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Water demand forecasting: review of soft computing methods. | LitMetric

Water demand forecasting: review of soft computing methods.

Environ Monit Assess

Department of Industrial and Systems Engineering, Russ College of Engineering and Technology, Ohio University, Athens, OH, 45701, USA.

Published: July 2017

AI Article Synopsis

  • Demand forecasting is essential for effective resource management, especially for water due to its scarcity, and involves using various soft computing techniques.
  • This study focuses on methods like artificial neural networks (ANNs), fuzzy logic, and support vector machines for water demand forecasting published between 2005 and 2015, highlighting that ANNs often perform best in short-term scenarios.
  • While multiple methods exist, there's potential for further advancements in water demand forecasting through more diverse soft computing approaches, including deep learning and ensemble methods.

Article Abstract

Demand forecasting plays a vital role in resource management for governments and private companies. Considering the scarcity of water and its inherent constraints, demand management and forecasting in this domain are critically important. Several soft computing techniques have been developed over the last few decades for water demand forecasting. This study focuses on soft computing methods of water consumption forecasting published between 2005 and 2015. These methods include artificial neural networks (ANNs), fuzzy and neuro-fuzzy models, support vector machines, metaheuristics, and system dynamics. Furthermore, it was discussed that while in short-term forecasting, ANNs have been superior in many cases, but it is still very difficult to pick a single method as the overall best. According to the literature, various methods and their hybrids are applied to water demand forecasting. However, it seems soft computing has a lot more to contribute to water demand forecasting. These contribution areas include, but are not limited, to various ANN architectures, unsupervised methods, deep learning, various metaheuristics, and ensemble methods. Moreover, it is found that soft computing methods are mainly used for short-term demand forecasting.

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Source
http://dx.doi.org/10.1007/s10661-017-6030-3DOI Listing

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