Spatial and Temporal Distribution of the Impact of Socio-economic Factors on Water Pollution

IF 1 4区 环境科学与生态学 Q4 ENVIRONMENTAL STUDIES
Bizhen Chen, Shanshan Xie, Dehong Sun
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Abstract

Access to safe water and ensuring residents’ health are the main components of the United Nations Sustainable Development Goals (SDGs). Water pollution has a significant impact on residents’ health, and there are many factors that exacerbate water pollution. In this study, we applied the geographically and temporally weighted regression (GTWR) model to analyze the spatiotemporal distribution characteristics of factors affecting water pollution in China from 2005 to 2021. Hence, this article takes the chemical oxygen demand emissions (CODE) as the dependent variable, and the independent variables are ending permanent population (EPP), urbanization rate (UR), comprehensive production capacity of water supply (CPCOWS), per capita GDP (PCGDP), industrial water consumption proportion (IWCP), and per capita water consumption (PCWC). The conclusions are as follows: (1) The temporal evolution of CODE in different regions is highly consistent, with the order of water pollution severity being central, northeast, eastern, and western. (2) The effects of different factors on water pollution have obvious spatial and temporal heterogeneity. Overall, EPP, UR, CPCOWS, and PCWC have positive effects on water pollution, and PCGDP and IWCP have negative effects. (3) The direction of EPP and PCGDP impacts on CODE remains consistent across regions. UR impacts are primarily in the northeast, CPCOWS impacts are primarily in the eastern, central, and northeast, IWCP impacts are primarily in the central and western, and PCWC impacts are primarily in the eastern and central. Ultimately, some practical and feasible policy recommendations were proposed for different regions.
社会经济因素对水污染影响的空间和时间分布
获得安全饮用水和确保居民健康是联合国可持续发展目标(SDGs)的主要组成部分。水污染对居民健康有重大影响,而加剧水污染的因素有很多。本研究采用时空加权回归(GTWR)模型,分析了 2005 年至 2021 年中国水污染影响因素的时空分布特征。因此,本文将化学需氧量排放量(CODE)作为因变量,自变量为期末常住人口(EPP)、城镇化率(UR)、供水综合生产能力(CPCOWS)、人均国内生产总值(PCGDP)、工业用水比重(IWCP)和人均用水量(PCWC)。结论如下(1) 不同地区 CODE 的时间演变高度一致,水污染严重程度依次为中部、东北部、东部和西部。(2)不同因子对水污染的影响具有明显的时空异质性。总体而言,EPP、UR、CPCOWS 和 PCWC 对水污染有正向影响,PCGDP 和 IWCP 对水污染有负向影响。(3) EPP 和 PCGDP 对 CODE 的影响方向在不同地区保持一致。UR 的影响主要在东北部,CPCOWS 的影响主要在东部、中部和东北部,IWCP 的影响主要在中部和西部,PCWC 的影响主要在东部和中部。最终,针对不同地区提出了一些切实可行的政策建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Problemy Ekorozwoju
Problemy Ekorozwoju ENVIRONMENTAL STUDIES-
CiteScore
2.50
自引率
18.20%
发文量
55
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