학술논문

PyLEnM: A Machine Learning Framework for Long-Term Groundwater Contamination Monitoring Strategies
Document Type
article
Source
Environmental Science and Technology. 56(9)
Subject
Hydrology
Earth Sciences
Environmental Monitoring
Groundwater
Machine Learning
Water Pollutants
Chemical
Water Wells
open-source package
machine learning
spatial estimation
sensor placement optimization
Gaussian process model
unsupervised learning
groundwater contamination
Environmental Sciences
Language
Abstract
In this study, we have developed a comprehensive machine learning (ML) framework for long-term groundwater contamination monitoring as the Python package PyLEnM (Python for Long-term Environmental Monitoring). PyLEnM aims to establish the seamless data-to-ML pipeline with various utility functions, such as quality assurance and quality control (QA/QC), coincident/colocated data identification, the automated ingestion and processing of publicly available spatial data layers, and novel data summarization/visualization. The key ML innovations include (1) time series/multianalyte clustering to find the well groups that have similar groundwater dynamics and to inform spatial interpolation and well optimization, (2) the automated model selection and parameter tuning, comparing multiple regression models for spatial interpolation, (3) the proxy-based spatial interpolation method by including spatial data layers or in situ measurable variables as predictors for contaminant concentrations and groundwater levels, and (4) the new well optimization algorithm to identify the most effective subset of wells for maintaining the spatial interpolation ability for long-term monitoring. We demonstrate our methodology using the monitoring data at the Savannah River Site F-Area. Through this open-source PyLEnM package, we aim to improve the transparency of data analytics at contaminated sites, empowering concerned citizens as well as improving public relations.