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基于双向深度卷积自编码器(BiL-DCAE)的波前传感器噪声振动信号深度学习去噪

Deep Learning-Based Denoising of Noisy Vibration Signals from Wavefront Sensors Using BiL-DCAE.

作者信息

Pan Yun, Luo Quan, Fan Yiyou, Chen Haoming, Zhou Donghua, Luo Hongsheng, Jiang Wei, Su Jinshan

机构信息

Key Laboratory of Vibration Signal Capture and Intelligent Processing, School of Electronic Engineering, Yili Normal University, 448 Jiefang Road, Yining 835000, China.

Key Laboratory of Intelligent Optical Sensing and Manipulation, College of Engineering & Applied Sciences, Ministry of Education, Nanjing University, 163 Xianlin Ave, Nanjing 210023, China.

出版信息

Sensors (Basel). 2025 Aug 13;25(16):5012. doi: 10.3390/s25165012.

Abstract

In geophysical exploration, laser remote sensing detection of seismic waves based on wavefront sensors can be used for geological detection and geophysical exploration. However, due to the high sensitivity of the wavefront sensor, it is easy to be affected by the environmental light and vibration, resulting in random noise, which is difficult to predict, thus significantly reducing the quality of the vibration signal and the detection accuracy. In this paper, a large amount of data is collected through a single-point vibration detection experiment, and the relationship between amplitude and spot centroid offset is analyzed and calculated. The real noisy vibration signal is denoised and signal enhanced by using a BiLSTM denoising convolutional self-encoder (BiL-DCAE). The irregular and unpredictable noise generated by various complex noise mixing is successfully suppressed, and its impact on the vibration signal is reduced. The signal-to-noise ratio of the signal is increased by 13.90 dB on average, and the noise power is reduced by 95.93%, which greatly improves the detection accuracy.

摘要

在地球物理勘探中,基于波前传感器的激光遥感地震波探测可用于地质探测和地球物理勘探。然而,由于波前传感器灵敏度高,容易受到环境光和振动的影响,产生难以预测的随机噪声,从而显著降低振动信号质量和探测精度。本文通过单点振动检测实验采集了大量数据,分析计算了振幅与光斑质心偏移之间的关系。利用双向长短期记忆去噪卷积自编码器(BiL-DCAE)对真实的含噪振动信号进行去噪和信号增强。成功抑制了各种复杂噪声混合产生的不规则且不可预测的噪声,并降低了其对振动信号的影响。信号的信噪比平均提高了13.90 dB,噪声功率降低了95.93%,大大提高了探测精度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7fcf/12390253/39d5a5c11dba/sensors-25-05012-g0A1.jpg

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