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Particle filtering with adaptive resampling scheme for modal frequency identification and dispersion curves estimation in ocean acoustics

机译:具有自适应重采样方案的粒子滤波,用于海洋声学中的模频识别和色散曲线估计

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The goal of this work is to accurately estimate the modal frequencies and dispersion curves from a measured ocean acoustics signal. A particle filtering approach, a class of sequential Monte Carlo methods, is developed for modal frequency identification and dispersion curves estimation from a time-frequency representation of ocean acoustics signal. The adaptive resampling algorithm for enhancing the quality of a set of particles after likelihood calculation is implemented to improve the accuracy of the modal estimates as well as the dispersion curves of the signal. Results demonstrate the advantages in implementing the adaptive resampling into the conventional sequential importance sampling particle filter (SIS-PF) instead of using the sequential importance resampling (SIR) scheme. The noise robustness of the proposed method is demonstrated through examples where the realizations of different Signal-to-Noise Ratio (SNR) levels were used to test the performance of the adaptive resampling method. The results display the evidences that the adaptive resampling particle filter (AR-PF) is superior to the SIR-PF. Via root mean square error (RMSE), the AR-PF delivers smaller errors than those obtained by the SIR-PF for all SNR levels, emphasizing the benefit in incorporating the adaptive resampling into the PF for modal frequency identification and dispersion curves estimation of ocean acoustics signal. (C) 2019 Elsevier Ltd. All rights reserved.
机译:这项工作的目标是准确地估计来自测量的海洋声学信号的模频频率和色散曲线。一种粒子滤波方法,一类顺序蒙特卡罗方法是开发的,用于从海洋声学信号的时频表示的模频识别和色散曲线估计。实现了用于增强似然计算之后的一组粒子的质量的自适应重采样算法,以提高模态估计的精度以及信号的色散曲线。结果证明了在传统的顺序重新采样粒子滤波器(SIS-PF)中实现自适应重采样的优点,而不是使用顺序重读(SIR)方案。通过使用不同信噪比(SNR)水平的实施例来证明所提出的方法的噪声稳健性,用于测试自适应重采样方法的性能。结果显示了自适应重采样粒子滤波器(AR-PF)优于SIR-PF的证据。通过螺根均方误差(RMSE),AR-PF可提供比所有SNR水平的SIR-PF获得的误差更小,强调在将自适应重采样结合到PF中的适用于模态频率识别和海洋的色散曲线估计的益处声学信号。 (c)2019 Elsevier Ltd.保留所有权利。

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