Machine Learning and Simulation-Based Framework for Disaster Preparedness Prediction.

WSC(2021)

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摘要
Sufficient preparedness is essential to community resilience following natural disasters. Understanding disaster preparedness of residents in the affected area improves the efficiency and equity of relief operations. This research aims to develop a machine learning and simulation-based approach to predict disaster preparedness using various demographic features from multisource data. The proposed approach comprises four steps: (1) collecting and integrating various data sources, including the FEMA National Household Survey data, US census data, and county-level disaster declaration data; (2) training multiple classification models with the prepared data set and selecting the model with best prediction performance; (3) simulating resident demographic features for at the county level; (4) predicting disaster preparedness status with simulated data for a selected county. A case study is presented to demonstrate the reliability and applicability of the proposed framework.
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关键词
disaster preparedness prediction,sufficient preparedness,community resilience,natural disasters,affected area,relief operations,machine learning,simulation-based approach,multisource data,data sources,FEMA National Household Survey data,census data,county-level disaster declaration data,prepared data,prediction performance
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