Improved detection of transient events in wide area sky survey using convolutional neural networks

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Abstract

The aim of data science is to catch up with the data-intensive life style as well as the demand for decision support, which becomes common in various domains such as medical, education and other smart solutions. As such, high quality of data analysis is greatly desired for accurate and effective downstreaming exploitations. This is also true for the domain of astronomical survey like GOTO (Gravitational-wave Optical Transient Observer), where large amount of raw data has been collected daily. This is one of recognised projects that search for transient events with the new breed of optical survey telescopes that can detect the sky faster and deeper. This is accomplished by comparing the night-specific data with the reference such that new bright sources are obtained for further study. However, the huge size of data makes it difficult to sift by naked eyes, thus requiring an automated system. Yet, many conventional machine-learning models have been sub-optimal for this task, as true positives can hardly be recognised due to the nature of imbalance data. This motivates the exploration of convolutional neural networks or CNN for this binary classification problem. Based on existing technologies, the paper reports the original application of basic CNN model to a representative data, which has been designed and generated within the GOTO project. In addition to the improvement over those previous works, this empirical study also includes details of parameter analysis, which will be useful for practice and further investigation.

基于卷积神经网络的广域巡天瞬态事件改进检测
数据科学的目标是满足数据密集型生活方式和决策支持的需求,这在医疗、教育和其他智能解决方案等各个领域已变得十分普遍。因此,要想准确有效地进行下游开发,就需要高质量的数据分析。像 GOTO(引力波光学瞬变观测器)这样的天文观测领域也是如此,每天都要收集大量的原始数据。这是公认的利用新型光学巡天望远镜搜索瞬变事件的项目之一,这种望远镜可以更快、更深入地探测天空。其方法是将特定夜晚的数据与参考数据进行比较,从而获得新的亮源供进一步研究。然而,由于数据量巨大,肉眼难以筛选,因此需要一个自动化系统。然而,许多传统的机器学习模型在完成这项任务时并不理想,因为不平衡数据的特性很难识别真阳性。这就促使人们探索用卷积神经网络或 CNN 来解决二元分类问题。在现有技术的基础上,本文报告了基本 CNN 模型在代表性数据中的原始应用,这些数据是在 GOTO 项目中设计和生成的。与之前的工作相比,本实证研究不仅有所改进,还包括参数分析的细节,这将有助于实践和进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Data and information management
Data and information management Management Information Systems, Library and Information Sciences
CiteScore
3.70
自引率
0.00%
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0
审稿时长
55 days
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