Evaluation of Water–Carbon–Ecological Footprint and Its Spatial–Temporal Changes in the North China Plain
Abstract
:1. Introduction
2. Materials
2.1. Study Area
2.2. Data Sources
3. Methodology
3.1. Calculation of Water Footprint
3.2. Calculation of Carbon Footprint
3.3. Calculation of the Ecological Footprint
3.4. Coupling Coordination Analysis of Water–Carbon–Ecological Footprint
4. Results and Discussion
4.1. Characteristics of Changes in Total Water, Carbon and Ecological Footprint in the NCP
4.2. Characterization of Changes in the Composition of the Water, Carbon, and Ecological Footprint
4.3. Analysis of the Coupling Coordination Degree of Water–Carbon–Ecological Footprint
4.4. Policy Implementation
- (1)
- It is imperative to enhance the agricultural water management capacity in the NCP. The water footprint of the NCP is generally on an increasing trend, with agriculture accounting for the largest share of water demand, which is already more than 50% of the total water demand. Thus, water conservation measures need to be taken during agricultural production, such as encouraging the use of highly efficient irrigation methods such as drip systems and micro-irrigation, or the use of groundwater for sustainable irrigation [49]. Specific attention should be directed towards implementing water-saving measures in Henan and Shandong, where high levels of water consumption for agricultural purposes are particularly pronounced.
- (2)
- The adoption of clean energy sources to mitigate carbon emissions within the North China Plain represents a critical strategy for environmental conservation. Our study has documented a persistent rise in the carbon footprint of the region, which has escalated from 4.2 × 108 t to 1.69 × 109 t. Notably, coke and crude oil have been major contributors to carbon emissions, accounting for proportions ranging between 32.99% and 43.34% and 31.55% and 40.29%, respectively. By referencing the carbon content per unit of calorific value for each fossil energy source as presented in Table 1, it becomes apparent that LPG (liquefied petroleum gas) and petroleum emit significantly less carbon—17.2 tC/TJ and 15.32 tC/TJ, respectively—than coke (29.42 tC/TJ) and crude oil (20.08 tC/TJ) when generating equivalent calorific value. Consequently, we advocate for the aggressive promotion of clean energy alternatives, such as natural gas, as part of a broader initiative to drive industrial restructuring and foster green production methodologies. These measures are essential for achieving society’s ambitious goals of carbon peaking and carbon neutrality.
- (3)
- Enhancing land utilization efficiency within the North China Plain region is a paramount objective. Our study has identified that the ecological footprint in Henan Province and Shandong Province is comparatively substantial. Notably, the ecological footprint attributed to arable land constitutes the predominant share, underscoring the critical role of arable land as a vital component of the region’s land resources. In light of these findings, there is a compelling need to vigorously advance the construction of high-standard farmland. This initiative aims to elevate the quality of arable land in the North China Plain and to integrate the deployment of sophisticated agricultural technologies. Concurrently, it is observed that the ecological footprints of forests and watersheds contribute only a minor fraction to the overall ecological footprint. This necessitates a strategic approach to the more efficient utilization of land resources in the North China Plain, thereby ensuring the sustainable and harmonized development of natural resources within the region.
4.5. Limitations and Future Work
5. Conclusions
- (1)
- The overall trend of the water footprint in the NCP shows an initial increase followed by a decrease, with the growth rate gradually slowing down, and finally tending to stabilize. In 2020, it reached 6.52 × 1011 m3. Shandong and Henan have the largest water footprints, but Henan has the most significant increase, growing by 52.8% compared to 2003. Agricultural water demand (78.6~83.6%) accounts for the largest proportion of water footprint, while the ecological water demand has the smallest proportion in the entire water footprint composition. This indicates that various water uses in the NCP are mainly for agricultural water use, and there is great potential for agricultural water conservation.
- (2)
- The carbon footprint of the provinces in the NCP shows an overall upward trend, implying that with the rapid economic development, the pressure of carbon emission increases year by year, which has a great impact on the ecological environment. Among them, Shandong has the largest total carbon footprint, with the most significant increase. The emissions in 2020 (7.30 × 108 t) have reached 5.83 times the emissions in 2003 (1.25 × 108 t). The carbon footprints of coke (32.99~43.34%) and crude oil (31.55~40.29%) account for the largest proportion, and energy consumption in the NCP is dominated by coke and crude oil. With the passage of time, the proportion of natural gas is gradually increasing, and people are more and more inclined to use clean energy.
- (3)
- The total ecological footprint of the NCP is 1.95 × 108~2.24 × 108 hm2, which shows an “M”-shaped trend. The ecological footprint of arable land accounts for the largest proportion (61.5~70.1%), while water accounts for the smallest proportion (0.3~0.4%) in the composition of the whole ecological footprint, which indicates that arable land is the most important component of land resources in the NCP. Overall, the magnitude of the ecological footprint of various categories has not changed much, and the land structure of the NCP is relatively stable.
