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Vibration source classification and propagation distance estimation system based on spectrogram and KELM

机译:基于谱图和KELM的振动源分类和传播距离估计系统

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摘要

Earth surface vibration signals source classification and propagation distance estimation attract increasing attention in recent years due to the wide applications in many areas. In this study, the authors develop a hybrid classification and propagation distance estimation algorithm for general earth surface vibration sources. The spectrogram (SPEC) feature characterising the energy distribution of vibrations is first developed for signal representation in this study. The kernel-based extreme learning machine (KELM) algorithm is then adopted for the vibration source classification and propagation distance estimation. Comparing with the conventional approaches, the proposed KELM + SPEC algorithm is not only effective in characterising the time- and frequency-domain features of vibrations, but also superior in accuracy and efficiency. To test the effectiveness of the proposed KELM + SPEC algorithm, experiments on real collected vibration signals are presented, where simulations on both periodic and aperiodic vibrations are carried out in the study. Comparisons to various existing vibration signal extraction and classification algorithms are provided to show the advantages of the proposed KELM + SPEC algorithm.
机译:近年来,由于在许多领域的广泛应用,地表振动信号源的分类和传播距离的估计引起了越来越多的关注。在这项研究中,作者开发了一种用于一般地面振动源的混合分类和传播距离估计算法。在这项研究中,首先开发出表征振动能量分布的频谱图(SPEC)功能来表示信号。然后采用基于核的极限学习机(KELM)算法进行振动源分类和传播距离估计。与传统方法相比,提出的KELM + SPEC算法不仅可以有效地表征振动的时域和频域特征,而且在精度和效率上也非常出色。为了测试所提出的KELM + SPEC算法的有效性,提出了对实际采集的振动信号的实验,并在此过程中对周期性和非周期性振动进行了仿真。比较了各种现有的振动信号提取和分类算法,以显示所提出的KELM + SPEC算法的优点。

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