Patterns, Trends And Drivers Of Water Transparency In Sri Lanka Using Landsat 8 Observations And Google Earth Engine

REMOTE SENSING(2021)

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摘要
Addressing inland water transparency and driver effects to ensure the sustainability and provision of good quality water in Sri Lanka has been a timely prerequisite, especially under the Sustainable Development Goals 2030 agenda. Natural and anthropogenic changes lead to significant variations in water quality in the country. Therefore, an urgent need has emerged to understand the variability, spatiotemporal patterns, changing trends and impact of drivers on transparency, which are unclear to date. This study used all available Landsat 8 images from 2013 to 2020 and a quasi-analytical approach to assess the spatiotemporal Secchi disk depth (Z(SD)) variability of 550 reservoirs and its relationship with natural (precipitation, wind and temperature) and anthropogenic (human activity and population density) drivers. Z(SD) varied from 9.68 cm to 199.47 with an average of 64.71 cm and 93% of reservoirs had transparency below 100 cm. Overall, slightly increasing trends were shown in the annual mean Z(SD). Notable intra-annual variations were also indicating the highest and lowest Z(SD) during the north-east monsoon and south-west monsoon, respectively. The highest Z(SD) was found in wet zone reservoirs, while dry zone showed the least. All of the drivers were significantly affecting the water transparency in the entire island. The combined impact of natural factors on Z(SD) changes was more significant (77.70%) than anthropogenic variables, whereas, specifically, human activity accounted for the highest variability across all climatic zones. The findings of this study provide the first comprehensive estimation of the Z(SD) of entire reservoirs and driver contribution and also provides essential information for future sustainable water management and conservation strategies.
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关键词
Google Earth Engine, Landsat 8, quasi-analytical derivation, Secchi disk depth, Sri Lanka, water transparency
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