Pei Wei, Xu Qiyu, Lei Qiuliang, Du Xinzhong, Luo Jiafa, Qiu Weiwen, An Miaoying, Zhang Tianpeng, Liu Hongbin
State Key Laboratory of Efficient Utilization of Arid and Semi-arid Arable Land in Northern China, Key Laboratory of Non-point Source Pollution Control, Ministry of Agriculture and Rural Affairs, Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, China.
State Key Laboratory of Efficient Utilization of Arid and Semi-arid Arable Land in Northern China, Key Laboratory of Non-point Source Pollution Control, Ministry of Agriculture and Rural Affairs, Institute of Agricultural Resources and Regional Planning, Chinese Academy of Agricultural Sciences, Beijing 100081, China.
Sci Total Environ. 2024 Nov 10;950:175027. doi: 10.1016/j.scitotenv.2024.175027. Epub 2024 Jul 24.
Currently, the comprehensive effect of the landscape pattern on river water quality has been widely studied. However, the interactive influences of landscape type, namely composition (COM) and configuration (CON) on water quality variations, as well as the specific landscape driving types affecting water quality variations under different spatial and seasonal scales remain unclear. To further improve the effectiveness of landscape planning and water quality protection, this study collected monthly water samples from the Fengyu River Watershed in southwestern China from 2018 to 2021, the Biota-Environment Matching Analysis (Bioenv) was used to identify key metrics representing landscape COM and CON, respectively. Then, the multiple regression (MLR) and redundancy analysis (RDA) were used to explore the relationship between these landscape metrics and water quality. In addition, this study used a variation partitioning analysis (VPA) to quantify the interactive and independent influence of landscape COM and CON on water quality. Results revealed that construction land and the Shannon's diversity index (SHDI) were the key metrics of landscape COM and CON, respectively, for predicting water pollution concentrations. The interactive contribution was particularly sensitive to seasonal changes in riparian buffer areas (27.66 % to 48.73 %), while it remained relatively stable at the sub-watershed scale (38.22 % to 40.51 %). Moreover, landscape CON had a higher independent contribution to variations on water quality across most spatio-temporal scales. Overall, identifying and managing key landscape type and consequential metrics, matching with the spatio-temporal scale, holds promise for enhancing water quality conservation. Furthermore, this study provides valuable insights into the identification and selection of core landscape metrics.
目前,景观格局对河流水质的综合影响已得到广泛研究。然而,景观类型,即组成(COM)和配置(CON)对水质变化的交互影响,以及在不同空间和季节尺度下影响水质变化的具体景观驱动类型仍不明确。为了进一步提高景观规划和水质保护的有效性,本研究于2018年至2021年在中国西南部的风雨河流域每月采集水样,采用生物与环境匹配分析(Bioenv)分别识别代表景观COM和CON的关键指标。然后,使用多元回归(MLR)和冗余分析(RDA)来探讨这些景观指标与水质之间的关系。此外,本研究采用变异分解分析(VPA)来量化景观COM和CON对水质的交互和独立影响。结果表明,建设用地和香农多样性指数(SHDI)分别是景观COM和CON预测水污染浓度的关键指标。交互贡献对河岸缓冲区的季节变化尤为敏感(27.66%至48.73%),而在子流域尺度上相对稳定(38.22%至40.51%)。此外,景观CON在大多数时空尺度上对水质变化具有较高的独立贡献。总体而言,识别和管理关键景观类型及相应指标,并与时空尺度相匹配,有望加强水质保护。此外,本研究为核心景观指标的识别和选择提供了有价值的见解。