Spatio-Temporal Matching and Nexus of Water–Energy–Food in the Yellow River Basin over the Last Two Decades
Abstract
:1. Introduction
2. Study Area and Dataset
2.1. Study Area
2.2. Dataset
3. Methodology
3.1. Standard Deviation Ellipse and Resource Center of Gravity Transfer
3.2. Lorentz Curve and Gini Coefficient
3.3. Resource Matching Coefficient Method
3.4. Multivariate Joint Probability Distribution Based on Copula Function
- Step 1: Construction of marginal distribution.
- Step 2: Fitting of 2-Copulas and 3-Copulas.
4. Results
4.1. Resource Distribution and Transfer Direction of WEF
4.2. Temporal Variation of Resource Balance Level in WEF Systems of the Yellow River Basin
4.3. Spatial Matching Pattern in Industrial Water–Energy and Agricultural Water–Farmland Resources
4.4. Nexus of WEF System
5. Discussion
5.1. Comparison of the WEF Matching Pattern among the Yellow River Basin and Other Regions
5.2. Discussion on Security Risk and Adaptive Development Strategy of the WEF System
5.3. Uncertainty Analysis and Limitations
6. Conclusions
- (1)
- The areas rich in water resources, farmland, and energy in the Yellow River Basin are not consistent; they are concentrated in the upper reaches, middle and upper reaches, and middle and lower reaches, respectively. In addition, the transfer directions were shifted to the northwest, northeast, and west, respectively. That is, the distribution of water resources, farmland, and energy are uneven themselves, and the evolution directions are also different.
- (2)
- The annual average Gini coefficient of industrial water–energy is about 0.728, showing a decreasing trend, which demonstrates that the gap has reduced in sub-region recent years. The average Gini coefficient of agricultural water–farmland is about 0.688, showing an increasing trend, which means the gap in different sub-regions has widened slightly.
- (3)
- Spatially, the matching degree of water and energy in the upper reaches is good, while that in the middle reaches is poor. The matching degree of each province is reduced. For the matching between water and farmland, the source area of the Yellow River has abundant water resources and less farmland, resulting in the highest matching degree. In addition to the poor matching degree between the Ningmeng Irrigation Area and the downstream, the matching degree in most areas of the source area and the middle reaches is improving.
- (4)
- Eight kinds of marginal distribution, five kinds of 2-Copulas, and three kinds of 3-Copulas were used to establish the joint distribution in order to simulate the nexus of the WEF system in the Yellow River Basin. The t Copula function can describe the nexus of the WEF system in the Yellow River Basin tested by statistical methods. The correlation and nexus among the system variables are described in detail through the joint distribution function, which can reflect the specific structure and function of the nexus in the WEF system.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Dimension | Copula | Distribution Function | Parameter |
---|---|---|---|
Two variables | Gaussian | ||
t Copula | |||
Clayton | |||
Frank | |||
Gumble Hougaard | |||
Three variables | Gaussian | ||
t Copula | |||
Gumble Hougaard |
Type | W–E | W–F | E–F | ||||||
---|---|---|---|---|---|---|---|---|---|
Parameter | AIC | RMSE | Parameter | AIC | RMSE | Parameter | AIC | RMSE | |
Gaussian | ρ = 0.460 | −318.16 | 0.022 | ρ = 0.431 | −275.97 | 0.037 | ρ = 0.947 | −307.10 | 0.025 |
t | ρ = 0.510 λ = 1.210 | −314.72 | 0.023 | ρ = 0.530 λ = 1.00 | −275.02 | 0.037 | ρ = 0.970 λ = 3.670 | −333.22 | 0.018 |
Clayton | θ = 1.448 | −340.04 | 0.017 | θ = 1.607 | −292.12 | 0.030 | θ = 6.541 | −299.28 | 0.028 |
Frank | θ = 4.139 | −310.29 | 0.024 | θ = 4.211 | −273.42 | 0.038 | θ = 25.66 | −350.66 | 0.015 |
Gumbel | θ = 1.859 | −288.62 | 0.031 | θ = 1.852 | −257.05 | 0.046 | θ = 7.722 | −336.08 | 0.018 |
Type | AIC | RMSE | Parameter |
---|---|---|---|
Gaussian Copula | −285.18 | 0.03 | ρ = [1,0.46,0.43;0.46,1,0.95;0.43,0.95,1] |
t Copula | −286.29 | 0.03 | ρ = [1,0.57,0.56;0.57,1,0.97;0.56,0.97,1] λ = 1.67 |
Gumbel-Hougaard Copula | −89.79 | 0.34 | θ = 5.77 |
Gn | Yellow River Basin | China | Asia | World | China Background |
---|---|---|---|---|---|
Water-Energy | 0.728 | 0.85–0.89 | / | 0.40 | / |
Water-Food | 0.688 | 0.566 | 0.550 | 0.586 | 0.712 |
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Wang, J.; Bao, Z.; Zhang, J.; Wang, G.; Liu, C.; Wu, H.; Yang, Y. Spatio-Temporal Matching and Nexus of Water–Energy–Food in the Yellow River Basin over the Last Two Decades. Water 2022, 14, 1859. https://doi.org/10.3390/w14121859
Wang J, Bao Z, Zhang J, Wang G, Liu C, Wu H, Yang Y. Spatio-Temporal Matching and Nexus of Water–Energy–Food in the Yellow River Basin over the Last Two Decades. Water. 2022; 14(12):1859. https://doi.org/10.3390/w14121859
Chicago/Turabian StyleWang, Jie, Zhenxin Bao, Jianyun Zhang, Guoqing Wang, Cuishan Liu, Houfa Wu, and Yanqing Yang. 2022. "Spatio-Temporal Matching and Nexus of Water–Energy–Food in the Yellow River Basin over the Last Two Decades" Water 14, no. 12: 1859. https://doi.org/10.3390/w14121859
APA StyleWang, J., Bao, Z., Zhang, J., Wang, G., Liu, C., Wu, H., & Yang, Y. (2022). Spatio-Temporal Matching and Nexus of Water–Energy–Food in the Yellow River Basin over the Last Two Decades. Water, 14(12), 1859. https://doi.org/10.3390/w14121859