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Fault detection in the Tennessee Eastman benchmark process using dynamic principal components analysis based on decorrelated residuals (DPCA-DR)

机译:使用基于去相关残差(DPCA-DR)的动态主成分分析在田纳西伊士曼基准测试过程中进行故障检测

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摘要

Current multivariate control charts for monitoring large scale industrial processes are typically based on latent variable models, such as principal component analysis (PCA) or its dynamic counterpart when variables present auto-correlation (DPCA). In fact, it is usually considered that, under such conditions, DPCA is capable to effectively deal with both the cross- and auto-correlated nature of data. However, it can easily be verified that the resulting monitoring statistics (T2 and Q, also referred by SPE) still present significant auto-correlation. To handle this issue, a set of multivariate statistics based on DPCA and on the generation of decorrelated residuals were developed, that present low auto-correlation levels, and therefore are better positioned to implement SPC in a more consistent and stable way (DPCA-DR). The monitoring performance of these statistics was compared with that from other alternative methodologies for the well-known Tennessee Eastman process benchmark. From this study, we conclude that the proposed statistics had the highest detection rates on 19 out of the 21 faults, and are statistically superior to their PCA and DPCA counterparts. DPCA-DR statistics also presented lower auto-correlation, which simplifies their implementation and improves their reliability.
机译:当前用于监视大规模工业过程的多元控制图通常基于潜在变量模型,例如主变量分析(PCA)或变量存在自相关(DPCA)时的动态对应模型。实际上,通常认为,在这样的条件下,DPCA能够有效处理数据的交叉和自相关性质。但是,可以很容易地验证所得到的监视统计信息(T2和Q,也由SPE引用)仍然呈现出显着的自相关。为了解决这个问题,开发了一套基于DPCA和去相关残差的生成的多元统计数据,这些统计数据具有较低的自相关水平,因此可以更好地以更一致和更稳定的方式实施SPC(DPCA-DR )。将这些统计数据的监视性能与著名田纳西州伊士曼过程基准的其他替代方法的监视性能进行了比较。从这项研究中,我们得出结论,建议的统计数据在21个断层中的19个断层中具有最高的检测率,并且在统计上优于其PCA和DPCA。 DPCA-DR统计信息还显示出较低的自相关,从而简化了其实现并提高了其可靠性。

著录项

  • 作者

    Rato Tiago J.; Reis Marco S.;

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  • 年度 2013
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  • 原文格式 PDF
  • 正文语种 eng
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