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The application of time encoded signals to automated machine condition classification using neural networks

机译:时间编码信号在神经网络自动化机器状态分类中的应用

摘要

This thesis considers the classification of physical states in a simplified gearbox using acoustical data and simple time domain signal shape characterisation techniques allied to a basic feedforward multi-layer perceptron neural network. A novel extension to the signal coding scheme (TES), involving the application of energy based shape descriptors, was developed. This sought specifically to improve the techniques suitability to the identification of mechanical states and was evaluated against the more traditional minima based TES descriptors. The application of learning based identification techniques offers potential advantages over more traditional programmed techniques both in terms of greater noise immunity and in the reduced requirement for highly skilled operators. The practical advantages accrued by using these networks are studied together with some of the problems associated in their use within safety critical monitoring systems.Practical trials were used as a means of developing the TES conversion mechanism and were used to evaluate the requirements of the neural networks being used to classify the data. These assessed the effects upon performance of the acquisition and digital signal processing phases as well as the subsequent training requirements of networks used for accurate condition classification. Both random data selection and more operator intensive performance based selection processes were evaluated for training. Some rudimentary studies were performed on the internal architectural configuration of the neural networks in order to quantify its influence on the classification process, specifically its effect upon fault resolution enhancement.The techniques have proved to be successful in separating several unique physical states without the necessity for complex state definitions to be identified in advance. Both the computational demands and the practical constraints arising from the use of these techniques fall within the bounds of a realisable system.
机译:本文考虑了使用简单的时域信号形状特征技术和基本前馈多层感知器神经网络的声学数据对简化齿轮箱中的物理状态进行分类的方法。开发了信号编码方案(TES)的新型扩展,其中涉及基于能量的形状描述符的应用。这专门寻求提高技术以适合于机械状态的识别,并针对更传统的基于最小值的TES描述符进行了评估。基于学习的识别技术的应用在更大的抗噪能力和对高技能操作员的减少需求方面,提供了优于更传统的编程技术的潜在优势。研究了使用这些网络所产生的实际优势以及在安全关键监视系统中使用这些网络所带来的一些问题。实际试验被用作开发TES转换机制的手段,并被用于评估神经网络的需求用于对数据进行分类。这些评估对采集和数字信号处理阶段的性能以及用于精确条件分类的网络的后续训练要求的影响。评估了随机数据选择和基于操作员密集型性能的选择过程,以进行培训。为了量化神经网络对分类过程的影响,特别是其对故障分辨率增强的影响,对神经网络的内部结构进行了一些基础研究。该技术已证明可以成功地分离出几种独特的物理状态,而无需复杂的状态定义需要事先确定。由于使用这些技术而产生的计算需求和实际约束都落在了可实现系统的范围内。

著录项

  • 作者

    Lucking Walter;

  • 作者单位
  • 年度 1997
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
  • 中图分类

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