One of the main features of interest in analysing the light curves of stars is the underlying periodic behaviour. The corresponding observations are a complex type of time series with unequally spaced time points and are sometimes accompanied by varying measures of accuracy. The main tools for analysing these type of data rely on the periodogram-like functions, constructed with a desired feature so that the peaks indicate the presence of a potential period. In this paper, we explore a particular periodogram for the irregularly observed time series data, similar to Thieler et. al. (2013). We identify the potential periods at the appropriate peaks and more importantly with a quantifiable uncertainty. Our approach is shown to easily generalise to non-parametric methods including a weighted Gaussian process regression periodogram. We also extend this approach to correlated background noise. The proposed method for period detection relies on a test based on quadratic forms with normally distributed components. We implement the saddlepoint approximation, as a faster and more accurate alternative to the simulation-based methods that are currently used. The power analysis of the testing methodology is reported together with applications using light curves from the Hunting Outbursting Young Stars citizen science project.
翻译:分析恒星光曲线的主要特点之一是基本的周期行为。相应的观测是一种复杂的时间序列,时间点间隔不均,有时还伴有不同的精确度测量。分析这类数据的主要工具依赖于周期图式功能,而这种功能的构造符合预期特征,因此峰值表明存在潜在时期。在本文件中,我们探索了与Thieler等人(2013年)类似的非正常观察时间序列数据的特定时间段图。我们在适当的峰值上确定了潜在时间段,更重要的是可以量化的不确定性。我们的方法表明,很容易概括非参数方法,包括加权高频进程回归时间段图。我们还将这一方法扩大到相关的背景噪音。拟议时期探测方法依赖于基于通常分布成份的四边形表式的测试。我们使用马鞍点近似,作为目前使用的模拟方法的一种更快和更准确的替代方法。测试方法的能量分析与使用“追击年轻恒星”公民科学项目的轻曲线的应用一起报告。