使用 NGBoost 分类器进行近地小行星分类

Al Mahmud Al Mamun, Md. Ashik Iqbal, Md Rasel Hossain, Mst. Mahfuza Sharmin, Md Ziaul Haque
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摘要

近地小行星(NEAs)是在接近地球的范围内运行的天体,为了解早期太阳系的形成提供了宝贵的资料,并因撞击事件而构成潜在的危险。这项研究全面概述了近地小行星,包括其历史意义、特点、撞击危险和前景。研究概述了 NASA 小行星分类数据集,并讨论了其对小行星分类和风险评估研究的重要性。此外,方法论部分介绍了利用 NGBoost 分类器进行预测建模任务,详细说明了数据收集、预处理、模型训练、评估和结果解释。NGBoost 分类器的结果表明,该分类器在小行星分类方面具有很高的准确性和性能指标,凸显了其在推进小行星分类工作和为行星防御战略提供信息方面的功效。近地小行星对我们的地球构成潜在威胁,对它们进行分类对于了解其特性和准确预测其运行轨迹至关重要。在这项研究中,我们探索了如何应用 NGBoost(一种功能强大的梯度提升框架)根据近地小行星的轨道和物理特征对其进行分类。我们提出了一个数据集,其中包括从已知近地小行星和非近地小行星中提取的特征,并展示了 NGBoost 在准确区分这些类别方面的功效。我们的研究结果表明,NGBoost 的准确率高达 99.22%,性能指标表现良好,表明 NGBoost 有潜力成为小行星分类的重要工具。
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Near-earth asteroids classification using NGBoost classifier
Near-Earth asteroids (NEAs) are celestial bodies that orbit within close to Earth, offering valuable insights into the early solar system's formation and posing potential hazards due to impact events. This work presents a comprehensive overview of NEAs, encompassing their historical significance, characteristics, impact hazards, and prospects. The study outlines the NASA Asteroids Classification Dataset and discusses its importance for research on asteroid classification and risk assessment. Furthermore, the methodology section delineates the utilization of the NGBoost classifier for predictive modeling tasks, detailing data collection, preprocessing, model training, evaluation, and result interpretation. Results from the NGBoost classifier demonstrate high accuracy and performance metrics in classifying asteroids, underscoring its efficacy in advancing asteroid classification efforts and informing planetary defense strategies. NEAs pose a potential threat to our planet, and their classification is essential for understanding their properties and predicting their trajectories accurately. In this research, we explore the application of NGBoost, a powerful gradient-boosting framework, for classifying NEAs based on their orbital and physical characteristics. We present a dataset comprising features extracted from known NEAs and non-NEAs and demonstrate the efficacy of NGBoost in accurately distinguishing between these classes. Our results indicate promising performance metrics with 99.22% accuracy, suggesting that NGBoost holds potential as a valuable tool in asteroid classification.
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