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A novel subspace identification algorithm and its application in stochastic fault detection.

机译:一种新颖的子空间识别算法及其在随机故障检测中的应用。

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摘要

Subspace identification algorithms have drawn tremendous interests, not only because they are simple in parametrization, but also because of their numerical stability and moderate computational complexity. Started with the deterministic realization, subspace identification went through the development of stochastic realization theory and has become the solution to the combined deterministic-stochastic realization. Although subspace identification algorithms are quite successful in many applications, some drawbacks have been experienced. In this work, a novel subspace identification algorithm (SIMPCA) is proposed to address two aspects: the errors-in-variables case and closed-loop identification. In the proposed subspace identification algorithm, principal component analysis is applied to extract the parity subspace, which naturally falls into the category of errors-in-variables formulation and resembles total least squares. Because projecting out the future input is avoided, SIMPCA is applicable to closed-loop identification provided that the input perturbation is autocorrelated. Consistency analysis is performed for the proposed algorithm and the consistency conditions are given in several theorems. The effect of the column weighting in the subspace identification algorithms is discussed and the SIMPCA with column weighting is designed which shows improved efficiency. Two approaches for system order determination based on AIC index are proposed. A novel stochastic fault detection algorithm is proposed based on SIMPCA. Through monitoring the second order statistics, the SIMPCA-based fault detection algorithm shows significantly improved performance compared to regular PCA and DPCA. PCA and DPCA using second order indices are also proposed. The performance of the proposed subspace identification and fault detection algorithms is demonstrated through several simulation examples and compared with other benchmark methods.
机译:子空间识别算法引起了极大的兴趣,不仅因为它们的参数化简单,而且因为其数值稳定性和适度的计算复杂性。从确定性实现开始,子空间识别经历了随机实现理论的发展,并已成为组合确定性-随机实现的解决方案。尽管子空间识别算法在许多应用中都非常成功,但仍存在一些缺点。在这项工作中,提出了一种新颖的子空间识别算法(SIMPCA)来解决两个方面:变量错误情况和闭环识别。在提出的子空间识别算法中,应用主成分分析提取奇偶校验子空间,该子空间自然属于变量误差表述的类别,并且类似于总最小二乘。因为避免了预测将来的输入,所以只要输入扰动是自相关的,SIMPCA就适用于闭环识别。对提出的算法进行了一致性分析,并在几个定理中给出了一致性条件。讨论了列加权在子空间识别算法中的作用,并设计了具有列加权的SIMPCA,从而提高了效率。提出了两种基于AIC指标的系统订单确定方法。提出了一种基于SIMPCA的随机故障检测算法。通过监视二阶统计信息,与常规PCA和DPCA相比,基于SIMPCA的故障检测算法显示出显着改善的性能。还提出了使用二阶索引的PCA和DPCA。通过几个仿真实例证明了所提出的子空间识别和故障检测算法的性能,并与其他基准方法进行了比较。

著录项

  • 作者

    Wang, Jin.;

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Engineering Chemical.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 191 p.
  • 总页数 191
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 化工过程(物理过程及物理化学过程);
  • 关键词

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