LGCYDec 30, 2024

Urban Water Consumption Forecasting Using Deep Learning and Correlated District Metered Areas

arXiv:2501.00158v13 citationsh-index: 222025 IEEE Symposia on Computational Intelligence for Energy, Transport and Environmental Sustainability (CIETES Companion)
Originality Incremental advance
AI Analysis

This work addresses forecasting challenges for water utilities and policymakers in urban water management, but it is incremental as it builds on existing deep learning approaches with a specific correlation-based enhancement.

The paper tackled short-term water consumption forecasting for District Metered Areas (DMAs) by proposing a deep learning method that uses correlated DMAs' patterns to address data limitations and improve accuracy, showing in a real-world study that it outperforms classical models and enhances forecasting even with local data available.

Accurate water consumption forecasting is a crucial tool for water utilities and policymakers, as it helps ensure a reliable supply, optimize operations, and support infrastructure planning. Urban Water Distribution Networks (WDNs) are divided into District Metered Areas (DMAs), where water flow is monitored to efficiently manage resources. This work focuses on short-term forecasting of DMA consumption using deep learning and aims to address two key challenging issues. First, forecasting based solely on a DMA's historical data may lack broader context and provide limited insights. Second, DMAs may experience sensor malfunctions providing incorrect data, or some DMAs may not be monitored at all due to computational costs, complicating accurate forecasting. We propose a novel method that first identifies DMAs with correlated consumption patterns and then uses these patterns, along with the DMA's local data, as input to a deep learning model for forecasting. In a real-world study with data from five DMAs, we show that: i) the deep learning model outperforms a classical statistical model; ii) accurate forecasting can be carried out using only correlated DMAs' consumption patterns; and iii) even when a DMA's local data is available, including correlated DMAs' data improves accuracy.

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