论文标题
将Ligo数据质量流的信息纳入PYCBC搜索引力波
Incorporating information from LIGO data quality streams into the PyCBC search for gravitational waves
论文作者
论文摘要
我们提出了一种新方法,该方法可以说明随着时间的流逝,在PycBC搜索紧凑型二元凝聚力的重力波中,重力波检测器噪声的变化。我们使用来自LIGO数据质量流的信息,以监视每个检测器及其环境的状态来模拟每个检测器中噪声速率的变化。这些数据质量流使在检测器故障期间在数据中识别的候选者被更有效地拒绝为噪声。此方法允许将检测器状态的机器学习预测数据包括在PYCBC搜索的一部分中,从而将可检测到的重力波信号的总数提高了5%。当机器学习分类和手动生成的标志都用于搜索Ligo-Virgo的第三次观察运行中时,与不使用任何数据质量流相比,可检测到的重力波信号的总数增加了20%。我们还展示了该方法的灵活性,以包括来自大量其他任意数据流的信息,这些信息可能能够进一步提高搜索的灵敏度。
We present a new method which accounts for changes in the properties of gravitational-wave detector noise over time in the PyCBC search for gravitational waves from compact binary coalescences. We use information from LIGO data quality streams that monitor the status of each detector and its environment to model changes in the rate of noise in each detector. These data quality streams allow candidates identified in the data during periods of detector malfunctions to be more efficiently rejected as noise. This method allows data from machine learning predictions of the detector state to be included as part of the PyCBC search, increasing the the total number of detectable gravitational-wave signals by up to 5%. When both machine learning classifications and manually-generated flags are used to search data from LIGO-Virgo's third observing run, the total number of detectable gravitational-wave signals is increased by up to 20% compared to not using any data quality streams. We also show how this method is flexible enough to include information from large numbers of additional arbitrary data streams that may be able to further increase the sensitivity of the search.