Yu Hang, Adhikari Rana X
TAPIR, Walter Burke Institute for Theoretical Physics, MC 350-17, California Institute of Technology, Pasadena, CA, United States.
LIGO Laboratory, MC 100-36, California Institute of Technology, Pasadena, CA, United States.
Front Artif Intell. 2022 Mar 17;5:811563. doi: 10.3389/frai.2022.811563. eCollection 2022.
Currently, the sub-60 Hz sensitivity of gravitational-wave (GW) detectors like Advanced LIGO (aLIGO) is limited by the control noises from auxiliary degrees of freedom which nonlinearly couple to the main GW readout. One promising way to tackle this challenge is to perform nonlinear noise mitigation using convolutional neural networks (CNNs), which we examine in detail in this study. In many cases, the noise coupling is bilinear and can be viewed as a few fast channels' outputs modulated by some slow channels. We show that we can utilize this knowledge of the physical system and adopt an explicit "slow×fast" structure in the design of the CNN to enhance its performance of noise subtraction. We then examine the requirements in the signal-to-noise ratio (SNR) in both the target channel (i.e., the main GW readout) and in the auxiliary sensors in order to reduce the noise by at least a factor of a few. In the case of limited SNR in the target channel, we further demonstrate that the CNN can still reach a good performance if we use curriculum learning techniques, which in reality can be achieved by combining data from quiet times and those from periods with active noise injections.
目前,像高级激光干涉引力波天文台(aLIGO)这样的引力波(GW)探测器在60赫兹以下的灵敏度受到来自辅助自由度的控制噪声的限制,这些辅助自由度与主要的引力波读数存在非线性耦合。应对这一挑战的一种很有前景的方法是使用卷积神经网络(CNN)进行非线性噪声抑制,我们将在本研究中对此进行详细探讨。在许多情况下,噪声耦合是双线性的,可以看作是由一些慢通道调制的几个快通道的输出。我们表明,我们可以利用这种物理系统知识,在CNN的设计中采用明确的“慢×快”结构,以提高其噪声减法性能。然后,我们研究了目标通道(即主要的引力波读数)和辅助传感器中信噪比(SNR)的要求,以便将噪声至少降低几个数量级。在目标通道中信噪比有限的情况下,我们进一步证明,如果使用课程学习技术,CNN仍然可以达到良好的性能,在实际中,可以通过将安静时段的数据与有主动噪声注入时段的数据相结合来实现。