A Review of Hydrodynamic and Machine Learning Approaches for Flood Inundation Modeling

Author:

Karim Fazlul1,Armin Mohammed Ali2,Ahmedt-Aristizabal David2ORCID,Tychsen-Smith Lachlan2,Petersson Lars23

Affiliation:

1. Managing Water Ecosystem Group, CSIRO Environment, Commonwealth Scientific and Industrial Research Organisation, Canberra 2601, Australia

2. Imaging and Computer Vision Group, CSIRO Data61, Canberra 2601, Australia

3. Machine Learning and Artificial Intelligence Future Science Platform, CSIRO Data61, Canberra 2601, Australia

Abstract

Machine learning (also called data-driven) methods have become popular in modeling flood inundations across river basins. Among data-driven methods, traditional machine learning (ML) approaches are widely used to model flood events, and recently deep learning (DL) approaches have gained more attention across the world. In this paper, we reviewed recently published literature on ML and DL applications for flood modeling for various hydrologic and catchment characteristics. Our extensive literature review shows that DL models produce better accuracy compared to traditional approaches. Unlike physically based models, ML/DL models suffer from the lack of using expert knowledge in modeling flood events. Apart from challenges in implementing a uniform modeling approach across river basins, the lack of benchmark data to evaluate model performance is a limiting factor for developing efficient ML/DL models for flood inundation modeling.

Funder

Commonwealth Scientific and Industrial Research Organisation

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

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