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Hybrid Model-Based Fault Detection and Diagnosis for the Axial Flow Compressor of a Combined-Cycle Power Plant

机译:基于混合模型的联合循环电厂轴流压气机故障检测与诊断

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摘要

This technical brief is focused on the research area of fault detection and diagnosis in a complex thermodynamical system: in this case, an axial flow compressor. Its main contribution is a new approach which combines a physical model and a multilayer per-ceptron (MLP) model using the best advantages of both types of modeling. Fault detection is carried out by an MLP model whose residuals against the real outputs of the system determine which observations could be considered abnormal. A physical model is used to generate different fault simulations by shifting physical parameters related to faults. After these simulations are performed, the different fault profiles obtained are collected within a fault dictionary. In order to identify and diagnose a fault, the anomalous residuals observed by the MLP model are compared with the fault profiles in the dictionary and a correlation that provides a hypothesis with respect to the causes of the fault is obtained. This methodology has been applied to axial compressor operational data obtained from a real power plant. A case study based on the successful diagnosis of compressor fouling is included in order to show the potential of the proposed method.
机译:本技术简介着重于复杂热力学系统中的故障检测和诊断研究领域:在这种情况下,是轴流压缩机。它的主要贡献是一种结合了物理模型和多层每个感知器(MLP)模型的新方法,同时利用了两种类型建模的最佳优势。故障检测是通过MLP模型执行的,该模型的残差相对于系统的实际输出的值决定了哪些观测值可能被视为异常。物理模型用于通过移动与故障相关的物理参数来生成不同的故障模拟。执行完这些模拟后,将获得的不同故障概况收集在故障字典中。为了识别和诊断故障,将MLP模型观察到的异常残差与字典中的故障概况进行比较,并获得相关性,该相关性为故障原因提供了假设。该方法已应用于从实际电厂获得的轴向压缩机运行数据。为了成功展示该方法的潜力,本文还基于成功诊断压缩机结垢的案例进行了研究。

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  • 来源
    《Journal of Engineering for Gas Turbines and Power》 |2013年第5期|054501.1-054501.5|共5页
  • 作者单位

    Institute for Research in Technology (IIT), ICAI School of Engineering, Comillas Pontifical University, Santa Cruz de Marcenado 26, 28015 Madrid, Spain;

    Institute for Research in Technology (IIT), ICAI School of Engineering, Comillas Pontifical University, Santa Cruz de Marcenado 26, 28015 Madrid, Spain;

    Institute for Research in Technology (IIT), ICAI School of Engineering, Comillas Pontifical University, Santa Cruz de Marcenado 26, 28015 Madrid, Spain;

    Direction of Technical Services, Iberdrola Generation S.A., Tomas Redondo 1, 28033 Madrid, Spain;

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