Flood hazard potential evaluation using decision tree state‐of‐the‐art models

Author:

Costache Romulus1234,Arabameri Alireza5,Costache Iulia6,Crăciun Anca2,Islam Abu Reza Md. Towfiqul78,Abba Sani Isah9,Sahana Mehebub10,Pandey Manish1112,Tin Tran Trung13,Pham Binh Thai14

Affiliation:

1. Department of Civil Engineering Transilvania University of Brasov Brasov Romania

2. Danube Delta National Institute for Research and Development Tulcea Romania

3. National Institute of Hydrology and Water Management Bucharest Romania

4. Research Institute of the University of Bucharest Bucharest Romania

5. Department of Geomorphology Tarbiat Modares University Tehran Iran

6. Faculty of Geography University of Bucharest Bucharest Romania

7. Department of Disaster Management Begum Rokeya University Rangpur Bangladesh

8. Department of Development Studies Daffodil International University Dhaka Bangladesh

9. Interdisciplinary Research Center for Membranes and Water Security King Fahd University of Petroleum & Minerals Dhahran Saudi Arabia

10. Department of Geography University of Manchester Manchester UK

11. University Center for Research & Development (UCRD) Chandigarh University Mohali Punjab India

12. Department of Civil Engineering University Institute of Engineering, Chandigarh University Mohali Punjab India

13. Department of Information Technology Swinburne Vietnam – FPT University Danang Vietnam

14. University of Transport Technology Ha Noi Vietnam

Abstract

AbstractFloods occur frequently in Romania and throughout the world and are one of the most devastating natural disasters that impact people's lives. Therefore, in order to reduce the potential damages, an accurate identification of surfaces susceptible to flood phenomena is mandatory. In this regard, the quantitative calculation of flood susceptibility has become a very popular practice in the scientific research. With the development of modern computerized methods such as geographic information system and machine learning models, and as a result of the possibility of combining them, the determination of areas susceptible to floods has become increasingly accurate, and the algorithms used are increasingly varied. Some of the most used and highly accurate machine learning algorithms are the decision tree models. Therefore, in the present study focusing on flood susceptibility zonation mapping in the Trotus River basin, the following algorithms were applied: forest by penalizing attribute—weights of evidence (forest‐PA‐WOE), best first decision tree—WOE, alternating decision tree—WOE, and logistic regression—WOE. The best performant, characterized by a maximum accuracy of 0.981, proved to be forest‐PA‐WOE, whereas in terms of flood exposure, an area of over 16.22% of the Trotus basin is exposed to high and very high floods susceptibility. The performances applied models in the present work are higher than the models applied in the previous studies in the same study area. Moreover, it should be noted that the accuracy of the models is similar with the accuracies of the decision tree models achieved in the studies focused on other areas across the world. Therefore, we can state that the models applied in the present research can be successfully used in by the researchers in other case studies. The findings of this research may substantially map the flood risk areas and further aid watershed managers in limiting and remediating flood damage in the data‐scarce regions. Moreover, the results of this study can be a very useful for the hazard management and planning authorities.

Publisher

Wiley

Subject

Physiology (medical),Safety, Risk, Reliability and Quality

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