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Data Analytics for Environmental Science and Engineering Research

Suraj Gupta, Diana S. Aga, Amy Pruden, Liqing Zhang, Peter J. Vikesland

2021Environmental Science & Technology91 citationsDOI

Abstract

The advent of new data acquisition and handling techniques has opened the door to alternative and more comprehensive approaches to environmental monitoring that will improve our capacity to understand and manage environmental systems. Researchers have recently begun using machine learning (ML) techniques to analyze complex environmental systems and their associated data. Herein, we provide an overview of data analytics frameworks suitable for various Environmental Science and Engineering (ESE) research applications. We present current applications of ML algorithms within the ESE domain using three representative case studies: (1) Metagenomic data analysis for characterizing and tracking antimicrobial resistance in the environment; (2) Nontarget analysis for environmental pollutant profiling; and (3) Detection of anomalies in continuous data generated by engineered water systems. We conclude by proposing a path to advance incorporation of data analytics approaches in ESE research and application.

Topics & Concepts

Profiling (computer programming)Data scienceAnalyticsComputer scienceData analysisEnvironmental dataEnvironmental researchMetagenomicsDomain (mathematical analysis)Environmental monitoringData miningEngineeringEnvironmental scienceEnvironmental resource managementOperating systemMathematical analysisBiochemistryEnvironmental engineeringLawMathematicsPolitical scienceGeneChemistryMachine Learning and Data ClassificationGene expression and cancer classificationData Stream Mining Techniques
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