Abstract

The accurate prediction of storm surge disasters’ direct economic losses plays a positive role in providing critical support for disaster prevention decision-making and management. Previous researches on storm surge disaster loss assessment did not pay much attention to the overfitting phenomenon caused by the data scarcity and the excessive model complexity. To solve these problems, this paper puts forward a new evaluation system for forecasting the regional direct economic loss of storm surge disasters, consisting of three parts. First of all, a comprehensive assessment index system was established by considering the storm surge disasters’ formation mechanism and the corresponding risk management theory. Secondly, a novel data augmentation technique, k-nearest neighbor-Gaussian noise (KNN-GN), was presented to overcome data scarcity. Thirdly, an ensemble learning algorithm XGBoost as a regression model was utilized to optimize the results and produce the final forecasting results. To verify the best-combined model, KNN-GN-based XGBoost, we conducted cross-contrast experiments with several data augmentation techniques and some widely-used ensemble learning models. Meanwhile, the traditional prediction models are used as baselines to the optimized forecasting system. The experimental results show that the KNN-GN-based XGBoost model provides more precise predictions than the traditional models, with a 64.1% average improvement in the mean absolute percentage error (MAPE) measurement. It could be noted that the proposed evaluation system can be extended and applied to the geography-related field as well.

Highlights

  • When a typhoon makes landfall, strong winds, low pressures, and high waves are generated

  • To solve the overfitting problem caused by data scarcity, we propose a novel data augmentation technique named the k-nearest neighbor-Gaussian noise (KNN-GN) algorithm

  • The evaluation system consists of two parts: (1) a comprehensive index system of storm surge disasters and (2) a KNN-GN-based XGBoost regression model

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Summary

Introduction

When a typhoon makes landfall, strong winds, low pressures, and high waves are generated. The wind stress and the low pressure at the typhoon center will cause the sea level to rise. High waves will result in an abnormal increase in tides. The combination of abnormal and normal tides will form a typhoon storm surge, which will increase the average water level from one meter to more than five meters. 1909 “Lichma” struck the southeast coast of China, causing eight provinces to suffer severe storm surge disasters. The maximum storm surge caused by it was as high as

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