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主要支流水质对中国洞庭湖流域多尺度景观指标差异的响应。

Response of water quality in major tributaries to the difference of multi-scale landscape indicators in Dongting Lake basin, China.

机构信息

Key Laboratory of Poyang Lake Environment and Resource Utilization, Ministry of Education, School of Resources and Environment, Nanchang University, Nanchang, 330031, China.

School of Geography and Environment, Jiangxi Normal University, Nanchang, 330022, Jiangxi, China.

出版信息

Environ Sci Pollut Res Int. 2024 Jul;31(35):47701-47713. doi: 10.1007/s11356-024-34048-5. Epub 2024 Jul 15.

Abstract

River water quality has been increasingly deteriorated because of the influence of natural process and anthropogenic activities. Quantifying the influence of landscape metrics, namely topography and land use pattern, which encompass land use composition and landscape configuration, across different spatial and seasonal scales that reflect natural process and anthropogenic activities, is highly beneficial for water quality protection. In this study, we focused on investigating the effects of topography, landscape configuration and land use composition on water quality at different spatial scales, including 1-km buffer and sub-watershed, and seasonal scales, including wet and dry season, based on the monthly water quality data in 2016 of Dongting Lake in China. Multivariate statistical analysis of redundancy analysis and partial redundancy analysis was used to quantify the contributions of these factors under different scales. Our results showed that among the three environmental groups, topography made the greatest pure contribution to water quality, accounting for 11.4 to 30.9% of the variation. This was followed by landscape configuration, which accounted for 9.4 to 23.0%, and land use composition, which accounted for 5.9 to 15.7%. More specifically, water body made the greatest contribution to the water quality variation during dry season at both spatial scales, contributing 16.6 to 17.2% of the variation. In contrast, edge density was the primary interpreter of the variability in water quality during wet season at both spatial scales, accounting for 9.9 to 11.1% of the variation. The spatial variability in the influence of landscape metrics on water quality was not markedly distinct. However, these metrics have a minimal impact difference on water quality at the buffer scale and the sub-watershed scale. Moreover, the contribution of landscape configuration varied the most from the buffer to sub-watershed scales, indicating its importance for the spatial scale difference in water quality. The findings of this study offer useful insights into enhancing water quality through improved handling of landscape metrics.

摘要

由于自然过程和人为活动的影响,河流水质不断恶化。在不同的空间和季节尺度上,量化景观指标(包括地形和土地利用格局)对水质的影响,这些尺度反映了自然过程和人为活动,对于水质保护非常有益。在本研究中,我们专注于研究地形、景观配置和土地利用组成对不同空间尺度(包括 1 公里缓冲区和子流域)和季节尺度(包括湿季和干季)水质的影响,基于中国洞庭湖 2016 年月度水质数据。冗余分析和偏冗余分析的多元统计分析用于量化这些因素在不同尺度下的贡献。结果表明,在三个环境组中,地形对水质的纯贡献最大,占变化的 11.4%至 30.9%。其次是景观配置,占 9.4%至 23.0%,土地利用组成,占 5.9%至 15.7%。更具体地说,水体在干季对水质变化的贡献最大,在两个空间尺度上占变化的 16.6%至 17.2%。相比之下,在两个空间尺度上,边缘密度是湿季水质变化的主要解释变量,占变化的 9.9%至 11.1%。景观指标对水质空间变化的影响没有明显差异。然而,这些指标对缓冲区和子流域尺度的水质影响差异不大。此外,景观配置的贡献从缓冲区到子流域尺度变化最大,表明其对水质空间尺度差异的重要性。本研究的结果为通过改善景观指标处理来提高水质提供了有用的见解。

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