Context-driven Deep Learning Forecasting for Wastewater Treatment Plants

dc.contributor.authorSikder, Md Nazmul Kabiren
dc.contributor.authorBatarseh, Feras A.en
dc.date.accessioned2025-08-04T18:20:36Zen
dc.date.available2025-08-04T18:20:36Zen
dc.date.issued2025-06en
dc.date.updated2025-08-01T07:52:11Zen
dc.description.abstractWastewater-treatment utilities face various operational challenges that could benefit from embodied AI and other advanced cyber-physical technologies. These challenges include optimizing pump schedules, managing energy and chemical consumption during extreme weather events, and interpreting sensor data for water-quality treatment. Addressing these issues requires accurate short-term, multi-step forecasting tools to provide reliable real-time decision support, particularly during heavy rainfall events that can overwhelm operations. Leading water-system operators and vendors in the United States report that tools capable of forecasting 4–6 hours ahead can significantly enhance resource management, including energy, chemicals, and manpower. However, accurate short-term forecasting is particularly difficult because of the non-linearities and seasonal variations inherent in plant data, which limit effective decision-making. To address these challenges, we propose cP2O, a context-driven forecasting solution, a novel hybrid deep-learning architecture integrating dynamic context extraction with hierarchical, dilated long-short-term memory (LSTM) cells. The proposed model utilizes internal water-system data, such as flow rates and tunnel levels, along with exogenous variables including weather, river flow, and demographic information to derive relevant context. It captures both short-term fluctuations and long-term dependencies in water-level data, while an internal attention mechanism dynamically weighs the importance of exogenous information. We validate the model on two full-scale utilities: tunnel-water-level forecasting at DC Water’s Blue Plains facility and nitrate-level prediction at AlexRenew. Relative to strong baselines, cP2O reduces mean absolute percentage error by 22 % and 19 %, respectively, and its 90 % prediction bands cover 90.5 % ± 3.2 % of observations (5.9 % below, 3.6 % above). By dynamically incorporating contextual information, especially under critical conditions, the model delivers reliable real-time forecasts that enhance resource allocation and strengthen the overall resilience of wastewater-treatment operations.en
dc.description.versionAccepted versionen
dc.format.mimetypeapplication/pdfen
dc.identifier.doihttps://doi.org/10.1145/3744350en
dc.identifier.urihttps://hdl.handle.net/10919/136956en
dc.language.isoenen
dc.publisherACMen
dc.rightsIn Copyright (InC)en
dc.rights.holderThe author(s)en
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/en
dc.titleContext-driven Deep Learning Forecasting for Wastewater Treatment Plantsen
dc.typeArticle - Refereeden
dc.type.dcmitypeTexten

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