Barbara Carla Coelho Batista, João Victor Dutra Balboa, C. Dima, Jordan Henrique de Souza, Marcelo Caniato Renhe, Gislaine dos Santos, L. C. Campos
{"title":"Computational Analysis of Environmental Risk Conditioners","authors":"Barbara Carla Coelho Batista, João Victor Dutra Balboa, C. Dima, Jordan Henrique de Souza, Marcelo Caniato Renhe, Gislaine dos Santos, L. C. Campos","doi":"10.3844/ajessp.2020.85.95","DOIUrl":null,"url":null,"abstract":"The intense urbanization process since the 1970s, coupled with the lack of adequate housing and social policies, has led large urban centers to disordered occupations and situations of geotechnical risk. These occupations were not implemented in a technically correct manner from the point of view of civil engineering, considering landscaping, drainage and paving, as well as edification. Areas at risk are regions where it is not recommended to build houses or facilities because they are very exposed to natural disasters, such as landslides and floods. In Brazil, the main institution responsible for monitoring areas at risk is the Civil Defense. There is a large database with history of occurrences of risk areas served by the Municipal Civil Defense, in Juiz de Fora city, Minas Gerais state - Brazil, from 1996 to 2017. Some important information contained in this database are the physical aspects of the soil, such as slope, geolocation, amplitude, curvature and accumulated flow, as well as processed data from the sliding risk susceptibility methodologies. The objective of this work is to apply machine learning techniques to identify, from the mentioned database, the susceptibility to the risk of environmental disasters in regions that have not yet participated in events attended by the municipal civil defense. This database is large and unbalanced, thus it is necessary to apply data analysis methodologies so that the machine learning model can correctly identify the standards with the least human intervention. In this study, areas were classified according to risk susceptibility. After the whole process, it was possible to analyze the performance of the algorithms and select some of them, which obtained the best results, with an accuracy of around 80%.","PeriodicalId":7487,"journal":{"name":"American Journal of Environmental Sciences","volume":"10 1","pages":"85-95"},"PeriodicalIF":0.0000,"publicationDate":"2020-05-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"American Journal of Environmental Sciences","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3844/ajessp.2020.85.95","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The intense urbanization process since the 1970s, coupled with the lack of adequate housing and social policies, has led large urban centers to disordered occupations and situations of geotechnical risk. These occupations were not implemented in a technically correct manner from the point of view of civil engineering, considering landscaping, drainage and paving, as well as edification. Areas at risk are regions where it is not recommended to build houses or facilities because they are very exposed to natural disasters, such as landslides and floods. In Brazil, the main institution responsible for monitoring areas at risk is the Civil Defense. There is a large database with history of occurrences of risk areas served by the Municipal Civil Defense, in Juiz de Fora city, Minas Gerais state - Brazil, from 1996 to 2017. Some important information contained in this database are the physical aspects of the soil, such as slope, geolocation, amplitude, curvature and accumulated flow, as well as processed data from the sliding risk susceptibility methodologies. The objective of this work is to apply machine learning techniques to identify, from the mentioned database, the susceptibility to the risk of environmental disasters in regions that have not yet participated in events attended by the municipal civil defense. This database is large and unbalanced, thus it is necessary to apply data analysis methodologies so that the machine learning model can correctly identify the standards with the least human intervention. In this study, areas were classified according to risk susceptibility. After the whole process, it was possible to analyze the performance of the algorithms and select some of them, which obtained the best results, with an accuracy of around 80%.
20世纪70年代以来强烈的城市化进程,加上缺乏适当的住房和社会政策,导致大城市中心出现无序的职业和岩土工程风险。从土木工程的角度来看,这些职业并没有以技术上正确的方式实施,考虑到景观美化,排水和铺路,以及教育。有风险的地区是不建议建造房屋或设施的地区,因为这些地区非常容易受到山体滑坡和洪水等自然灾害的影响。在巴西,负责监测危险地区的主要机构是民防部门。有一个大型数据库,其中包含1996年至2017年巴西米纳斯吉拉斯州Juiz de Fora市市民防局服务的风险区域的历史。该数据库中包含的一些重要信息是土壤的物理方面,如坡度、地理位置、振幅、曲率和累积流量,以及从滑动风险敏感性方法处理的数据。这项工作的目的是应用机器学习技术,从上述数据库中识别尚未参加市政民防活动的地区对环境灾害风险的易感性。该数据库庞大且不平衡,因此有必要应用数据分析方法,使机器学习模型能够在最少人为干预的情况下正确识别标准。在本研究中,根据风险易感性对区域进行了分类。在整个过程之后,可以对算法的性能进行分析,并从中选择一些算法,得到了最好的结果,准确率在80%左右。