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Method and system applicable to complementing missing data of product quality indicators in complex industrial process based on selective double-layer ensemble learning

An industrial process and integrated learning technology, applied in general control systems, control/regulation systems, adaptive control, etc., can solve problems such as large data fluctuations, many process variables, and strong coupling of variables

Active Publication Date: 2018-09-04
CENT SOUTH UNIV
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Problems solved by technology

[0005] The technical problem to be solved by the present invention is to address the difficulties of numerous process variables, strong coupling between variables, and large data fluctuations in complex industrial processes. Complementary method and system:

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  • Method and system applicable to complementing missing data of product quality indicators in complex industrial process based on selective double-layer ensemble learning
  • Method and system applicable to complementing missing data of product quality indicators in complex industrial process based on selective double-layer ensemble learning
  • Method and system applicable to complementing missing data of product quality indicators in complex industrial process based on selective double-layer ensemble learning

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specific Embodiment

[0204] The data completion method based on selective two-layer integrated learning provided in this embodiment takes the hydrocracking process as the object, takes the historical data of the process variables of the whole process and the quality indicators of product oil as the initial data set, and corrects the missing product oil Quality indicators are completed. The hydrocracking process is complicated, there are many process variables to be detected, and there is a large time lag, which leads to high dimensionality of the data set and strong nonlinearity of the model. Due to the inconsistency of the sampling frequency between the process variable and the quality index of the product oil, or accidents such as failure of the product oil testing device, the quality index data of the product oil is seriously missing. Figure 5 shows the absence of quality data samples from Figure 5 It can be seen from the figure that most of the quality indicators only get 1 data sample with...

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Abstract

The invention elates to the technical field of industrial process control, and discloses a method and system applicable to complementing missing data of product quality indicators in the complex industrial process based on selective double-layer ensemble learning. The method comprises the steps of firstly extracting different dimensions of variables of the sampled data to generate multiple sampling sets which serve as training sets of sub-models; then modeling each sub-model by respectively adopting a vector machine method, a BP neural network method and a partial least squares method; and finally putting forward a complementing effect evaluation indicator to perform evaluation on the complementing effect of each sub-model, and selecting a plurality of sub-models with the best complementing effect to perform selective ensemble. The method makes full use of all variables of the training samples, has a good data complementing effect, and facilitates enterprises to obtain the actual operation condition of the production process according to the analysis so as to perform targeted production operation optimization.

Description

technical field [0001] The invention relates to the technical field of industrial process control, in particular to a method and system suitable for complementing missing data of complex industrial process product quality indicators based on selective double-layer integrated learning. Background technique [0002] In complex industrial processes, because some quality indicators cannot be directly measured by sensors, manual collection and offline testing are required. The test cycle is long, and quality indicator data cannot be obtained in real time. The problem of complementing missing data of quality indicators has become a focus. At present, most complex industrial processes have introduced computer control systems, and the large amount of production process data obtained from this measurement provides convenience for the completion of missing data on difficult-to-measure quality indicators. [0003] However, the data in complex industrial processes often have the followi...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05B13/04
CPCG05B13/042
Inventor 袁小锋吴东哲王雅琳李灵阳春华桂卫华
Owner CENT SOUTH UNIV
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