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Vibration analysis for ocean turbine reliability models.

机译:海洋涡轮机可靠性模型的振动分析。

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摘要

Submerged turbines which harvest energy from ocean currents are an important potential energy resource, but their harsh and remote environment demands an automated system for machine condition monitoring and prognostic health monitoring (MCM/PHM). For building MCM/PHM models, vibration sensor data is among both the most useful (because it can show abnormal behavior which has yet to cause damage) and the most challenging (because due to its waveform nature, frequency bands must be extracted from the signal).;To perform the necessary analysis of the vibration signals, which may arrive rapidly in the form of data streams, we develop three new wavelet-based transforms (the Streaming Wavelet Transform, Short-Time Wavelet Packet Decomposition, and Streaming Wavelet Packet Decomposition) and propose modifications to the existing Short-Time Wavelet Transform. We also prepare post-processing techniques to resolve additional problems such as interpreting wavelet data in a fully-streaming format, automatically choosing the appropriate transformation depth without performing classification, and building models which can perform state identification correctly even as the turbine’s environment changes. Collectively, these new approaches solve problems not currently dealt with by existing algorithms and offer important improvements. The proposed algorithms allow for data to be processed in a fully-streaming manner. These algorithms also create and select frequency-band features which focus on the areas of the signal most important to MCM/PHM, producing only the information necessary for building models (or removing all unnecessary information) so models can run on less powerful hardware. Finally, we demonstrate models which can work in multiple environmental conditions.;To evaluate these algorithms, along with the Short-Time Fourier Transform which is often neglected in the context of MCM/PHM, we perform six case studies on data from two different physical machines, a fan and a dynamometer model of the ocean turbine. Our results show that many of the transforms give similar results in terms of performance, but their different properties as to time complexity, ability to operate in a fully streaming fashion, and number of generated features may make some more appropriate than others in particular applications, such as when streaming data or hardware limitations are extremely important (e.g., ocean turbine MCM/PHM).
机译:从海流中收集能量的浸没式涡轮机是重要的潜在能源,但其恶劣和偏远的环境要求使用自动化系统进行机器状态监测和预后健康监测(MCM / PHM)。对于构建MCM / PHM模型,振动传感器数据既是最有用的(因为它可以显示尚未引起损坏的异常行为),又是最具挑战性的(因为其波形性质,因此必须从信号中提取频带) );;为了对可能以数据流形式快速到达的振动信号进行必要的分析,我们开发了三种新的基于小波的变换(流小波变换,短时小波包分解和流小波包分解) ),并提出对现有短时小波变换的修改。我们还准备了后处理技术,以解决其他问题,例如以完全流格式解释小波数据,自动选择合适的变换深度而不进行分类,以及建立即使涡轮环境变化也可以正确执行状态识别的模型。这些新方法共同解决了现有算法当前未解决的问题,并提供了重要的改进。所提出的算法允许以完全流传输的方式处理数据。这些算法还创建并选择频带特征,这些频带特征着重于对MCM / PHM最重要的信号区域,仅生成构建模型所需的信息(或删除所有不必要的信息),因此模型可以在功能较弱的硬件上运行。最后,我们演示了可以在多种环境条件下工作的模型。;为了评估这些算法,以及在MCM / PHM中经常被忽略的短时傅立叶变换,我们对来自两个不同物理场的数据进行了六个案例研究机器,风扇和海洋涡轮机的测力计模型。我们的结果表明,许多变换在性能方面都提供了相似的结果,但是它们在时间复杂度,以完全流方式运行的能力以及所生成特征的数量方面的不同属性可能会使某些变换比某些特定应用更合适,例如流数据或硬件限制极为重要时(例如,海洋涡轮MCM / PHM)。

著录项

  • 作者

    Wald, Randall David.;

  • 作者单位

    Florida Atlantic University.;

  • 授予单位 Florida Atlantic University.;
  • 学科 Alternative Energy.;Computer Science.;Engineering Marine and Ocean.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 156 p.
  • 总页数 156
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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