Hazardous Asteroids Classification

Thai Duy Quy, Alvin Buana, Josh Lee, Rakha Asyrofi
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引用次数: 0

Abstract

Hazardous asteroid has been one of the concerns for humankind as fallen asteroid on earth could cost a huge impact on the society.Monitoring these objects could help predict future impact events, but such efforts are hindered by the large numbers of objects that pass in the Earth's vicinity. The aim of this project is to use machine learning and deep learning to accurately classify hazardous asteroids. A total of ten methods which consist of five machine learning algorithms and five deep learning models are trained and evaluated to find the suitable model that solves the issue. We experiment on two datasets, one from Kaggle and one we extracted from a web service called NeoWS which is a RESTful web service from NASA that provides information about near earth asteroids, it updates every day. In overall, the model is tested on two datasets with different features to find the most accurate model to perform the classification.
危险小行星分类
危险小行星一直是人类关注的问题之一,因为小行星落在地球上会对社会造成巨大影响。监测这些天体有助于预测未来的撞击事件,但由于地球附近有大量天体经过,这些工作受到了阻碍。该项目的目的是利用机器学习和深度学习对危险小行星进行准确分类。我们对包括五种机器学习算法和五种深度学习模型在内的共十种方法进行了训练和评估,以找到能解决问题的合适模型。我们在两个数据集上进行了实验,一个数据集来自 Kaggle,另一个数据集是从名为 "NeoWS "的网络服务中提取的。总体而言,该模型在两个具有不同特征的数据集上进行了测试,以找到最准确的分类模型。
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