Abstract

Floods are threats seriously affecting people’s lives and property globally. Risk analysis such as flood susceptibility assessment is one of the critical approaches to mitigate flood impacts. However, the inadequate field survey and lack of data might hinder the mapping of flood susceptibility. The emergence of user-generated content (UGC) in the era of big data provides new opportunities for flood risk management. This research proposed a flood susceptibility assessment model using UGC as a potential data source and conducted empirical research in Ji’an County in China to make up for the lack of ground survey data in mountainous-hilly areas. This article used python crawlers to obtain the geographic location of the floods in Ji’an City from 2016 to 2019 from social media, and the state-of-the-art MaxEnt algorithm was adopted to obtain the flood occurrence map. The map was verified by the flood data crawled from reliable official media, which achieved an average AUC of 0.857% and an overall accuracy of 93.1%. Several novel indicators were used to evaluate the importance of conditioning factors from different perspectives. Land use, slope, and distance from the river were found to contribute most to the occurrence of floods. Our findings have shown that the proposed historical UG C-based model is practical and has good flood-risk-mapping performance. The importance of the conditioning factors to the occurrence of floods can also be ranked. The reports from stakeholders are a great supplement to the insufficient field survey data and tend to be valuable resources for flood disaster preparation and mitigation in the future. Finally, the limitations and future development directions of UGC as a data source for flood risk assessment are discussed.

Highlights

  • Flood is a very common and quite destructive natural disaster around the world, which is usually triggered by intense but short-term precipitation events [1]

  • This study explored the integration of social media data with flood risk assessment in mountainous-hilly areas

  • The inadequate field survey and lack of data hinder the assessment of flood sensitivity in mountainous and hilly areas

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Summary

Introduction

Flood is a very common and quite destructive natural disaster around the world, which is usually triggered by intense but short-term precipitation events [1]. Due to factors such as terrain and climate, floods are especially prone to occurring in mountainous-hilly areas [2,3,4,5]. Several southeastern provinces of China (e.g., Jiangxi, Fujian, and Guangdong) suffered the most from flooding due to the hilly terrain and high annual precipitation In these floodprone areas, flood can damage massive houses and crops, causing substantial wealth loss and increasing the possibility of regional poverty [8]. Due to the high risk of flood disasters, flood monitoring and assessment have become necessary strategies for these towns to formulate a sustainable land-use plan and increase urban resilience against climate change [9]

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