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Data‐mining methods predict chlorine residuals in premise plumbing using low‐cost sensors
Author(s) -
Saetta Daniella,
Richard Rain,
Leyva Carlos,
Westerhoff Paul,
Boyer Treavor H.
Publication year - 2021
Publication title -
awwa water science
Language(s) - English
Resource type - Journals
ISSN - 2577-8161
DOI - 10.1002/aws2.1214
Subject(s) - water quality , naegleria fowleri , environmental science , computer science , scalability , data quality , engineering , database , ecology , metric (unit) , operations management , immunology , biology , meningoencephalitis
Variable water quality within buildings is of increasing concern due to public health impacts (e.g., lead, Legionella pneumophila , Naegleria fowleri , disinfection byproducts). Advances in data acquisition and analytics provide the opportunity to monitor real‐time building‐wide water quality variability. Accordingly, the goal of this research was to create a water quality sensor platform including data acquisition, storage, and mining methods able to monitor, and ultimately improve, water quality within buildings. The platform was used to monitor water temperature, pH, conductivity, oxidation–reduction potential, dissolved oxygen, and chlorine using sensors only. Other building data infrastructure, specifically Wi‐Fi logins by occupants, were used to approximate activity rates and associated water use. An advanced machine‐learning technique, gradient boosting machines, predicted the chlorine residuals throughout the building plumbing network better than multivariate linear regression models. Finally, the implications of water quality monitoring on costs, scalability, reliability, human dimensions, regulatory compliance, and future green building designs are considered.