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A New Signal Processing Method for Acoustic Emission/Microseismic Data Analysis

机译:声发射/微震数据分析的新信号处理方法

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摘要

The acoustic emission/microseismic technique (AE/MS) has emerged as one of the most important techniques in recent decades and has found wide applications in different fields. Extraction of seismic event with precise timing is the first step and also the foundation for processing AE/MS signals. However, this process remains a challenging task for most AE/MS applications. The process has generally been performed by human analysts. However, manual processing is time consuming and subjective. These challenges continue to provide motivation for the search for new and innovative ways to improve the signal processing needs of the AE/MS technique. This research has developed a highly efficient method to resolve the problems of background noise and outburst activities characteristic of AE/MS data to enhance the picking of P-phase onset time. The method is a hybrid technique, comprising the characteristic function (CF), high order statistics, stationary discrete wavelet transform (SDWT), and a phase association theory. The performance of the algorithm has been evaluated with data from a coal mine and a 3-D concrete pile laboratory experiment. The accuracy of picking was found to be highly dependent on the choice of wavelet function, the decomposition scale, CF, and window size. The performance of the algorithm has been compared with that of a human expert and the following pickers: the short-term average to long-term average (STA/LTA), the Baer and Kradolfer, the modified energy ratio, and the short-term to long-term kurtosis. The results show that the proposed method has better picking accuracy (84% to 78% based on data from a coal mine) than the STA/LTA. The introduction of the phase association theory and the SDWT method in this research provided a novelty, which has not been seen in any of the previous algorithms.
机译:声发射/微地震技术(AE / MS)成为近几十年来最重要的技术之一,并且在不同领域中得到了广泛的应用。精确定时提取地震事件是第一步,也是处理AE / MS信号的基础。但是,对于大多数AE / MS应用程序而言,此过程仍然是一项艰巨的任务。该过程通常由人类分析人员执行。但是,手动处理既费时又主观。这些挑战继续为寻找新颖和创新的方式提供动力,以改善AE / MS技术的信号处理需求。这项研究已经开发出一种高效的方法来解决AE / MS数据的背景噪声和突出活动特征问题,以增强P相开始时间的选择。该方法是一种混合技术,包括特征函数(CF),高阶统计量,平稳离散小波变换(SDWT)和相位关联理论。该算法的性能已通过煤矿和3-D混凝土桩实验室实验的数据进行了评估。发现拾取的准确性高度依赖于小波函数,分解尺度,CF和窗口大小的选择。该算法的性能已与人类专家和以下选择器的性能进行了比较:短期平均值至长期平均值(STA / LTA),Baer和Kradolfer,修改后的能量比以及短期到长期峰度。结果表明,与STA / LTA相比,该方法具有更好的采摘精度(根据煤矿数据为84%至78%)。在这项研究中,相位关联理论和SDWT方法的引入提供了新颖性,这在以前的任何算法中都没有发现。

著录项

  • 作者

    Mborah, Charles.;

  • 作者单位

    Missouri University of Science and Technology.;

  • 授予单位 Missouri University of Science and Technology.;
  • 学科 Mining engineering.;Geophysical engineering.;Mechanical engineering.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 186 p.
  • 总页数 186
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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