- (4)
- The coupling degree of water–carbon–ecological footprints in the NCP is high, and the interaction among water, carbon and ecological footprints is more significant. But, the coupling degree in the NCP has begun to decline continuously since 2015. Overall, the coupling coordination degree of the NCP shows a trend of increasing first, then steady, and then a continuous decline. Among the provinces in the NCP, Jiangsu has the highest mean values of coupling degree (0.851) and degree of coupling coordination (0.603) from 2003 to 2020.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Name of Energy Source | Average Low-Level Calorific Value (TJ/Gg) | Carbon Content Per Unit Calorific Value (tC/TJ) | Carbon Oxidation Rate (%) |
---|---|---|---|
Coke | 28.470 | 29.42 | 93 |
Crude Oil | 41.868 | 20.08 | 98 |
Petrol | 43.124 | 18.90 | 98 |
Gasoline | 43.124 | 19.60 | 98 |
Diesel Oil | 42.705 | 20.20 | 98 |
Bunker Fuel | 41.868 | 21.10 | 98 |
Liquefied Petroleum Gas | 50.242 | 17.20 | 98 |
Petroleum | 38.979 | 15.32 | 99 |
Biologically Productive Land Types | Account Product Type | |
---|---|---|
Arable land | Agricultural production | Grain, cotton, oilseeds, vegetables, tobacco, hemp, pork, poultry and eggs |
Grassland | Livestock products | Beef, lamb, dairy |
Woodland | Forest products | Fruits, tea, oilseeds |
Watershed | Fishery products | Fishery products |
Interval of Coupling C Values | Degree of Coupling | Interval of D-Values for Coupling Coordination | Degree of Coupling Coordination |
---|---|---|---|
(0.0~0.3) | Low-level coupling | (0.0~0.1) | Extreme disorder |
[0.1~0.2) | Severe disorder | ||
[0.2~0.3) | Moderate disorder | ||
[0.3~0.5) | Antagonistic period | [0.3~0.4) | Mild disorder |
[0.4~0.5) | On the verge of a disorder | ||
[0.5~0.8) | Break-in period | [0.5~0.6) | Sue for coordination |
[0.6~0.7) | Primary coordination | ||
[0.7~0.8) | Mid-level coordination | ||
[0.8~1.0) | High-level coupling | [0.8~0.9) | Good coordination |
[0.9~1.0) | High-quality coordination |
Year | Interval of Coupling C Values | Degree of Coupling | Interval of D-Values for Coupling Coordination | Degree of Coupling | Degree of Coupling Coordination |
---|---|---|---|---|---|
2003 | 0.336 | 0.670 | 0.475 | Antagonistic period | On the verge of a disorder |
2004 | 0.950 | 0.674 | 0.800 | High-level coupling | Good coordination |
2005 | 0.996 | 0.735 | 0.856 | High-level coupling | Good coordination |
2006 | 0.982 | 0.790 | 0.881 | High-level coupling | Good coordination |
2007 | 1.000 | 0.699 | 0.836 | High-level coupling | Good coordination |
2008 | 0.983 | 0.713 | 0.837 | High-level coupling | Good coordination |
2009 | 0.955 | 0.647 | 0.786 | High-level coupling | Mid-level coordination |
2010 | 0.936 | 0.585 | 0.740 | High-level coupling | Mid-level coordination |
2011 | 0.894 | 0.507 | 0.673 | High-level coupling | Primary coordination |
2012 | 0.821 | 0.504 | 0.643 | High-level coupling | Primary coordination |
2013 | 0.741 | 0.429 | 0.564 | Break-in period | Sue for coordination |
2014 | 0.621 | 0.437 | 0.521 | Break-in period | Sue for coordination |
2015 | 0.512 | 0.376 | 0.439 | Break-in period | On the verge of a disorder |
2016 | 0.793 | 0.155 | 0.351 | Break-in period | Mild disorder |
2017 | 0.650 | 0.120 | 0.279 | Break-in period | Moderate disorder |
2018 | 0.632 | 0.109 | 0.262 | Break-in period | Moderate disorder |
2019 | 0.433 | 0.023 | 0.101 | Antagonistic period | Severe disorder |
2020 | 0.159 | 0.027 | 0.065 | Low-level coupling | Extreme disorder |
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Lyu, K.; Tian, J.; Zheng, J.; Zhang, C.; Yu, L. Evaluation of Water–Carbon–Ecological Footprint and Its Spatial–Temporal Changes in the North China Plain. Land 2024, 13, 1327. https://doi.org/10.3390/land13081327
Lyu K, Tian J, Zheng J, Zhang C, Yu L. Evaluation of Water–Carbon–Ecological Footprint and Its Spatial–Temporal Changes in the North China Plain. Land. 2024; 13(8):1327. https://doi.org/10.3390/land13081327
Chicago/Turabian StyleLyu, Keyi, Jin Tian, Jiayu Zheng, Cuiling Zhang, and Ling Yu. 2024. "Evaluation of Water–Carbon–Ecological Footprint and Its Spatial–Temporal Changes in the North China Plain" Land 13, no. 8: 1327. https://doi.org/10.3390/land13081327
APA StyleLyu, K., Tian, J., Zheng, J., Zhang, C., & Yu, L. (2024). Evaluation of Water–Carbon–Ecological Footprint and Its Spatial–Temporal Changes in the North China Plain. Land, 13(8), 1327. https://doi.org/10.3390/land13081327