Method and device for evaluating data accuracy based on complex electromechanical system coupling relation model

A technology of electromechanical systems and coupling relationships, applied in neural learning methods, biological neural network models, computer components, etc., can solve problems such as complex models, poor real-time evaluation of data accuracy, and incomplete reflection of system coupling relationships

Pending Publication Date: 2020-10-30
XI AN JIAOTONG UNIV
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Problems solved by technology

Support vector machines can better deal with nonlinear data modeling of small samples, and have been widely researched and applied in pattern recognition, classification, etc.; Copula has obvious advantages in dealing with nonlinear structural problems, and can deal with tail-related problems of data. However, the effect of dealing with chaotic time series is general; Bayesian network analysis often requires data to satisfy normal distribution or near-normal distribution, and the actual system state information does not obey the normal distribution. Data capacity has been widely used, but because the traditional neural network does not consider the causal relationship between variables in the actual process, it ...

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  • Method and device for evaluating data accuracy based on complex electromechanical system coupling relation model
  • Method and device for evaluating data accuracy based on complex electromechanical system coupling relation model
  • Method and device for evaluating data accuracy based on complex electromechanical system coupling relation model

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Embodiment Construction

[0056] The present invention will be described in detail below in conjunction with the drawings.

[0057] reference figure 1 The present invention provides a method for evaluating data accuracy based on a complex electromechanical system coupling relationship model, which includes the following steps:

[0058] Step S1, data preprocessing

[0059] Take the complex electromechanical system of the process industry as a representative, obtain the monitoring data collected by the DCS system during the production process, and perform non-linear / non-stationary inspection and noise reduction processing on the monitoring data;

[0060] Step S2, multivariate causal analysis and determination of the variable set of the cause of each variable

[0061] Combining the two-variable Granger and multi-variable Granger causality analysis methods, based on the monitoring data processed in step S1, the causal analysis is performed on the monitoring variables of the complex electromechanical system. The spe...

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Abstract

The invention discloses a method and device for evaluating data accuracy based on a complex electromechanical system coupling relationship model. The method comprises: preprocessing real-time monitoring data of a complex electromechanical system; determining a reason variable set of each monitoring variable based on multivariable Granger causality analysis; based on the monitoring variable and thereason variable set thereof, performing nonlinear relationship simulation by using a neural network, and determining a nonlinear mapping relationship between the monitoring variable and the reason variable set thereof; and obtaining a coupling relationship model among the monitoring variables, and realizing monitoring data accuracy evaluation by utilizing the model. According to the method, a causal influence mechanism between variables is considered, by combining the advantages of causal analysis and machine learning, nonlinear simulation is performed on the coupling causal relationship of the complex electromechanical system, so that effectiveness evaluation of the monitoring data is realized, and the problems of long monitoring data evaluation time consumption, low evaluation accuracyand the like caused by modeling difficulty/model complexity in data accuracy evaluation based on a model in the prior art are solved.

Description

Technical field [0001] The invention belongs to the field of complex electromechanical system data monitoring and analysis, and relates to a method and device for evaluating data accuracy based on a complex electromechanical system coupling relationship model. Background technique [0002] The complex electromechanical systems represented by chemical production and nuclear power generation have the characteristics of high coupling and high correlation between monitoring variables. At the same time, as the production environment changes and process adjustments, there is a dynamic coupling relationship between the variables. Therefore, exploring the coupling constraint relationship and coupling characteristics between the variables in the system, analyzing the evolution of the coupling characteristics, and constructing the coupling relationship model between the monitoring variables in the system are the basis for system monitoring data anomaly detection and accuracy evaluation. [0...

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Application Information

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IPC IPC(8): G06F30/27G06K9/62G06N3/08
CPCG06F30/27G06N3/08G06F18/23213
Inventor 梁艳杰高智勇高建民王荣喜徐光南程亚辉
Owner XI AN JIAOTONG UNIV
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