IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Water Demand Forecast and Efficient Supply Management

Water Demand Forecast and Efficient Supply Management
View Sample PDF
Author(s): Jaime Aguilar Ortiz (Universidad Politécnica de Pachuca, Mexico)
Copyright: 2025
Pages: 30
Source title: Smart Water Technology for Sustainable Management in Modern Cities
Source Author(s)/Editor(s): Jorge A. Ruiz-Vanoye (Universidad Politécnica de Pachuca, Mexico)and Ocotlán Díaz-Parra (Universidad Politécnica de Pachuca, Mexico)
DOI: 10.4018/979-8-3693-8074-1.ch007

Purchase

View Water Demand Forecast and Efficient Supply Management on the publisher's website for pricing and purchasing information.

Abstract

This chapter explores the use of artificial intelligence (AI) models for forecasting water demand and managing water supply systems efficiently. It highlights the need for accurate prediction models in urban areas, where fluctuating water demand poses significant challenges. Various AI techniques, including Artificial Neural Networks (ANN), Convolutional Neural Networks (CNN), and Long Short-Term Memory (LSTM) networks, are discussed for their ability to handle complex consumption data. The methodology for building these models is also addressed, covering data collection, preparation, and model training and validation. Optimization algorithms, such as Particle Swarm Optimization (PSO) and Genetic Algorithms (GA), are emphasized to enhance accuracy and robustness. Finally, a practical example illustrates the application of these AI methods in water management, highlighting AI's potential to improve the sustainability of water supply systems and identifying areas for future research to refine these models across various urban settings.

Related Content

Jorge A. Ruiz-Vanoye, Ocotlán Diaz-Parra, Francisco Marroquín-Gutiérrez, Julio C. Salgado-Ramírez, Julio Cesar Ramos-Fernández, Juan M. Xicotencatl-Pérez, Luis Arturo Ortiz-Suarez. © 2025. 30 pages.
Alejandro Fuentes-Penna, Raúl Gómez Cárdenas, Anayeli Silva Aguilar. © 2025. 20 pages.
Ashay Devidas Shende, Shrikant A. Tekade, Arpan Arunrao Deshmukh, Sandeep Prabhudas Tembhurkar, P. Selvakumar. © 2025. 30 pages.
Francisco R. Trejo-Macotela, Daniel Robles-Camarillo, Uriel A. Ramírez-Hernández. © 2025. 20 pages.
Shalom Akhai, Tanu Taneja. © 2025. 16 pages.
Ocotlan Diaz-Parra, Jorge A. Ruiz-Vanoye, Eric Simancas-Acevedo, Julio C. Ramos-Fernández, Juan M. Xicotencatl-Pérez, Francisco Marroquín-Gutierrez, Julio C. Salgado-Ramírez, Yaneth Reyes-Hernández. © 2025. 18 pages.
Jaime Aguilar Ortiz. © 2025. 30 pages.
Body Bottom