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首页> 外文期刊>Classical and Quantum Gravity: An Interantional Journal of Gravity Geometry of Field Theories Supergravity Cosmology >A neural network-based approach to noise identification of interferometric GW antennas: the case of the 40 m Caltech laser interferometer
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A neural network-based approach to noise identification of interferometric GW antennas: the case of the 40 m Caltech laser interferometer

机译:基于神经网络的干涉式GW天线噪声识别方法:以40 m Caltech激光干涉仪为例

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In this paper, a neural network-based approach is presented for the real time noise identification of a GW laser interferometric antenna. The 40 m Caltech laser interferometer output data provide a realistic test bed for noise identification algorithms because of the presence of many relevant effects: violin resonances in the suspensions, main power harmonics, ring-down noise from servo control systems, electronic noises, glitches and so on. These effects can be assumed to be present in all the first interferometric long baseline GW antennas such as VIRGO, LIGO, GEO and TAMA. For noise identification, we used the Caltech-40 m laser interferometer data. The results we obtained are pretty good notwithstanding the high initial computational cost. The algorithm we propose is general and robust, taking into account that it does not require a priori information on the data, nor a precise model, and it constitutes a powerful tool for time series data analysis. [References: 42]
机译:在本文中,提出了一种基于神经网络的方法用于GW激光干涉天线的实时噪声识别。由于存在许多相关影响,Caltech激光干涉仪的40 m输出数据为噪声识别算法提供了现实的测试平台:悬架中的小提琴共振,主电源谐波,伺服控制系统产生的振铃噪声,电子噪声,毛刺和以此类推。可以假定这些影响出现在所有第一批干涉式长基线GW天线中,例如VIRGO,LIGO,GEO和TAMA。为了识别噪声,我们使用了Caltech-40 m激光干涉仪数据。尽管初始计算成本很高,但我们获得的结果还是不错的。考虑到该算法不需要有关数据的先验信息,也不需要精确的模型,因此,我们提出的算法是通用且健壮的,并且它构成了用于时间序列数据分析的强大工具。 [参考:42]

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