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

IF 7.3 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES
Earths Future Pub Date : 2025-01-28 DOI:10.1029/2024EF004415
Wenjin Hao, Andrea Cominola, Andrea Castelletti
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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 R 2 ${R}^{2}$ 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.

Abstract Image

短期记忆和区域气候驱动美国城市尺度水需求
了解当前和未来的城市用水需求模式及其决定因素对于水务公司和决策者制定针对高用水群体的用水需求管理战略和基础设施规划战略至关重要。在本文中,我们探讨了气候和社会人口决定因素之间的复杂因果关系网络,以及整个美国(CONUS)的城市用水需求模式。我们开发了一个基于神经格兰杰因果(NGC)模型的因果发现框架,这是一种机器学习方法,可以识别决定因素与需水量之间的非线性因果关系,从而实现全面的需水量决定因素发现和整个CONUS的需水量预测。我们使用从2010年到2017年收集的大规模开放水需求数据来训练卷积NGC模型,这些数据来自美国86个城市和三个Köppen气候区(干旱、温带和大陆),利用这一全球公认的气候分类系统,以确保在不同的环境条件下进行稳健的分析。我们发现,城市尺度的城市用水需求主要受短期记忆效应驱动。气候变量,特别是蒸汽压差和温度,也是所有地区的主要决定因素,在干旱地区更为明显,因为它们反映了干旱和干旱条件。我们的模型利用不同空间背景下的格兰杰因果关系,对不同城市一个月前的水需求进行预测,平均r2 ${R}^{2}$高于0.8。最后,对决定因素和水需求之间的时间动态的探索增强了模型结果的可解释性。这种增强的可解释性有助于发现城市用水需求决定因素和推广用水需求预测。
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来源期刊
Earths Future
Earths Future ENVIRONMENTAL SCIENCESGEOSCIENCES, MULTIDI-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
11.00
自引率
7.30%
发文量
260
审稿时长
16 weeks
期刊介绍: Earth’s Future: A transdisciplinary open access journal, Earth’s Future focuses on the state of the Earth and the prediction of the planet’s future. By publishing peer-reviewed articles as well as editorials, essays, reviews, and commentaries, this journal will be the preeminent scholarly resource on the Anthropocene. It will also help assess the risks and opportunities associated with environmental changes and challenges.
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