论文标题
重力波数据的时频分析
Time-Frequency Analysis of Gravitational Wave Data
论文作者
论文摘要
重力波检测器的数据记录为时间序列,除了任何引力波信号外,还包括来自无数噪声源的贡献。当有定期采样数据(例如基于地面和未来空间的干涉仪)时,通常会在频域中进行分析,在频域中,可以非常有效地对静止(时间不变)噪声过程进行建模。实际上,由于持续时间噪声瞬态短,持续时间较长的持续时间在功率谱中的持续时间较长,因此检测器噪声并不是静止的。这种非平稳性在不同频率的样品之间产生相关性,从而避免了频域分析的主要优势。在这里,提出了一种使用离散的,正交小波的波袋的引力波数据分析的替代时频方法。时间域数据被映射到时频像素的均匀网格上。对于局部固定的噪声 - 即具有绝热变化的频谱的噪声 - 时间频率像素是不相关的,这极大地简化了诸如可能性之类的数量的计算。此外,可以将来自二进制系统的引力波信号紧密表示为时频空间中的线集合,从而导致计算波形和可能性的计算成本,这些计算是时间样本数量的平方根,与时间或频率分析相反。这种方法的关键是具有直接在小波域中计算二进制信号的快速方法。多个快速变换方法将详细开发。
Data from gravitational wave detectors are recorded as time series that include contributions from myriad noise sources in addition to any gravitational wave signals. When regularly sampled data are available, such as for ground based and future space based interferometers, analyses are typically performed in the frequency domain, where stationary (time invariant) noise processes can be modeled very efficiently. In reality, detector noise is not stationary due to a combination of short duration noise transients and longer duration drifts in the power spectrum. This non-stationarity produces correlations across samples at different frequencies, obviating the main advantage of a frequency domain analysis. Here an alternative time-frequency approach to gravitational wave data analysis is proposed that uses discrete, orthogonal wavelet wavepackets. The time domain data is mapped onto a uniform grid of time-frequency pixels. For locally stationary noise - that is, noise with an adiabatically varying spectrum - the time-frequency pixels are uncorrelated, which greatly simplifies the calculation of quantities such as the likelihood. Moreover, the gravitational wave signals from binary systems can be compactly represented as a collection of lines in time-frequency space, resulting in a computational cost for computing waveforms and likelihoods that scales as the square root of the number of time samples, as opposed to the linear scaling for time or frequency based analyses. Key to this approach is having fast methods for computing binary signals directly in the wavelet domain. Multiple fast transform methods are developed in detail.