论文标题
通过机器学习减少X射线成像探测器的背景
Reducing the background in X-ray imaging detectors via machine learning
论文作者
论文摘要
天文X射线检测器的灵敏度受仪器背景的限制。当观察低表面亮度源对未来的X射线观测值(包括雅典娜和未来美国领导的旗舰店或探测级X射线任务)至关重要的低表面亮度源时,背景尤其重要。在2keV上方,背景是由与航天器和检测器相互作用的宇宙射线引起的信号所主导的。我们开发了新型的机器学习算法,以识别下一代X射线成像检测器中的事件,并预测事件是由宇宙射线与天体物理X射线光子诱导的事件的可能性,从而增强了宇宙射线诱导的背景的过滤。我们发现,通过学习由单个主要的机器学习算法引起的次要事件之间的典型相关性,能够成功识别宇宙射线诱导的背景事件,这些事件被当前生成X射线任务中采用的传统过滤方法遗漏,从而将未重新注射的背景降低了30%。
The sensitivity of astronomical X-ray detectors is limited by the instrumental background. The background is especially important when observing low surface brightness sources that are critical for many of the science cases targeted by future X-ray observatories, including Athena and future US-led flagship or probe-class X-ray missions. Above 2keV, the background is dominated by signals induced by cosmic rays interacting with the spacecraft and detector. We develop novel machine learning algorithms to identify events in next-generation X-ray imaging detectors and to predict the probability that an event is induced by a cosmic ray vs. an astrophysical X-ray photon, enabling enhanced filtering of the cosmic ray-induced background. We find that by learning the typical correlations between the secondary events that arise from a single primary, machine learning algorithms are able to successfully identify cosmic ray-induced background events that are missed by traditional filtering methods employed on current-generation X-ray missions, reducing the unrejected background by as much as 30 per cent.