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Journal of Engineering and Applied Sciences

Landslide Prediction Using Classifier Models
Sukriti Paul, Arpit Garg and S. Chethan

Abstract: Prediction systems have been flooding the IT industry ever since the concept of information retrieval came into existence. Every organization uses one of these prediction systems which helps the users of the system to predict useful information on the basis of their past records. The landslide prediction system aims to use this concept for not just different places but different terrains as well. NASA maintains the record of the landslides that have happened in the past, this record includes details such as area, terrain, rainfall, population, vegetation cover, etc. If this data can be classified on the basis of the patterns mined, it becomes very easy for the authorities to inform the people living in a particular area about landslides or development of a colony on a landslide prone area can be avoided. Not only that, reasons for landslide occurrence can be taken note off and be avoided. For example, lack of vegetation is causing landslides in an area. If this data is provided and wisely used, lives lost can be greatly reduced. This study aims to find ways to obtain this data.

How to cite this article
Sukriti Paul, Arpit Garg and S. Chethan, 2018. Landslide Prediction Using Classifier Models. Journal of Engineering and Applied Sciences, 13: 2301-2308.

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