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基于POA-LMD-LSTM的分布式光纤声学信号降噪及P波初至拾取方法

Distributed fiber optic acoustic signal denoising and P-wave arrival picking method based on POA-LMD-LSTM

  • 摘要: 本文针对分布式光纤声学信号通常信噪比低、赤池信息准则(AIC)法P波初至拾取不稳定的问题,提出一种新的信号降噪和P波初至拾取方法。该方法使用鹈鹕算法优化的局部均值分解和长短期记忆网络(POA-LMD-LSTM)模型进行信号预测,并研发P波初至初拾取AIC改进方法。室内实验测试表明,与现有技术相比,所提的方法在P波初至信噪比提升、拾取稳定性和准确度等方面具有明显优势。降噪信号的信噪比平均提升了1.15倍,改进AIC法的P波初至拾取平均误差仅为1.0个采样点,明显低于S/L-Skewness法。

     

    Abstract: To address the common issues of low signal-to-noise ratio in distributed fiber optic acoustic signals and instability in P-wave first arrival picking using the Akaike Information Criterion (AIC) method, a new signal denoising and P-wave first arrival picking method has been proposed. This method leverages the Pelican Optimization Algorithm, Local Mean Decomposition, and Long Short-Term Memory network (POA-LMD-LSTM) to predict the signal, and an improved AIC method has been developed. Laboratory experimental tests indicate that the proposed method offers significant advantages over existing technologies in terms of improving the SNR of P-wave arrivals, picking stability, and accuracy. The signal-to-noise ratio of the denoised signal increases by an average factor of 1.15, and the average picking error of the P-wave arrival using the improved AIC method is only 1.0 sample point, which is significantly lower than that of the S/L-Skewness method.

     

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