Integration of machine learning and hydrodynamic modeling to solve the extrapolation problem in flood depth estimation

Author:

Nguyen Huu Duy1ORCID,Dang Dinh Kha2,Nguyen Nhu Y2,Pham Van Chien3,Van Nguyen Thi Thao4,Nguyen Quoc-Huy1,Nguyen Xuan Linh1,Pham Le Tuan1,Pham Viet Thanh1,Bui Quang-Thanh1

Affiliation:

1. a Faculty of Geography, University of Science, Vietnam National University, Ha Noi, 334 Nguyen Trai, Thanh Xuan District, Hanoi, Vietnam

2. b Faculty of Hydrology, Meteorology and Oceanography, VNU University of Science, Vietnam National University, 334 Nguyen Trai, Thanh Xuan District, Hanoi, Vietnam

3. c Thuyloi University, 175 Tay Son, Dong Da, Hanoi, Vietnam

4. d Deparment of National Remote Sensing, Ha Noi, Vietnam

Abstract

Abstract Flood prediction is an important task, which helps local decision-makers in taking effective measures to reduce damage to the people and economy. Currently, most studies use machine learning to predict flooding in a given region; however, the extrapolation problem is considered a major challenge when using these techniques and is rarely studied. Therefore, this study will focus on an approach to resolve the extrapolation problem in flood depth prediction by integrating machine learning (XGBoost, Extra-Trees (EXT), CatBoost (CB), and light gradient boost machines (LightGBM)) and hydraulic modeling under MIKE FLOOD. The results show that the hydraulic model worked well in providing the flood depth data needed to build the machine learning model. Among the four proposed machine learning models, XGBoost was found to be the best at solving the extrapolation problem in the estimation of flood depth, followed by EXT, CB, and LightGBM. Quang Binh province was hit by floods with depths ranging from 0 to 3.2 m. Areas with high flood depths are concentrated along and downstream of the two major rivers (Gianh and Nhat Le – Kien Giang).

Funder

Đại học Quốc gia Hà Nội

Publisher

IWA Publishing

Subject

Management, Monitoring, Policy and Law,Atmospheric Science,Water Science and Technology,Global and Planetary Change

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