Distributed dynamic process fault detection method based on mutual information

A fault detection and dynamic process technology, applied in program control, electrical program control, comprehensive factory control, etc., can solve problems such as ignoring useful information of complex dynamic characteristics of process data

Active Publication Date: 2016-09-21
北京安胜华信科技有限公司
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  • Abstract
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Problems solved by technology

However, traditional methods such as DPCA and DLV generally assume that the autocorrelation and cross-correlation between measurement variables are consistent in sampling time, ignoring the useful information that may be hidden by the complex dynamic characteristics of process data.

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  • Distributed dynamic process fault detection method based on mutual information
  • Distributed dynamic process fault detection method based on mutual information
  • Distributed dynamic process fault detection method based on mutual information

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Embodiment Construction

[0048] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments.

[0049] Such as figure 1 As shown, the present invention discloses a distributed dynamic process fault detection method based on mutual information. The method is aimed at the fault detection problem of modern industrial processes. First, the data collection system is used to collect data sets under normal operating conditions of the production process. Secondly, for each measurement variable of the process, the delay measurement values ​​of the previous l moments are introduced to form an augmented matrix. Then, the matrix sub-block corresponding to each measured variable is selected by using mutual information, and a PCA fault detection model is established. Finally, online monitoring is performed on the new sampling data, that is, constructing with BI Q Monitor indicators and decide whether the current monitoring data is normal.

[005...

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Abstract

The invention relates to a distributed dynamic process fault detection method based on mutual information. The distributed dynamic process fault detection method based on mutual information comprises the steps: introducing a time-delay measured value for each measured variable of the process; by means of the correlation index defined by mutual information, distinguishing the auto-correlation and the cross-correlation displayed at different sampling time for each measured variable of the process; respectively establishing a corresponding principal component analysis fault detection model for a data set subblock corresponding to each variable; and at last, during the process of implementing on-line monitoring, utilizing Bayesian reasoning to integrate the results of different fault detection models into one probability type monitoring index so as to make a final fault decision conveniently. Compared with the prior method, the distributed dynamic process fault detection method based on mutual information fully considers the auto-correlation and the cross-correlation among different measured variables at different sampling time, and avoids losing the useful information which may be hidden in the complex dynamic characteristic of the process data.

Description

technical field [0001] The invention relates to an industrial process fault detection method, in particular to a distributed dynamic process fault detection method based on mutual information. Background technique [0002] In recent years, data-driven fault detection methods have been paid attention to by researchers as an important technical means to ensure production safety and product quality stability because of their simplicity and versatility. Research on multivariate statistical process monitoring methods represented by Principal Component Analysis (PCA) has attracted extensive attention from industry and academia. potential information. This type of method can avoid establishing an accurate process mechanism model, so it is very suitable for monitoring modern large-scale and complex industrial processes. [0003] Generally speaking, the data collected in the production process is inevitably dynamic (or called autocorrelation) due to the short sampling interval. Am...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05B19/418
CPCY02P90/02G05B19/41875G05B2219/31357
Inventor 童楚东史旭华
Owner 北京安胜华信科技有限公司
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