Analysis of Rainfall Characteristics Caused by Urban Geological Disasters: Evidence from Wuhan

Journal: Architecture Engineering and Science DOI: 10.32629/aes.v4i4.1384

Ming Li1, Linyi Li2

1. Wuhan Meteorological Observatory, Wuhan 430040, Hubei, China
2. Cardiff University, Cardiff, UK

Abstract

The research indicates that geological disasters are primarily influenced by weather and climatic conditions, in addition to geological stability factors . Typically, the prediction and forecasting of geological disasters are based on geological conditions, combined with rainfall forecasts. Geological conditions serve as the foundation for the occurrence of geological hazards, often necessitating geological hazard zoning within the corresponding region through disaster investigations and associated calculations. This zoning is further analyzed to predict the risk of geological disaster occurrence based on factors such as prior rainfall frequency, rainfall intensity, and rain type characteristics.

Keywords

machine learning method, geological hazard, analysis

Funding

Wuhan Knowledge Innovation Project (2022022101015009); Key Project of Wuhan Meteorological Bureau (WHZ202201)

References

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Copyright © 2023 Ming Li, Linyi Li

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