Water Energy Audit and Consumption Prediction Using IOT and Machine Learning

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  • Create Date 2 June, 2025
  • Last Updated 12 July, 2025

Authors : Mitesh P Sapkale , Hemraj V. Dhanade, Dr. Hemant T. Ingale,Dr. Anilkumar Vishwakarma, Dr. Ishwar Jadhav

DOI :10.46335/IJIES.2025.10.4.8

Abstract – Water, a vital resource for both human survival and industrial processes, faces increasing pressure due to population growth, climate change, and over-exploitation. Water conservation and efficiency, therefore, are paramount in ensuring sustainable usage. A significant aspect of this effort is optimizing water usage in both residential and industrial sectors, as well as efficiently managing the energy consumed for water delivery and treatment. To address these challenges, this paper presents an innovative approach for conducting Water Energy Audits and predicting water consumption patterns using the Internet of Things (IoT) and Machine Learning (ML).

The proposed system leverages IoT-based sensors deployed in various water distribution networks, pipelines, residential water meters, and industrial processes to gather real-time data on water consumption and energy usage. Parameters such as water flow, pressure, temperature, and energy consumption rates are continuously monitored, providing valuable insights into the operational state of water systems. By collecting vast amounts of data from these sensors, the system allows for the detection of inefficiencies such as leakage, overuse, or suboptimal system performance, which can lead to both water and energy wastage.