Study on the Decoupling Relationship and Rebound Effect between Agricultural Economic Growth and Water Footprint: A Case of Yangling Agricultural Demonstration Zone, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Agricultural Blue and Green Water Footprint
2.2. Agricultural Grey Water Footprint
2.3. Tapio Decoupling Model
2.4. Derivation Process for Complete Decomposition Model without Residuals
2.5. Study Area
2.6. Data Sources
3. Results
3.1. Overall Description of E and WF
3.2. Analysis of the Decoupling Relationship between E and WF
3.3. Analysis of the Rebound Effect of the Water Footprint
4. Discussion and Conclusions
4.1. Conclusions
- (1)
- In the Yangling Demonstration Zone, agriculture from 1999 to 2019 demonstrated real GDP growth at an average annual rate of 26.34%, with the blue and green and grey water footprints showing an average annual growth of 2.12% and 5.09%, respectively. The economic growth and the positive correlation of water resources and water environment, with a negative correlation in the Yangling Demonstration Zone at the same time, suggests the low water, high emissions, and high pollution of the extensive economic development mode.
- (2)
- Through the use of the topic decoupling model, it can be seen that the economic growth and blue and green water footprint of the Yangling Demonstration Area from 1999 to 2019 presented weak decoupling and strong decoupling, respectively, indicating that the economic growth was better without the dependence on water resources. Relative to water resource investment, economic growth, and the decoupling degree of the grey water footprint were lower than the economic growth and the decoupling degree of the blue and green water footprint, indicating that the economic developments to strengthen the water environmental pressure have a more obvious role in promoting. At the same time, the Yangling Demonstration Zone showed that the current focus on research into the water input and output of the neglected environmental pollution source management governance mechanism is not conducive to reducing the pressure on the water environment.
- (3)
- By using the complete decomposition model, an empirical analysis of the blue and green and grey water footprints in the Yangling Demonstration Area showed that the water resource environmental pressure in this area is subject to the expansion of the agricultural economic scale, the promoting effect of the agricultural population, and the inhibiting effect of technological effect. Of these, technological progress is the main reason for the large decrease in the blue and green water footprint in the Yangling Demonstration Area, and this effect is greater than the increased intensity effect for the blue and green water footprint caused by the expansion of economic scale and population growth. The expansion of the agricultural economy is the main reason for the increase in the grey water footprint in the Yangling Demonstration Area.
4.2. Policy Recommendations
- (1)
- Establish a farmland management and nitrogen fertilizer application technology system with a high resource efficiency and reduced input. The utilization rate of fertilizer can be improved by increasing the technical input, popularizing soil testing and formula fertilization technology, optimizing and balancing fertilization, and developing and popularizing new fertilizers, so as to reduce the grey water footprint from the source.
- (2)
- The mode of economic growth and the control of water consumption should be changed so as to achieve the goal of an absolute decoupling of economic growth and the water footprint. To truly achieve sustainable development, it is necessary to optimize the allocation of water resources and regulate crops with high emissions, high pollution, and low income. The spatial and temporal distribution of agricultural land use should be scientifically and rationally planned, and the land use structure should be optimized. In addition, from the perspective of ecological engineering design, setting up an ecological buffer zone and an isolation ditch can effectively reduce the negative impact of the grey water footprint on the economy and the environment.
- (3)
- The economic growth rate should be regulated, and water use efficiency should be improved. Technological progress is slow, and improvements in water use efficiency brought by technological progress are limited. In order to truly achieve efficient water saving and sustainable development, the total agricultural population must be controlled, and at the same time, scientific and technological innovation and management efforts must be further strengthened to reduce water consumption and pollutant discharge, so as to make full use of water resources. The economic growth rates and expansion scales should also be reasonably regulated, so as to limit the unnecessary wastage of water resources.
