Machine Learning to Access and Ensure Safe Drinking Water Supply: A Systematic Review
Feng Feng,
Zhenru Chen,
Jianyuan Ni
et al.
Abstract:Drinking water is essential to public health and socioeconomic growth. Therefore, assessing and ensuring drinking water supply is a critical task in modern society. Conventional approaches to analyzing and controlling drinking water quality are labor-intensive and costly with a low throughput. Machine learning (ML) is an alternative, promising technique for assessing and ensuring safe drinking water supply. Existing reviews have summarized the applications of ML in safe drinking water supply from different asp… Show more
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