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Radio frequency interference detection using machine learning

机译:使用机器学习进行射频干扰检测

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Radio frequency interference (RFI) has plagued radio astronomy which potentially might be as bad or worse by the time the Square Kilometre Array (SKA) comes up. RFI can be either internal (generated by instruments) or external that originates from intentional or unintentional radio emission generated by man. With the huge amount of data that will be available with up coming radio telescopes, a machine learning technique will be required to detect RFI. In this paper we present the result of applying such machine learning techniques to cross match RFI from the Karoo Array Telescope (KAT-7) data. We found that not all the features selected to characterise RFI are always important. We further investigated 3 machine learning techniques and conclude that the Random forest classifier performs with a 98% Area Under Curve and 91% recall in detecting RFI.
机译:射频干扰(RFI)困扰着射电天文学,到平方公里阵列(SKA)出现时,它可能会变得同样糟糕或更糟。 RFI可以是内部的(由仪器生成),也可以是外部的,其源于人为产生的有意或无意的无线电发射。随着即将出现的射电望远镜将获得大量数据,将需要一种机器学习技术来检测RFI。在本文中,我们介绍了将此类机器学习技术应用于来自Karoo阵列望远镜(KAT-7)数据的交叉匹配RFI的结果。我们发现,并非所有选择来表征RFI的功能始终都很重要。我们进一步研究了3种机器学习技术,得出的结论是,随机森林分类器在检测RFI时具有98%的曲线下面积和91%的查全率。

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