@article {10.3844/ajessp.2020.85.95, article_type = {journal}, title = {Computational Analysis of Environmental Risk Conditioners}, author = {Batista, Barbara Carla Coelho and Balboa, João Victor Dutra and Dima, Caio Vincenzo Reis and de Souza, Jordan Henrique and Renhe, Marcelo Caniato and dos Santos, Gislaine and Campos, Luciana Conceição Dias}, volume = {16}, number = {5}, year = {2020}, month = {Oct}, pages = {85-95}, doi = {10.3844/ajessp.2020.85.95}, url = {https://thescipub.com/abstract/ajessp.2020.85.95}, 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%.}, journal = {American Journal of Environmental Sciences}, publisher = {Science Publications} }