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16 - Soft Computing Methods and Water Management

from Part III - Sustainable Water Management under Future Uncertainty

Published online by Cambridge University Press:  17 March 2022

Qiuhong Tang
Affiliation:
Chinese Academy of Sciences, Beijing
Guoyong Leng
Affiliation:
Oxford University Centre for the Environment
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Summary

This chapter reviews recent developments in modern soft computing models, including heuristic algorithms, extreme learning machines and models based on deep learning strategies applied to water management. In this context, we describe the basics and fundamentals of the mentioned soft computing methods. We then provide a brief review of the models applied in three fields of water management: drought forecasting, evapotranspiration modelling and rainfall-runoff simulation. Thus, we provide guidelines for modern soft computing techniques applied to water management.

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Publisher: Cambridge University Press
Print publication year: 2022

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