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A machine learning approach for forecasting and visualising flood inundation information.

Authors :
Kabir, Syed
Patidar, Sandhya
Pender, Gareth
Source :
Proceedings of ICE: Water Management. Feb2021, Vol. 174 Issue 1, p27-41. 15p.
Publication Year :
2021

Abstract

This paper presents a new data-driven modelling framework for forecasting probabilistic flood inundation maps for real-time applications. The proposed end-to-end (rainfall–inundation) method combines a suite of machine learning (ML) algorithms to forecast discharge and deliver probabilistic flood inundation maps with a 3 h lead time. To classify wet/dry cells, the method applies rainfall–discharge models based on random forest technique on top of classifiers based on multi-layer perceptron. The hybrid modelling framework was tested using two subsets of data created from an observed fluvial flood event in a small flood-prone town in the UK. The results showed that the model can effectively emulate the outcomes of a hydrodynamic model (Flood Modeller (FM)) with considerably high accuracy measured in terms of flood arrival time error and classification accuracy. The mean arrival time difference between the proposed model and the hydrodynamic model was 1 h 53 min. The classification accuracy was measured against a synthetic aperture radar image, producing accuracies of 88.22% and 86.58% for the proposed data-driven model and FM, respectively. The key features of the proposed modelling framework are that it is simple to implement, detects flooded cells effectively and substantially reduces computational time. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
17417589
Volume :
174
Issue :
1
Database :
Academic Search Index
Journal :
Proceedings of ICE: Water Management
Publication Type :
Academic Journal
Accession number :
148748824
Full Text :
https://doi.org/10.1680/jwama.20.00002