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A multi-sampling rate soft sensing method based on a dynamic hidden variable model

A multi-sampling rate, hidden variable technology, applied in special data processing applications, instruments, electrical digital data processing, etc., can solve the problems of inability to deal with multi-sampling characteristics, poor results, and highly time-dependent measurement, and achieve soft sensing Accuracy and application range improvement, and the effect of accurate estimation

Active Publication Date: 2019-02-12
ZHEJIANG UNIVERSITY OF SCIENCE AND TECHNOLOGY
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AI Technical Summary

Problems solved by technology

Traditional static Principal Component Analysis (PCA) and Least Square Estimation (PLS) models can effectively extract the cross-correlation of variables, but are not effective when the measurement is highly time-dependent
Dynamic PCA (DPCA)-based techniques can extract eigenvalue decomposition on autocorrelation augmented matrices in measurements to more effectively handle data dynamics, but it cannot fully utilize multi-sampled data
Both canonical variable analysis (CVA) and PLS can simulate the relationship between two data sets and realize the soft measurement of data, but both cannot effectively deal with the dynamics of data, and cannot deal with the multi-sampling characteristics of the two data sets themselves. Case
However, the method based on multi-sampling probability principal component analysis can fully utilize the multi-sampling rate data information, and use the expectation maximization (EM) algorithm to effectively estimate the model parameters, but the processing effect on dynamic data is not good.

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  • A multi-sampling rate soft sensing method based on a dynamic hidden variable model
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  • A multi-sampling rate soft sensing method based on a dynamic hidden variable model

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Embodiment Construction

[0039] Taking the papermaking wastewater treatment process as an example, the present invention is further described:

[0040] A multi-sampling-rate soft-sensing method based on a dynamic latent variable model. This method aims at the estimation of key quality variables that are difficult to measure in the papermaking wastewater treatment process. First, the distributed control system is used to collect the process variables that are relatively easy to measure under normal working conditions Multi-sampling rate data, and at the same time use laboratory methods to obtain multi-sampling rate data of key quality variables that are difficult to measure under normal working conditions, and establish a multi-sampling rate dynamic hidden variable model. The model structure is estimated by the expectation maximization algorithm. On this basis, the online papermaking wastewater treatment process is sampled to obtain multi-sampled test samples, and then the latent variables of the test ...

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Abstract

The invention discloses a multi-sampling rate soft sensing method based on a dynamic hidden variable model. By taking a large number of process variables with different sampling rates in chemical processes and a small number of key quality variables as the modeling samples, dynamic latent variables which can contain the characteristics of multi-rate data are extracted while fully considering the autocorrelation and cross-correlation of data, and the estimation of model parameters is realized by an expectation maximization algorithm and a Kalman filter algorithm. Based on this model, the corresponding soft-sensing method is established to solve the estimation problem of multi-rate dynamic key quality variables. The method not only realizes the multi- sampling rate information processing, but also can make full use of the data information. Moreover, the dynamic characteristics of the data can be fully considered by a Kalman filter, and the dynamic latent variables can be accurately estimated, so that the estimation and description of the key quality variables which are difficult to be directly measured can be better realized for a few of the dynamic latent variables after dimension reduction, and the soft sensing accuracy and application range can be improved.

Description

technical field [0001] The invention designs a control method, in particular relates to a multi-sampling-rate soft-sensing method based on a dynamic hidden variable model. Background technique [0002] With the development of modern industry, process safety and product quality are widely valued. With the widespread application of distributed control systems (DCS) in the industrial field, a large number of process variables can be collected and stored by various high-sampling rate sensors, while key quality variables related to production safety and product quality need to be stored in a low-sampling rate method. Collecting and obtaining through assays leads to the multi-sampling rate characteristics of data and the difficulty of obtaining important variable data, which is a challenge for the management of actual industrial engineering. At the same time, with the continuous advancement of multivariate statistical analysis-based process monitoring (MSPM) and soft-sensing tech...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F16/2458
Inventor 周乐王尧欣武晓莉成忠单胜道
Owner ZHEJIANG UNIVERSITY OF SCIENCE AND TECHNOLOGY
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