2023
DOI: 10.3390/app132212497
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Relevance of Machine Learning Techniques in Water Infrastructure Integrity and Quality: A Review Powered by Natural Language Processing

José García,
Andres Leiva-Araos,
Emerson Diaz-Saavedra
et al.

Abstract: Water infrastructure integrity, quality, and distribution are fundamental for public health, environmental sustainability, economic development, and climate change resilience. Ensuring the robustness and quality of water infrastructure is pivotal for sectors like agriculture, industry, and energy production. Machine learning (ML) offers potential for bolstering water infrastructure integrity and quality by analyzing extensive data from sensors and other sources, optimizing treatment protocols, minimizing water… Show more

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Cited by 4 publications
(1 citation statement)
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“…ML has been utilized in the water distribution and quality areas in a variety of methods for improvement, pattern discovery, demand forecast, and leak detection (Ayati et al, 2022;García et al, 2023;Panigrahi et al, 2023;Xu et al, 2022;. Large volumes of data from databases such as the United States Geologic Survey (USGS) and National Water Information System (NWIS); experimental data, and other reputable sources have been analyzed for this purpose (Hu et al, 2022).…”
Section: Introductionmentioning
confidence: 99%
“…ML has been utilized in the water distribution and quality areas in a variety of methods for improvement, pattern discovery, demand forecast, and leak detection (Ayati et al, 2022;García et al, 2023;Panigrahi et al, 2023;Xu et al, 2022;. Large volumes of data from databases such as the United States Geologic Survey (USGS) and National Water Information System (NWIS); experimental data, and other reputable sources have been analyzed for this purpose (Hu et al, 2022).…”
Section: Introductionmentioning
confidence: 99%