An Analysis of a Water Use Decoupling Index and Its Spatial Migration Characteristics Based on Extracting Trend Components: A Case Study of the Poyang Lake Basin
Abstract
:1. Introduction
2. Methods
2.1. Hodrick–Prescott Filter
2.2. Decoupling Analysis
2.3. The Characteristics and Measurements of Spatial Relationships
3. Case Study and Data
4. Results
4.1. The Variation in Trend Components of Water Consumption and GDP Time Series Data in Poyang Lake Basin
- During the period from 2003 to 2016, Yichun City, Ganzhou City, and Shangrao City presented an increasing trend, with growth rates of 58%, 47%, and 63%, respectively;
- Ji’an City displayed an increasing trend at first, and then slightly declined. Water consumption increased from 2.36 billion m3 in 2003 to 3.39 billion m3 in 2012. During the period from 2012 to 2016, water consumption in Ji’an City decreased to 3.32 billion m3. There existed a similar trend pattern between Jiujiang City and Ji’an City. In Jiujiang City, water consumption increased from 2.26 billion m3 in 2003 to 2.58 billion m3 in 2012. During the period from 2012 to 2016, water consumption decreased to 2.47 billion m3 in Jiujiang City;
- Nanchang City and Fuzhou City displayed an increasing trend at first, and then became nearly steady. Water consumption in Nanchang City increased from 2.58 billion m3 in 2003 to 3 billion m3 in 2009 and was basically maintained at 3 billion m3 after 2009. Water consumption in Fuzhou City increased from 1.63 billion m3 in 2003 to 2.4 billion m3 in 2013 and then was basically maintained at 2.4 billion m3 after 2013;
- Jingdezhen City, Xinyu City, and Pingxiang City had less variation in water consumption than others, seeming to level off at around 7.5 billion m3, 7.3 billion m3, and 7.2 billion m3, respectively;
- Yintan City displayed a decreasing trend, with a decrease rate of 31%.
4.2. Results of Decoupling Analysis in Poyang Lake Basin
4.3. Spatial Variation Characteristics of Decoupling Statuses in Poyang Lake Basin
5. Discussion
5.1. Interpretation of the Several Decoupling Statuses
5.2. Explanation of Global Moran’s Index and Anselin Local Moran’s Index
5.3. The Migration Significance of the Spatial Gravity Center for GDP, Water Consumption, and the Decoupling Index
6. Conclusions
- Decoupling statuses (based on original and extracted data) between water consumption and economic growth showed a significant difference. The original sequence were volatile, while the trend extracted sequence were steady with the elimination of cyclic factors;
- In the Poyang Lake basin, water consumption basically decoupled from economic growth, and the decoupling status characteristics could be divided into three categories. The first kind always kept a weak decoupling status, including Nanchang City, Jingdezhen City, Ganzhou City, Fuzhou City, and Shangrao City. The second kind experienced a status transformation from weak decoupling to strong decoupling, including Pingxiang City, Jiujiang City, and Ji’an City. The third kind always kept a strong decoupling status (only Yingtan City);
- In the Poyang Lake basin, from a global perspective, GDP and water consumption exhibited randomness characteristics, while the decoupling index exhibited spatial outlier characteristics. From a local perspective, GDP exhibited a random pattern, the water consumption of some areas (e.g., Nanchang City) exhibited a spatial clustering of high–high characteristics, and the decoupling index of some areas (e.g., Yingtan City, Shangrao City, Jiujiang City) exhibited a spatial outlier of low–high or high–low characteristics;
- With respect to the migration of the spatial gravity center, the direction of GDP was opposite to water consumption, while the direction of the decoupling index was similar to water consumption, which meant it was not necessary to consume much more water to promote economic growth for the region with the largest economic output value. Therefore, the water use pattern in the Poyang Lake basin was sustainable to a certain extent.
Author Contributions
Funding
Conflicts of Interest
References
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State | Meaning | ||
---|---|---|---|
negative decoupling | expansive negative decoupling | END | low resource-use efficiency, higher dependence on water resource consumption, unsustainable state |
strong negative decoupling | SND | economic recession, resource consumption, worst state | |
weak negative decoupling | WND | the variation rate of water consumption decrease is slower than that of GDP decrease, economic recession | |
decoupling | weak decoupling | WD | relatively high resource-use efficiency, increase of economic output is relative less dependence on water resource consumption |
strong decoupling | SD | high resource-use efficiency, less dependence on water resource consumption, resource sustainability, best state | |
recessive decoupling | RD | the variation rate of water consumption decrease is faster than that of GDP decrease, economic recession | |
coupling | expansive coupling | EC | medium resource-use efficiency, dependence on water resource consumption |
recessive coupling | RC | the variation rate of water consumption decrease is almost the same as that of GDP decrease, economic recession |
score | Confidence Level | Pattern | Meaning |
---|---|---|---|
≤−2.58 | 99% | dispersed and negative spatial autocorrelation | aggregation of high and high values of associated attributes and aggregation of low and low values of associated attributes |
>−2.58 and ≤−1.96 | 95% | ||
>−1.96 and ≤−1.65 | 90% | ||
>−1.65 and ≤−1.15 | 75% | ||
>−1.15 and <1.15 | 75% | random | randomness |
≥1.15 and <1.65 | 75% | clustered and positive spatial autocorrelation | aggregation of high and low values of associated attributes |
≥1.65 and <1.96 | 90% | ||
≥1.96 and <2.58 | 95% | ||
≥2.58 | 99% |
Z-score | Confidence Level | Pattern | Meaning |
---|---|---|---|
≤−2.58 | 99% | dissimilar cluster | an attribute has neighboring attributes with similar high or low values |
>−2.58 and ≤−1.96 | 95% | ||
>−1.96 and ≤−1.65 | 90% | ||
>−1.65 and ≤−1.15 | 75% | ||
>−1.15 and <1.15 | 75% | randomness | randomness |
≥1.15 and <1.65 | 75% | similar cluster | an attribute has neighboring attributes with dissimilar values |
≥1.65 and <1.96 | 90% | ||
≥1.96 and <2.58 | 95% | ||
≥2.58 | 99% |
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Cai, H.; Mei, Y.; Chen, Y. An Analysis of a Water Use Decoupling Index and Its Spatial Migration Characteristics Based on Extracting Trend Components: A Case Study of the Poyang Lake Basin. Water 2019, 11, 1027. https://doi.org/10.3390/w11051027
Cai H, Mei Y, Chen Y. An Analysis of a Water Use Decoupling Index and Its Spatial Migration Characteristics Based on Extracting Trend Components: A Case Study of the Poyang Lake Basin. Water. 2019; 11(5):1027. https://doi.org/10.3390/w11051027
Chicago/Turabian StyleCai, Hao, Yadong Mei, and Yueyun Chen. 2019. "An Analysis of a Water Use Decoupling Index and Its Spatial Migration Characteristics Based on Extracting Trend Components: A Case Study of the Poyang Lake Basin" Water 11, no. 5: 1027. https://doi.org/10.3390/w11051027
APA StyleCai, H., Mei, Y., & Chen, Y. (2019). An Analysis of a Water Use Decoupling Index and Its Spatial Migration Characteristics Based on Extracting Trend Components: A Case Study of the Poyang Lake Basin. Water, 11(5), 1027. https://doi.org/10.3390/w11051027