Intelligent Method for Classifying the Level of Anthropogenic Disasters

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Khrystyna Lipianina-Honcharenko, Carsten Wolff, Anatoliy Sachenko, Ivan Kit, Diana Zahorodnia
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Abstract

Anthropogenic disasters pose a challenge to management in the modern world. At the same time, it is important to have accurate and timely information to assess the level of danger and take appropriate measures to eliminate disasters. Therefore, the purpose of the paper is to develop an effective method for assessing the level of anthropogenic disasters based on information from witnesses to the event. For this purpose, a conceptual model for assessing the consequences of anthropogenic disasters is proposed, the main components of which are the following ones: the analysis of collected data, modeling and assessment of their consequences. The main characteristics of the intelligent method for classifying the level of anthropogenic disasters are considered, in particular, exploratory data analysis using the EDA method, classification based on textual data using SMOTE, and data classification by the ensemble method of machine learning using boosting. The experimental results confirmed that for textual data, the best classification is at level V and level I with an error of 0.97 and 0.94, respectively, and the average error estimate is 0.68. For quantitative data, the classification accuracy of Potential Accident Level relative to Industry Sector is 77%, and the f1-score is 0.88, which indicates a fairly high accuracy of the model. The architecture of a mobile application for classifying the level of anthropogenic disasters has been developed, which reduces the time required to assess consequences of danger in the region. In addition, the proposed approach ensures interaction with dynamic and uncertain environments, which makes it an effective tool for classifying.
人为灾害等级智能分类方法研究
人为灾害对现代社会的管理提出了挑战。同时,重要的是要有准确和及时的信息来评估危险程度并采取适当的措施来消除灾害。因此,本文的目的是开发一种基于事件目击者信息的有效方法来评估人为灾害的程度。为此目的,提出了一个评价人为灾害后果的概念模型,其主要组成部分如下:分析收集到的数据、建立模型和评价其后果。考虑了人为灾害级别智能分类方法的主要特点,特别是基于EDA方法的探索性数据分析、基于SMOTE的文本数据分类和基于boosting的机器学习集成方法的数据分类。实验结果证实,对于文本数据,最好的分类是在V级和I级,误差分别为0.97和0.94,平均误差估计为0.68。对于定量数据,潜在事故等级相对于行业部门的分类准确率为77%,f1得分为0.88,表明模型具有较高的准确率。已经开发了用于对人为灾害级别进行分类的移动应用程序架构,从而减少了评估该地区危险后果所需的时间。此外,该方法保证了与动态和不确定环境的交互,使其成为一种有效的分类工具。
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
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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