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Method for optimizing main steam pressure of large steam turbine set

A technology of steam turbine unit and main steam pressure, applied in computational models, genetic models, instruments, etc., to achieve the effects of good model generalization, strong small sample learning ability, and reduced operating heat consumption

Inactive Publication Date: 2010-06-02
SOUTHEAST UNIV
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Problems solved by technology

[0006] In order to solve the problem of real-time optimization of main steam pressure of large steam turbine unit, the present invention proposes a method for optimizing main steam pressure of large steam turbine unit based on support vector machine and genetic algorithm

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  • Method for optimizing main steam pressure of large steam turbine set

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Embodiment Construction

[0027] The main steam pressure optimization method of large steam turbine unit based on Support Vector Machine (Support Vector Regression, SVR) and genetic algorithm (GeneticAlgorithms, GA) of the present invention, comprises the steps:

[0028] (1) Obtain characteristic sample sets of heat consumption of steam turbine units at typical load points and typical ambient temperatures through unit performance tests:

[0029] D={x 1 , x 2 ,...,x L}, the subscript L indicates the number of samples,

[0030] sample x i ∈D, sample x i ={HR i , P 0i ,T 0i , t wi , N i}, where: HR is the heat consumption of steam turbine, P 0 main steam pressure, T 0 Main steam temperature, t w is the ambient temperature, N is the unit load, and the subscript i is the sample number, the same below;

[0031] The feature sample set D is used as the initial training sample set, and the support vector machine method is used to learn it and build a model;

[0032] (2) Take a subset of the above ...

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Abstract

The invention discloses a method for optimizing the main steam pressure of a large steam turbine set, which belongs to the field of learning, modeling and optimizing algorithms of machines. The method comprises the following steps of: firstly, learning and modeling a heat loss characteristic sample set obtained by a machine set performance test by a support vector machine method; obtaining a parameter relation of machine set heat loss, main steam pressure, main steam temperature, ambient temperature and a machine set load; then learning a subset in the sample set, establishing a heat loss model and carrying out increment analysis; establishing a steam turbine set pressure optimizing model and optimizing and solving the steam turbine set pressure optimizing model by a genetic algorithm to obtain main steam pressure optimizing value and curve and an optimizing data set; and finally, carrying out secondary modeling on the optimizing data set to obtain a pressure optimizing characteristic relation. The method gives an optimized main steam pressure set value according to the current running condition of the machine set, greatly amplifies the optimizing range and is particularly beneficial to the energy saving and the consumption reduction of the large power station steam turbine set.

Description

technical field [0001] The invention relates to an industrial process optimization method, in particular to a main steam pressure optimization method of a large steam turbine unit, belonging to the field of machine learning modeling and optimization algorithms. Background technique [0002] Artificial intelligence technology has been more and more widely used in the field of machine learning and optimization algorithms, and it has become an important research object for industrial process modeling and optimization. [0003] Machine learning (Machine Learning) is a means and mechanism for acquiring knowledge from known sample data or information through mining, induction, deduction, analogy, etc.; Support Vector Regression (SVR) was developed by Vapnik et al. in the 20th century In the mid-1990s, a new machine learning algorithm was developed and proposed on the basis of statistical theory. As the core content of statistical learning theory, SVR can better solve the problem o...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N99/00G06N3/12
Inventor 司风琪汪军周建新徐治皋
Owner SOUTHEAST UNIV
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