Mapping spatio-temporal dynamics of main water parameters and understanding their relationships with driving factors using GF-1 images in a clear reservoir.

Environ Sci Pollut Res Int

Key Laboratory of Virtual Geographic Environment, Ministry of Education, College of Geographic Science, Nanjing Normal University, Nanjing, 210023, China.

Published: September 2020

Due to eutrophication and water quality deterioration in clear reservoirs, it is necessary to monitor and manage the main water parameters: concentration of total phosphorus (C), chemical oxygen demand (C), chlorophyll-a (C), total suspended matter (C), and Secchi disk depth (SDD). Five random forest (RF) models are developed to estimate these parameters in Xin'anjiang Reservoir, which is a clear drinking water resource in Zhejiang, China. Then, the spatio-temporal distributions of the parameters over 7 years (2013-2019) are mapped using GaoFen-1 (GF-1) images and the relationships with driving factors are analyzed. Our study demonstrates that the parameters' distributions exhibited a significant spatio-temporal difference in Xin'anjiang Reservoir. Spatially, relatively high C, C, C, and C but low SDD appear in riverine areas, showing strong evidence of impact from the incoming rivers. Temporally, C and C reached high values in summer and winter, whereas SDD and C were higher in the summer and autumn, respectively. In contrast, no significant seasonal variations of C could be observed. This may be why C is not sensitive to hydrological or meteorological factors. However, precipitation had a significant impact on C, C, SDD, and C in riverine areas, though these parameters were less sensitive to meteorological factors. Moreover, the geomorphology of the reservoir and anthropogenic interference (e.g., tourism activities) also have a significant impact on the water quality parameters. This study demonstrates that coupling long-term GF-1 images and RF models could provide strong evidence and new insights to understand long-term dynamics in water quality and therefore support the development of corresponding management strategies for freshwater reservoirs.

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http://dx.doi.org/10.1007/s11356-020-09687-zDOI Listing

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