The reliability of detecting source variability in sparsely and irregularly sampled X-ray light curves is investigated. This is motivated by the unprecedented survey capabilities of eROSITA onboard SRG, providing light curves for many thousand sources in its final-depth equatorial deep field survey. Four methods for detecting variability are evaluated: excess variance, amplitude maximum deviations, Bayesian blocks and a new Bayesian formulation of the excess variance. We judge the false detection rate of variability based on simulated Poisson light curves of constant sources, and calibrate significance thresholds. Simulations with flares injected favour the amplitude maximum deviation as most sensitive at low false detections. Simulations with white and red stochastic source variability favour Bayesian methods. The results are applicable also for the million sources expected in eROSITA's all-sky survey.
翻译:调查了在很少和不定期抽样的X射线光曲线中检测来源变异的可靠性,其动机是SRG机载的eROSITA具有前所未有的调查能力,在其最后深入赤道深度的实地调查中为数千个来源提供了光曲线,评估了四种可变性的检测方法:差异过大、振幅最大偏差、贝叶斯区块和一种新贝叶斯语的超差配方。我们根据常量源的模拟Poisson光曲线和校准值阈值来判断变异的假检测率。在低度的虚假探测中,注入照明弹的模拟有利于振幅最大偏差,因为在最敏感的情况下是低度的。用白色和红色蒸气源变异的模拟方法有利于贝叶氏方法。结果也适用于eROSITA全天空调查中预期的百万个来源。