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Oil refining process product prediction method and based on variable weighting deep-learning and system

A technology of deep learning and oil refining process, applied in the direction of neural learning methods, neural architecture, biological neural network models, etc., can solve problems such as inability to guarantee correlation, ignore feature extraction, etc., and achieve good generalization and high prediction accuracy

Active Publication Date: 2018-08-17
CENT SOUTH UNIV
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Problems solved by technology

[0003] The present invention provides a method and system for predicting oil refining process products based on variable weighted deep learning that overcomes the above problems or at least partially solves the above problems, and solves the problem that the deep learning model in the prior art only focuses on the feature representation of the process data itself and ignores the Feature extraction related to the output quality index, so that the correlation between the extracted features and the quality index cannot be guaranteed

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  • Oil refining process product prediction method and based on variable weighting deep-learning and system
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  • Oil refining process product prediction method and based on variable weighting deep-learning and system

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[0039] The specific implementation manners of the present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments. The following examples are used to illustrate the present invention, but are not intended to limit the scope of the present invention.

[0040] Such as figure 1 As shown in the figure, a method for predicting product quality in the refining production process based on variable deep learning is shown, including:

[0041] Obtain process variables in the refining production process, and based on the trained deep learning model, use the process variables as the input of the deep learning model to obtain a product quality prediction value;

[0042]Wherein, the deep learning model includes at least three variable weighted autoencoders, and when training the deep learning model, in every two adjacent variable weighted autoencoders, the implicit variable weighted autoencoders arranged in front The layer feature d...

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Abstract

The invention provides an oil refining process product prediction method based on variable weighting deep-learning and a system. The method includes: acquiring process variables in a debutanizer process, and using the process variables as input of a trained deep-learning model to obtain a product quality prediction value on the basis of the deep-learning model, wherein the deep-learning model includes at least three variable weighting autoencoders, and when the deep-learning model is trained, hidden-layer feature data of a variable weighting autoencoder which is in every two adjacent variableweighting autoencoders and is arranged at a front are used as input variables of a variable weighting autoencoder arranged at a rear, and the variable weighting autoencoder arranged at the rear is trained. The multiple weighting autoencoders are utilized to be stacked to form the deep network model, deep output-related features from a low level to a high level can be gradually obtained, features related to a quality index can be enhanced, the accurate prediction value can be provided for product quality, and the method has the advantages of high prediction precision, good generalization and the like.

Description

technical field [0001] The present invention relates to the field of chemical technology, and more specifically, to a method and system for predicting products in an oil refining process based on variable weighted deep learning. Background technique [0002] Oil refining production is a complex process industrial process with multiple raw materials, multiple devices, multiple processes and multiple products. In oil refining production, after crude oil from different oil fields is evenly mixed, it passes through primary processing equipment such as initial distillation tower, atmospheric and vacuum distillation tower, secondary processing equipment such as catalytic cracking, hydrocracking, delayed coking, and catalytic hydrogenation, Fine production of tertiary processing equipment such as catalytic reforming and hydrofining, and finally obtain petroleum products such as gasoline, diesel, aviation kerosene, fuel oil, etc. A variety of intermediate petrochemical products, as...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/08G06N3/04
CPCG06N3/084G06N3/045
Inventor 袁小锋王雅琳阳春华桂卫华
Owner CENT SOUTH UNIV
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