Emergency Material Prediction in South China Based on Case Analysis Method

Emergency Material Prediction in South China Based on Case Analysis Method

Authors

  • Zhaolong Yang Institute of Disaster Prevention, Sanhe, Hebei, China
  • Yuanda Zhang Institute of Disaster Prevention, Sanhe, Hebei, China
  • Jianhao Qin Institute of Disaster Prevention, Sanhe, Hebei, China
  • Zhihui Pan Institute of Disaster Prevention, Sanhe, Hebei, China

DOI:

https://doi.org/10.53469/jsshl.2024.07(03).07

Keywords:

Fuzzy case-based reasoning method, Flood disasters, Emergency supplies, Demand forecasting

Abstract

After the occurrence of flood disasters, timely and rapid emergency response is one of the important tasks to improve the efficiency of emergency rescue and reduce disaster losses, and the prediction of material demand, which is the premise and basis of emergency response in disaster areas after disasters, is one of the key problems that need to be solved urgently. Considering the characteristics of poor information in the post-disaster disaster area, a post-disaster material demand forecasting technology based on fuzzy case reasoning was introduced. Firstly, on the basis of the analysis and summary of the existing case database, the key feature attributes of flood disasters that affect the demand for materials after the disaster are extracted, and the fuzzy set of flood disaster characteristics is established by introducing the concept of fuzzy sets, and then the membership degree of the specific feature attribute values of the new and old cases to the fuzzy set is calculated, in order to measure the similarity between the new and old cases, and the corrected measure closeness based on the weight of the feature attributes of the new and old cases is calculated, and the one with the largest closeness represents the best match between the new and old cases. Finally, an actual case is used to show the specific application process of the technology, and the existing reference cases that are closest to the new case are obtained, which can provide reference for post-disaster emergency rescue. The results show that the proposed method can provide a scientific prediction of the demand for emergency supplies and provide a basis for decision-making for the relevant emergency management departments in an actual flood disaster case in South China.

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Published

2024-06-30
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