4.5 Article

Application of machine learning algorithms for flood susceptibility assessment and risk management

Journal

JOURNAL OF WATER AND CLIMATE CHANGE
Volume 12, Issue 6, Pages 2608-2623

Publisher

IWA PUBLISHING
DOI: 10.2166/wcc.2021.051

Keywords

flood risk; Hyderabad; hyperparameters; machine learning; RCPs

Funding

  1. Information Technology Research Academy (ITRA), Government of India under ITRA-water grant [ITRA/15(68)/water/IUFM/01]
  2. Council of Scientific and Industrial Research (CSIR), New Delhi [22(0782)/19/EMR-II]

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Assessing floods and their potential impact in climate change scenarios using machine learning algorithms can aid in sustainable management strategies. Among the five algorithms tested, XGBoost showed the best performance in predicting future flood locations and probabilities.
Assessing floods and their likely impact in climate change scenarios will enable the facilitation of sustainable management strategies. In this study, five machine learning (ML) algorithms, namely (i) Logistic Regression, (ii) Support Vector Machine, (iii) K-nearest neighbor, (iv) Adaptive Boosting (AdaBoost) and (v) Extreme Gradient Boosting (XGBoost), were tested for Greater Hyderabad Municipal Corporation (GHMC), India, to evaluate their clustering abilities to classify locations (flooded or non-flooded) for climate change scenarios. A geo-spatial database, with eight flood influencing factors, namely, rainfall, elevation, slope, distance from nearest stream, evapotranspiration, land surface temperature, normalised difference vegetation index and curve number, was developed for 2000, 2006 and 2016. XGBoost performed the best, with the highest mean area under curve score of 0.83. Hence, XGBoost was adopted to simulate the future flood locations corresponding to probable highest rainfall events under four Representative Concentration Pathways (RCPs), namely, 2.6, 4.5, 6.0 and 8.5 along with other flood influencing factors for 2040, 2056, 2050 and 2064, respectively. The resulting flood risk probabilities are predicted as 39-77%, 16-39%, 42-63% and 39-77% for the respective years.

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