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土地利用协同减污降碳模拟:情景分析与政策启示。

Land-use simulation for synergistic pollution and carbon reduction: Scenario analysis and policy implications.

机构信息

Guangdong Provincial Key Laboratory of Water Quality Improvement and Ecological Restoration for Watersheds, Institute of Environmental and Ecological Engineering, Guangdong University of Technology, Guangzhou, 510006, China.

Guangdong Provincial Key Laboratory of Water Quality Improvement and Ecological Restoration for Watersheds, Institute of Environmental and Ecological Engineering, Guangdong University of Technology, Guangzhou, 510006, China.

出版信息

J Environ Manage. 2024 Apr;356:120603. doi: 10.1016/j.jenvman.2024.120603. Epub 2024 Mar 21.

Abstract

Simulations of sustainable land use and management are required to achieve targets to reduce pollution and carbon emissions. Limited research has been conducted on synergistic pollution and carbon reduction (SPCR) in land-use simulations. This study proposed a framework for land-use simulation focused on SPCR. The non-dominated sorting genetic algorithm (NSGA-Ⅱ) and the entropy weight-based technique for order of preference by similarity to an ideal solution (TOPSIS) were used to optimize the land-use structure according to minimum net carbon, nitrogen, and phosphorus emissions. The cellular automata (CA) Markov model was then utilized to simulate the land-use spatial pattern according to the optimal conditions. The proposed framework was applied to the Dongjiang River Basin, South China, and three other scenarios (natural development (ND), carbon minimization (CM), and pollution minimization (PM)) were designed to validate the effectiveness of pollution and carbon emissions reduction under the SPCR scenario. The land-use structure and the pollution and carbon emissions in the scenarios were compared. The results showed the following. (1) The proportions of cultivated land, woodland, grassland, water, and construction land In the SPCR scenario accounted for 14%, 72%, 4%, 3%, and 7% of the total area, respectively. The carbon, nitrogen, and phosphorus emissions were 42.4%, 6.6%, and 7.8% lower, respectively, in the SPCR scenario than in the ND scenario, demonstrating the advantages of simultaneous pollution and carbon reduction. (2) The kappa coefficient of the CA-Markov model was 0.8729, indicating high simulation accuracy. (3) The simulated land-use spatial patterns exhibited low spatial heterogeneity under the CM, PM, and SPCR scenarios. However, there were significant disparities between the ND and SPCR scenarios. The cultivated and construction land areas were significantly smaller in the SPCR scenario than in the ND scenario. In contrast, the woodland and grassland areas were larger, with most differences in the central and southwestern regions of the Dongjiang River Basin. The results of the current study can be used to formulate effective land use policies and strategies in the Dongjiang Basin and similar areas to achieve the Coupling coordination between pollution reduction and carbon reduction. Policy recommendations include increasing the proportion of woodland and grassland, implementing reasonable constraints on expanding cultivated and construction lands, and establishing farmland red lines to promote synergistic pollution and carbon reduction.

摘要

需要进行可持续土地利用和管理模拟,以实现减少污染和碳排放的目标。在土地利用模拟中,协同减少污染和碳排放(SPCR)的研究有限。本研究提出了一个侧重于 SPCR 的土地利用模拟框架。非支配排序遗传算法(NSGA-Ⅱ)和基于熵权的逼近理想解排序法(TOPSIS)用于根据最小净碳、氮和磷排放量优化土地利用结构。然后利用元胞自动机(CA)马尔可夫模型根据最优条件模拟土地利用空间格局。该框架应用于中国东南地区的东江流域,并设计了三个情景(自然发展(ND)、碳最小化(CM)和污染最小化(PM))来验证 SPCR 情景下减少污染和碳排放的有效性。比较了情景下的土地利用结构和污染及碳排放。结果表明:(1)SPCR 情景下耕地、林地、草地、水域和建设用地的比例分别占总面积的 14%、72%、4%、3%和 7%。SPCR 情景下的碳、氮和磷排放量分别比 ND 情景低 42.4%、6.6%和 7.8%,表明同时减少污染和碳排放具有优势。(2)CA-Markov 模型的kappa 系数为 0.8729,表明模拟精度较高。(3)CM、PM 和 SPCR 情景下的土地利用空间格局模拟具有较低的空间异质性。然而,ND 和 SPCR 情景之间存在显著差异。SPCR 情景下耕地和建设用地面积明显小于 ND 情景,而林地和草地面积较大,差异主要集中在东江流域中部和西南部。本研究结果可用于制定东江流域及类似地区的有效土地利用政策和战略,以实现污染减排与碳减排的耦合协调。政策建议包括增加林地和草地的比例,对扩大耕地和建设用地实施合理限制,建立耕地红线,以促进协同减少污染和碳排放。

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