A kind of intermittent process monitoring data processing method

A data processing and data monitoring technology, applied in the field of control science and engineering, can solve problems such as unsatisfactory clustering results, easy to fall into local optimal solution in iterative search, accurate division and modeling of unfavorable intermittent processes, etc.

Active Publication Date: 2020-10-30
CIVIL AVIATION UNIV OF CHINA
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Problems solved by technology

However, these two methods have different degrees of limitations in the stage division
K-means clustering is relatively random when selecting the initial cluster center, and is sensitive to noise and outliers, which will lead to unstable clustering results and limited clustering quality
Fuzzy C-means clustering is a local search algorithm, which needs to manually determine the number of cluster centers, and its iterative search tends to fall into a local optimal solution, so the clustering results are often unsatisfactory.
In fact, for a complex batch process, it is difficult to accurately estimate the number of cluster centers without prior knowledge or experience, so it is not conducive to the accurate division and modeling of batch processes

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  • A kind of intermittent process monitoring data processing method
  • A kind of intermittent process monitoring data processing method
  • A kind of intermittent process monitoring data processing method

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[0058] In order to enable those skilled in the art to better understand the technical solutions of the present invention, the present invention will be further described in detail below in conjunction with the accompanying drawings and preferred embodiments.

[0059] Such as figure 1 As shown, the batch process monitoring data division and statistical modeling method provided by the present invention include the following steps carried out in order:

[0060] (1) Using the improved affine propagation clustering algorithm for data pre-division;

[0061] The data pre-division first needs to do the following to the original sampling data: figure 2 The preprocessing shown is to expand the original three-dimensional monitoring data X (I×J×K) along the time axis to obtain K time slice matrices X k (I×J),k=1,2,…,K, then X k (I×J) standardization, centralization, and sequentially find the covariance matrix C corresponding to each time slice k (J×J).

[0062] Among them, I represe...

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Abstract

The present invention relates to the field of control science and engineering, in particular to a method for processing intermittent process monitoring data, comprising the following steps: a. adopting an improved affine propagation clustering algorithm, b. designing a similarity decreasing scanning algorithm, c. determining outliers points and misclassified points and design solutions respectively; the improved affine propagation clustering algorithm can more accurately reveal the mode switching process between each sub-period of the intermittent process, and the similarity decreasing scanning algorithm can further reflect the internal mode of each sub-period. According to the trend of state change over time, outliers and misclassified points are determined and corresponding solutions are proposed, which improves the accuracy of statistical modeling. The algorithm is small in scale, simple in operation, and easy to implement in engineering.

Description

technical field [0001] The invention relates to the field of control science and engineering, in particular to a batch process monitoring data processing method. Background technique [0002] For a long time, with the market's urgent demand for multi-category, small-batch and high-value-added products, batch production has become the main production method in many industrial fields. However, the complexity of intermittent production will inevitably lead to production reliability and safety issues. In order to capture the mechanism of batch process more accurately to improve monitoring performance and monitor potential safety issues in a timely manner, the academic field has conducted in-depth research on batch processes and proposed many data-driven multivariate statistical analysis methods. For example, the typical principal component analysis method and least squares method and their extended forms have been widely used. However, these traditional methods basically assum...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62
CPCG06F18/2321G06F18/2433
Inventor 郭润夏张娜王佳琦
Owner CIVIL AVIATION UNIV OF CHINA
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