阿波罗21号——天文传送门

Spurthi Bhat, Rutuja Bhirud, Vaishnavi Bhokare, Pushkar S. Joglekar
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引用次数: 0

摘要

天文学家必须处理复杂的数据以获得重要的见解,这是一项耗时的任务。机器学习技术可以帮助天文学家以简化的方式分析天文数据。建议的web应用程序由三个不同的模型组成。第一个模型可以预测某一特定地点是否能看到流星雨,并给出流星的日期和名称。目前进行的实验表明,所提出的模型是100%可靠的。第二个模型可以根据开普勒望远镜的数据,预测一个天体是系外行星的候选者、确证者还是假阳性者。该模型采用随机森林分类器,准确率达到90.1%。第三个模型可以根据不同的天气情况预测火箭发射是否会延迟。该模型基于决策树分类器,准确率达到98.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Apollo XXI - an Astronomy Portal
Astronomers have to deal with complex data to gain important insights which is a time-consuming task. Machine Learning techniques can help astronomers to analyze astronomical data in a simplified manner. The proposed web application consists of three different models. The first model can predict whether some meteor shower can be seen from a particular location along with the date and the name of the meteors. The proposed model is found to be 100% reliable in the experiments carried out so far. The second model can predict whether a celestial body is a candidate, confirmed or false positive instance of an exoplanet, based on the Kepler telescope data. This model uses random forest classifier and the accuracy achieved is 90.1%. The third model can predict whether there will be a delay in rocket launch according to different weather conditions. This model is based on decision tree classifier and has an accuracy of 98.3%.
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