Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous US

Abstract Gaining insights into current and future urban water demand patterns and their determinants is paramount for water utilities and policymakers to formulate water demand management strategies targeted to high water‐using groups and infrastructure planning strategies. In this paper, we explore...

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Main Authors: Wenjin Hao, Andrea Cominola, Andrea Castelletti
Format: Article
Language:English
Published: Wiley 2025-01-01
Series:Earth's Future
Online Access:https://doi.org/10.1029/2024EF004415
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author Wenjin Hao
Andrea Cominola
Andrea Castelletti
author_facet Wenjin Hao
Andrea Cominola
Andrea Castelletti
author_sort Wenjin Hao
collection DOAJ
description Abstract Gaining insights into current and future urban water demand patterns and their determinants is paramount for water utilities and policymakers to formulate water demand management strategies targeted to high water‐using groups and infrastructure planning strategies. In this paper, we explore the complex web of causality between climatic and socio‐demographic determinants, and urban water demand patterns across the Contiguous United States (CONUS). We develop a causal discovery framework based on a Neural Granger Causal (NGC) model, a machine learning approach that identifies nonlinear causal relationships between determinants and water demand, enabling comprehensive water demand determinants discovery and water demand forecasting across the CONUS. We train our convolutional NGC model using large‐scale open water demand data collected with a monthly resolution from 2010 to 2017 for 86 cities across the CONUS and three Köppen climate regions—Arid, Temperate, and Continental—utilizing this globally recognized climate classification system to ensure a robust analysis across varied environmental conditions. We discover that city‐scale urban water demand is primarily driven by short‐term memory effects. Climatic variables, particularly vapor pressure deficit and temperature, also stand out as primary determinants across all regions, and more evidently in Arid regions as they capture aridity and drought conditions. Our model achieves an average R2 higher than 0.8 for one‐month‐ahead prediction of water demand across various cities, leveraging the Granger causal relationships in different spatial contexts. Finally, the exploration of temporal dynamics among determinants and water demand amplifies the interpretability of the model results. This enhanced interpretability facilitates discovery of urban water demand determinants and generalization of water demand forecasting.
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spelling doaj-art-b58e0bd7b84f43cc9eaac5d047e0fe8d2025-01-28T15:40:37ZengWileyEarth's Future2328-42772025-01-01131n/an/a10.1029/2024EF004415Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous USWenjin Hao0Andrea Cominola1Andrea Castelletti2Department of Electronics, Information, and Bioengineering Politecnico di Milano Milan ItalyChair of Smart Water Networks Technische Universität Berlin Berlin GermanyDepartment of Electronics, Information, and Bioengineering Politecnico di Milano Milan ItalyAbstract Gaining insights into current and future urban water demand patterns and their determinants is paramount for water utilities and policymakers to formulate water demand management strategies targeted to high water‐using groups and infrastructure planning strategies. In this paper, we explore the complex web of causality between climatic and socio‐demographic determinants, and urban water demand patterns across the Contiguous United States (CONUS). We develop a causal discovery framework based on a Neural Granger Causal (NGC) model, a machine learning approach that identifies nonlinear causal relationships between determinants and water demand, enabling comprehensive water demand determinants discovery and water demand forecasting across the CONUS. We train our convolutional NGC model using large‐scale open water demand data collected with a monthly resolution from 2010 to 2017 for 86 cities across the CONUS and three Köppen climate regions—Arid, Temperate, and Continental—utilizing this globally recognized climate classification system to ensure a robust analysis across varied environmental conditions. We discover that city‐scale urban water demand is primarily driven by short‐term memory effects. Climatic variables, particularly vapor pressure deficit and temperature, also stand out as primary determinants across all regions, and more evidently in Arid regions as they capture aridity and drought conditions. Our model achieves an average R2 higher than 0.8 for one‐month‐ahead prediction of water demand across various cities, leveraging the Granger causal relationships in different spatial contexts. Finally, the exploration of temporal dynamics among determinants and water demand amplifies the interpretability of the model results. This enhanced interpretability facilitates discovery of urban water demand determinants and generalization of water demand forecasting.https://doi.org/10.1029/2024EF004415
spellingShingle Wenjin Hao
Andrea Cominola
Andrea Castelletti
Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous US
Earth's Future
title Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous US
title_full Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous US
title_fullStr Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous US
title_full_unstemmed Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous US
title_short Short‐Term Memory and Regional Climate Drive City‐Scale Water Demand in the Contiguous US
title_sort short term memory and regional climate drive city scale water demand in the contiguous us
url https://doi.org/10.1029/2024EF004415
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AT andreacominola shorttermmemoryandregionalclimatedrivecityscalewaterdemandinthecontiguousus
AT andreacastelletti shorttermmemoryandregionalclimatedrivecityscalewaterdemandinthecontiguousus