论文标题
通过实时注入模拟FRB,最大程度地估算快速瞬态检测管道效率
Estimating fast transient detection pipeline efficiencies at UTMOST via real-time injection of mock FRBs
论文作者
论文摘要
使用不同检测管道的专用调查正在多个观测站进行,以查找更多快速的无线电爆发(FRB)。了解检测算法的效率和调查完整性函数对于实现基本FRB种群特性的无偏估计非常重要。实现系统端到端测试的一种方法是在实时数据流中注入模拟FRB并盲目地搜索它们。模拟FRB注入对于基于机器的基于机器的分类器特别有效,该分析表征是不切实际的。我们描述了在升级后的Molonglo天文台合成望远镜(巨大)中实时模拟FRB注入系统的首次实现(最大),并为一组20,000个模拟FRB注射介绍了我们的结果。注射已经清楚地了解了检测效率,并为脉冲宽度,通量和DM提供了调查完整性函数。在整个注入的DMS范围内以均匀效率恢复模拟FRB,但是发现恢复分数是宽度和信噪比(SNR)的强大功能。对于低宽度($ \ Lessim 20 $ MS)和高SNR($ \ gtrsim $ 9),恢复非常有效,恢复分数超过90%。我们发现,与注入值相比,射频干扰的存在导致恢复的SNR值最多降低20%。我们发现,对于最多使用的基于机器的基于机器的分类器,更宽的FRB变得越来越难。我们鼓励其他观测员实施实时注射设置,以进行类似的调查测试。
Dedicated surveys using different detection pipelines are being carried out at multiple observatories to find more Fast Radio Bursts (FRBs). Understanding the efficiency of detection algorithms and the survey completeness function is important to enable unbiased estimation of the underlying FRB population properties. One method to achieve end-to-end testing of the system is by injecting mock FRBs in the live data-stream and searching for them blindly. Mock FRB injection is particularly effective for machine-learning-based classifiers, for which analytic characterisation is impractical. We describe a first-of-its-kind implementation of a real-time mock FRB injection system at the upgraded Molonglo Observatory Synthesis Telescope (UTMOST) and present our results for a set of 20,000 mock FRB injections. The injections have yielded clear insight into the detection efficiencies and have provided a survey completeness function for pulse width, fluence and DM. Mock FRBs are recovered with uniform efficiency over the full range of injected DMs, however the recovery fraction is found to be a strong function of the width and Signal-to-Noise (SNR). For low widths ($\lesssim 20$ ms) and high SNR ($\gtrsim$ 9) the recovery is highly effective with recovery fractions exceeding 90%. We find that the presence of radio frequency interference causes the recovered SNR values to be systematically lower by up to 20% compared to the injected values. We find that wider FRBs become increasingly hard to recover for the machine-learning-based classifier employed at UTMOST. We encourage other observatories to implement live injection set-ups for similar testing of their surveys.