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River flood prediction using fuzzy neural networks: an investigation on automated network architecture

Usman T. Khan, Jianxun He, Caterina Valeo
Available Online 8 March 2018, wst2018107; DOI: 10.2166/wst.2018.107
Usman T. Khan
Department of Civil Engineering, York University, 4700 Keele Street, Toronto, ON, Canada M3 J 1P3
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  • For correspondence: utkhan@yorku.ca
Jianxun He
Department of Civil Engineering, University of Calgary, 2500 University Drive NW, Calgary, AB, Canada, T2N 1N4
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Caterina Valeo
Department of Mechanical Engineering, University of Victoria, P.O. Box 1700 STN CSC, Victoria, BC, Canada V8 W 2Y2
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Abstract

Urban floods are one of the most devastating natural disasters globally and improved flood prediction is essential for better flood management. Today, high-resolution real-time datasets for flood-related variables are widely available. These data can be used to create data-driven models for improved real-time flood prediction. However, data-driven models have uncertainty stemming from a number of issues: the selection of input data, the optimisation of model architecture, estimation of model parameters, and model output. Addressing these sources of uncertainty will improve flood prediction. In this research, a fuzzy neural network is proposed to predict peak flow in an urban river. The network uses fuzzy numbers to account for the uncertainty in the output and model parameters. An algorithm that uses possibility theory is used to train the network. An adaptation of the Automated Neural Pathway Strength Feature Selection (ANPSFS) method is used to select the input features. A search and optimisation algorithm is used to select the network architecture. Data for the Bow River in Calgary, Canada are used to train and test the network.

  • flood prediction
  • machine learning
  • risk assessment
  • uncertainty analysis
  • First received 24 October 2017.
  • Accepted in revised form 26 February 2018.
  • © IWA Publishing 2018
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River flood prediction using fuzzy neural networks: an investigation on automated network architecture
Usman T. Khan, Jianxun He, Caterina Valeo
Water Science and Technology Mar 2018, wst2018107; DOI: 10.2166/wst.2018.107
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River flood prediction using fuzzy neural networks: an investigation on automated network architecture
Usman T. Khan, Jianxun He, Caterina Valeo
Water Science and Technology Mar 2018, wst2018107; DOI: 10.2166/wst.2018.107

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Keywords

Flood prediction
Machine learning
risk assessment
uncertainty analysis
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