |
None * | 0.9410 | 64.8863 | 63.8761 | 0.0410 |
At most 1 | 0.5763 | 22.4339 | 42.9153 | 0.8981 |
At most 2 | 0.3327 | 9.5539 | 25.8721 | 0.9426 |
Max-Eigenvalue Test | ||||
H0: rank = r | eigenvalue | Max-Eigen statistic | Critical values at 5% | p value |
None * | 0.9409 | 42.4523 | 32.1183 | 0.0019 |
At most 1 | 0.5762 | 12.8799 | 25.8232 | 0.8127 |
At most 2 | 0.3326 | 6.0675 | 19.3870 | 0.9529 |
Lag | LogL | LR | FPE | AIC | SC | HQ |
---|---|---|---|---|---|---|
0 | −191.8878 | NA | 191.7975 | 19.7500 | 17.3094 | 18.3107 |
1 | −186.9326 | 28.6519 | 698.3145 * | 27.0577 * | 27.8129 * | 27.0496 * |
2 | −174.1036 | 11.9737 | 1652.9160 | 27.4804 | 28.9909 | 27.4644 |
Period | S.E. | DLNAWR | DLNAD | DDLNWD | DDLNGD | DDLNCD | LNPREP |
---|---|---|---|---|---|---|---|
1 | 0.4230 | 100.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 |
2 | 0.5250 | 67.8792 | 20.6738 | 3.8886 | 3.7686 | 1.4782 | 2.3114 |
3 | 0.5684 | 58.4357 | 23.4246 | 3.4198 | 4.4665 | 4.5407 | 5.7124 |
4 | 0.5733 | 57.7600 | 23.1236 | 4.1345 | 4.3900 | 4.5223 | 6.0693 |
5 | 0.5756 | 57.3152 | 23.4113 | 4.3887 | 4.3555 | 4.5056 | 6.0234 |
6 | 0.5771 | 57.0252 | 23.7692 | 4.3685 | 4.3327 | 4.4863 | 6.0179 |
7 | 0.5776 | 56.9308 | 23.7429 | 4.3916 | 4.3364 | 4.5243 | 6.0739 |
8 | 0.5778 | 56.9007 | 23.7303 | 4.4027 | 4.3401 | 4.5433 | 6.0827 |
9 | 0.5779 | 56.8695 | 23.7605 | 4.4007 | 4.3409 | 4.5468 | 6.0813 |
10 | 0.5780 | 56.8509 | 23.7596 | 4.4008 | 4.3433 | 4.5559 | 6.0892 |
Variable | DLNAD | DDLNWD | DDLNGD | DDLNCD | LNPREP | Constant |
---|---|---|---|---|---|---|
Test result | 550.2299 ** | −2041.7050 *** | −264.5290 *** | −468.0315 *** | 22.7362 *** | −145.7459 *** |
(224.5070) | (189.0030) | (27.4488) | (49.2207) | (3.7975) | ||
[2.4508] | [−10.8025] | [−9.6372] | [−9.5088] | [5.9871] |
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Jiang, M.; Wu, Z.; Guo, X.; Wang, H.; Zhou, Y. Study on the Contribution of Land Use and Climate Change to Available Water Resources in Basins Based on Vector Autoregression (VAR) Model. Water 2023, 15, 2130. https://doi.org/10.3390/w15112130
Jiang M, Wu Z, Guo X, Wang H, Zhou Y. Study on the Contribution of Land Use and Climate Change to Available Water Resources in Basins Based on Vector Autoregression (VAR) Model. Water. 2023; 15(11):2130. https://doi.org/10.3390/w15112130
Chicago/Turabian StyleJiang, Mengmeng, Zening Wu, Xi Guo, Huiliang Wang, and Yihong Zhou. 2023. "Study on the Contribution of Land Use and Climate Change to Available Water Resources in Basins Based on Vector Autoregression (VAR) Model" Water 15, no. 11: 2130. https://doi.org/10.3390/w15112130
APA StyleJiang, M., Wu, Z., Guo, X., Wang, H., & Zhou, Y. (2023). Study on the Contribution of Land Use and Climate Change to Available Water Resources in Basins Based on Vector Autoregression (VAR) Model. Water, 15(11), 2130. https://doi.org/10.3390/w15112130