A Statistical Approach for Identifying Private Wells Susceptible to Perfluoroalkyl Substances (PFAS) Contamination
Cindy Hu,
Beverly Ge,
Bridger J. Ruyle,
Jennifer Sun and
Elsie M. Sunderland
Mathematica Policy Research Reports from Mathematica Policy Research
Abstract:
Monitoring PFAS contamination can be costly and time consuming. We developed and evaluated a machine learning model to identify private wells susceptible to PFAS contamination.
Keywords: Environment; Drinking Water; PFAS; Machine Learning; Predictive Analytics (search for similar items in EconPapers)
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