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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State | ΔE | Description | ||
---|---|---|---|---|
Strong decoupling (SD) | <0 | >0 | β < 0 | E development, WF decline |
Weak decoupling (WD) | >0 | >0 | 0 < β ≤ 1 | E development, WF grow slowly |
Recessive decoupling (RD) | <0 | <0 | β > 1 | E slows down, WF drop dramatically |
Extended negative decoupling (END) | >0 | >0 | β > 1 | E grow slowly, WF grow dramatically |
Weak negative decoupling (WND) | <0 | <0 | 0 < β ≤ 1 | E recession, WF slowing down |
Strong negative decoupling (SND) | >0 | <0 | β < 0 | E recession, WF grow |
Year | E Growth | WFBG Growth | Blue and Green WF | WFg Growth | Grey WF | ||
---|---|---|---|---|---|---|---|
λ | Type | λ | Type | ||||
2000 | −35.19 | −3.16 | 0.09 | WND | 3.24 | −0.09 | SND |
2001 | 0.73 | −2.71 | −3.70 | SD | 23.28 | 31.74 | END |
2002 | 7.79 | −2.02 | −0.26 | SD | 0.35 | 0.05 | WD |
2003 | 11.02 | −2.70 | −0.24 | SD | 19.30 | 1.75 | END |
2004 | 22.87 | −2.25 | −0.10 | SD | 4.00 | 0.18 | WD |
2005 | 3.91 | −0.30 | −0.08 | SD | −4.52 | −1.16 | SD |
2206 | 29.95 | 1.52 | 0.05 | WD | −6.64 | −0.22 | SD |
2007 | 21.10 | 18.91 | 0.90 | WD | 87.67 | 4.15 | END |
2008 | 28.67 | −19.04 | −0.66 | SD | −39.62 | −1.38 | SD |
2009 | 5.66 | 35.15 | 6.21 | END | 39.85 | 7.04 | END |
2010 | 27.79 | −6.57 | −0.24 | SD | −22.38 | −0.81 | SD |
2011 | 40.40 | −22.28 | −0.55 | SD | 28.89 | 0.72 | WD |
2012 | 8.37 | −2.10 | −0.25 | SD | 19.85 | 2.37 | END |
2013 | 11.70 | −11.17 | −0.95 | SD | 2.81 | 0.24 | WD |
2014 | 8.89 | −5.82 | −0.65 | SD | 2.34 | 0.26 | WD |
2015 | 2.54 | 3.28 | 1.29 | WD | −1.74 | −0.68 | SD |
2016 | 6.73 | −1.08 | −0.16 | SD | 1.15 | 0.17 | WD |
2017 | 2.92 | −3.02 | −1.04 | SD | 0.21 | 0.07 | WD |
2018 | 0.58 | −14.81 | −25.48 | SD | −28.19 | −48.49 | SD |
2019 | 9.50 | −0.86 | −0.09 | SD | −0.16 | −0.02 | SD |
Year | Blue and Green WF | Grey WF | ||||||
---|---|---|---|---|---|---|---|---|
Peffect | Aeffect | Teffect | Reffect | Peffect | Aeffect | Teffect | Reffect | |
2000 | 165.57 | −1849.15 | 1562.63 | −120.95 | 66.11 | −740.30 | 721.86 | 47.68 |
2001 | −29.80 | 56.50 | −127.12 | −100.42 | −13.84 | 26.23 | 341.45 | 353.83 |
2002 | −35.87 | 303.99 | −340.92 | −72.80 | −18.87 | 159.93 | −134.42 | 6.63 |
2003 | 0.53 | 364.58 | −460.36 | −95.25 | 0.31 | 214.72 | 147.93 | 362.96 |
2004 | −48.45 | 754.26 | −783.15 | −77.35 | −32.58 | 506.56 | −384.16 | 89.82 |
2005 | 54.83 | 73.65 | −138.51 | −10.03 | 37.31 | 50.12 | −192.82 | −105.40 |
2206 | 20.53 | 872.24 | −842.03 | 50.74 | 13.16 | 560.01 | −721.17 | −148.00 |
2007 | 58.67 | 651.99 | −67.98 | 642.68 | 46.50 | 513.66 | 1263.37 | 1823.53 |
2008 | 84.77 | 857.51 | −1711.54 | −769.26 | 73.46 | 746.57 | −2366.80 | −1546.77 |
2009 | 1375.80 | −1181.71 | 956.15 | 1150.25 | 1009.47 | −868.63 | 798.38 | 939.22 |
2010 | −729.11 | 1808.37 | −1369.95 | −290.70 | −501.55 | 1254.62 | −1490.58 | −737.50 |
2011 | −1551.19 | 2955.40 | −2324.79 | −920.58 | −1221.04 | 2224.47 | −264.31 | 739.12 |
2012 | 60.71 | 195.07 | −323.15 | −67.37 | 69.05 | 221.72 | 363.77 | 654.54 |
2013 | −27.52 | 357.81 | −681.31 | −351.03 | −37.07 | 481.14 | −332.91 | 111.17 |
2014 | 32.90 | 198.58 | −394.01 | −162.54 | 49.81 | 300.57 | −255.42 | 94.97 |
2015 | −88.32 | 155.47 | 19.01 | 86.17 | −136.21 | 239.86 | −175.96 | −72.30 |
2016 | −95.46 | 271.75 | −205.53 | −29.24 | −145.18 | 413.20 | −220.94 | 47.08 |
2017 | −45.72 | 121.85 | −157.24 | −81.11 | −71.47 | 190.44 | −110.27 | 8.70 |
2018 | 159.28 | −145.02 | −400.15 | −385.90 | 235.12 | −213.70 | −1188.97 | −1167.55 |
2019 | −42.65 | 243.67 | −220.21 | −19.19 | −57.33 | 327.56 | −274.93 | −4.70 |
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Shi, J. Study on the Decoupling Relationship and Rebound Effect between Agricultural Economic Growth and Water Footprint: A Case of Yangling Agricultural Demonstration Zone, China. Water 2022, 14, 991. https://doi.org/10.3390/w14060991
Shi J. Study on the Decoupling Relationship and Rebound Effect between Agricultural Economic Growth and Water Footprint: A Case of Yangling Agricultural Demonstration Zone, China. Water. 2022; 14(6):991. https://doi.org/10.3390/w14060991
Chicago/Turabian StyleShi, Jianwen. 2022. "Study on the Decoupling Relationship and Rebound Effect between Agricultural Economic Growth and Water Footprint: A Case of Yangling Agricultural Demonstration Zone, China" Water 14, no. 6: 991. https://doi.org/10.3390/w14060991