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Applications of pattern classification to time-domain signals.

机译:模式分类在时域信号中的应用。

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摘要

Many different kinds of physics are used in sensors that produce time-domain signals, such as ultrasonics, acoustics, seismology, and electromagnetics. The waveforms generated by these sensors are used to measure events or detect flaws in applications ranging from industrial to medical and defense-related domains. Interpreting the signals is challenging because of the complicated physics of the interaction of the fields with the materials and structures under study. Often the method of interpreting the signal varies by the application, but automatic detection of events in signals is always useful in order to attain results quickly with less human error. One method of automatic interpretation of data is pattern classification, which is a statistical method that assigns predicted labels to raw data associated with known categories. In this work, we use pattern classification techniques to aid automatic detection of events in signals using features extracted by a particular application of the wavelet transform, the Dynamic Wavelet Fingerprint (DWFP), as well as features selected through physical interpretation of the individual applications. The wavelet feature extraction method is general for any time-domain signal, and the classification results can be improved by features drawn for the particular domain. The success of this technique is demonstrated through four applications: the development of an ultrasonographic periodontal probe, the identification of flaw type in Lamb wave tomographic scans of an aluminum pipe, prediction of roof falls in a limestone mine, and automatic identification of individual Radio Frequency Identification (RFID) tags regardless of its programmed code. The method has been shown to achieve high accuracy, sometimes as high as 98%.
机译:在产生时域信号的传感器中使用了许多不同种类的物理学,例如超声波,声学,地震学和电磁学。这些传感器生成的波形用于测量事件或检测从工业到医疗和国防相关领域的应用中的缺陷。由于场与所研究的材料和结构之间相互作用的物理复杂性,因此解释信号具有挑战性。解释信号的方法通常因应用程序而异,但是自动检测信号中的事件始终很有用,以便快速获得结果并且减少人为错误。自动解释数据的一种方法是模式分类,这是一种统计方法,它将预测的标签分配给与已知类别相关的原始数据。在这项工作中,我们使用模式分类技术,通过使用由小波变换的特定应用程序提取的特征,动态小波指纹(DWFP)以及通过对各个应用程序的物理解释选择的特征,来帮助自动检测信号中的事件。小波特征提取方法通常适用于任何时域信号,通过为特定域绘制的特征可以改善分类结果。这项技术的成功通过以下四个应用得到证明:超声波牙周探针的开发,铝管的兰姆波断层扫描中缺陷类型的识别,石灰石矿山顶板跌落的预测以及单个射频的自动识别识别(RFID)标签,无论其编程代码如何。该方法已显示出很高的准确性,有时甚至高达98%。

著录项

  • 作者

    Bertoncini, Crystal Ann.;

  • 作者单位

    The College of William and Mary.;

  • 授予单位 The College of William and Mary.;
  • 学科 Applied Mathematics.;Physics Acoustics.;Physics General.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 286 p.
  • 总页数 286
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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