LIGO interferometer is considered the most sensitive and complicated gravitational experimental equipment ever built. Its main objective is to detect the gravitational wave from the strongest events in the universe by observing if the length of its 4-kilometer arms change by a distance 10,000 times smaller than the diameter of a proton. Due to its sensitivity, interferometer is prone to the disturbance of external noises which affects the data being collected to detect the gravitational wave. These noises are commonly called by the gravitational-wave community as glitches. This study focuses on identifying those glitches using different deep transfer learning algorithms. The extensive experiment shows that algorithm with architecture VGG19 recorded the highest AUC-ROC among other experimented algorithm with 0.9898. While all of the experimented algorithm achieved a considerably high AUC-ROC, some of the algorithm suffered from class imbalance of the dataset which has a detrimental effect when identifying other classes.
翻译:LIGO 干涉仪被认为是有史以来建造的最敏感和最复杂的引力实验设备,其主要目的是通过观察其四千米宽臂的长度是否有比质子直径小10 000倍的距离变化来探测宇宙中最强事件产生的引力波。由于它的敏感性,干涉仪容易受到外部噪音的干扰,这些噪音影响到为探测引力波而收集的数据。这些噪音通常被引力波群称为闪烁器。这项研究的重点是利用不同的深层转移学习算法来查明这些亮点。广泛的实验显示,与VGG19号结构的算法记录了最高的AUC-ROC,而其他实验算法为0.9888,尽管所有实验算法都取得了相当高的AUC-ROC,但有些算法由于数据集的阶级不平衡而受到影响,而这种不平衡在识别其他类别时产生了有害影响。