Develop a situation-based prioritization program as a road map to enhance the pre-resilience in flood management using machine learning methods

IF 0.9 Q4 ENVIRONMENTAL STUDIES
S. Samadi, M. Taslimi
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引用次数: 0

Abstract

Purpose This study aims to review the features and challenges of the flood relief chain, identifies administrative measures during and after the flood occurrence and prioritizes them using two machine learning (ML) and analytic hierarchy process (AHP) methods. This paper aims to provide a prioritization program based on flood conditions that optimize flood management and improves society’s resilience against flood occurrence. Design/methodology/approach The collected database in this paper has been trained by using ML algorithms, including support vector machine (SVM), Naive Bayes (NB) and k-nearest neighbors (kNN), to create a prioritization program. Furthermore, the administrative measures in two phases of during and after the flood are prioritized by using the AHP method and questionnaires completed by experts and relief workers in flood management. Findings Among the ML algorithms, the SVM method was selected with 91.37% accuracy. The prioritization program provided by the model, which distinguishes it from other existing models, considers five conditions of the flood occurrence to prioritize actions (season, population affected, area affected, damage to houses and human lives lost). Therefore, the model presents a specific plan for each flood with different occurrence conditions. Research limitations/implications The main limitation is the lack of a comprehensive data set to determine the effect of all flood conditions on the prioritization program and the relief activities that have been done in previous flood disasters. Originality/value The originality of this paper is the use of ML methods to prioritize administrative measures during and after the flood and presents a prioritization program based on each flood’s conditions. Therefore, through this program, the authority and society can control the adverse impacts of flood more effectively and help to reduce human and financial losses as much as possible.
开发一个基于情况的优先级排序程序作为路线图,以使用机器学习方法增强洪水管理的预恢复能力
目的本研究旨在回顾洪水救援链的特点和挑战,确定洪水发生期间和之后的行政措施,并使用两种机器学习(ML)和层次分析法(AHP)对其进行优先排序。本文旨在提供一个基于洪水条件的优先计划,以优化洪水管理,提高社会抵御洪水的能力。设计/方法论/方法本文中收集的数据库通过使用ML算法进行训练,包括支持向量机(SVM)、朴素贝叶斯(NB)和k近邻(kNN),以创建优先级排序程序。此外,通过使用AHP方法和洪水管理专家和救援人员完成的问卷调查,对洪水期间和之后两个阶段的行政措施进行了优先排序。结果在ML算法中,选择SVM方法的准确率为91.37%。该模型提供的优先级排序程序将其与其他现有模型区分开来,它考虑了洪水发生的五个条件,以确定行动的优先级(季节、受影响人口、受影响地区、房屋损坏和人命损失)。因此,该模型为不同发生条件下的每一次洪水提供了具体的计划。研究局限性/含义主要局限性是缺乏一个全面的数据集来确定所有洪水条件对优先顺序计划和以往洪水灾害中所做的救援活动的影响。独创性/价值本文的独创性是使用ML方法对洪水期间和之后的行政措施进行优先级排序,并根据每次洪水的情况提出了优先级排序程序。因此,通过该计划,当局和社会可以更有效地控制洪水的不利影响,并有助于尽可能减少人力和财力损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.40
自引率
6.20%
发文量
49
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