Parameter-optimized machine learning fault diagnosis system

A fault diagnosis system and machine learning technology, applied in the general control system, control/adjustment system, test/monitoring control system, etc., can solve the problems of low false alarm rate, easy to be affected by human factors, low false alarm rate, etc. , to achieve good forecasting effect, easy forecasting effect, and overcome the effect of low forecasting accuracy

Inactive Publication Date: 2018-09-14
ZHEJIANG UNIV
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Problems solved by technology

[0005] In order to overcome the disadvantages of low prediction accuracy and being easily affected by human factors in the existing fault diagnosis technology, the purpose of the present invention is to provide a fault diagnosis technology with high prediction accuracy, low false alarm rate, low false alarm rate, and strong anti-interference ability. Self-learning Fault Diagnosis System with Optimal Parameters

Method used

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  • Parameter-optimized machine learning fault diagnosis system
  • Parameter-optimized machine learning fault diagnosis system
  • Parameter-optimized machine learning fault diagnosis system

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Embodiment Construction

[0048] The present invention will be described in detail below according to the accompanying drawings.

[0049] refer to figure 1 , a machine learning fault diagnosis system with optimal parameters, including ethylene cracking process 1, on-site intelligent instrument for measuring easily measurable variables 2, control station for measuring operating variables 3, database for storing data 4, group intelligent machines Learn fault diagnosis system 5 and diagnosis result display instrument 6. The on-site intelligent instrument 2 and the control station 3 are connected to the ethylene cracking process 1, the on-site intelligent instrument 2 and the control station 3 are connected to the database 4, and the database 4 is connected to the input terminal of the group intelligent machine learning fault diagnosis system 5, The output end of the group intelligent machine learning fault diagnosis system 5 is connected with a diagnosis result display instrument 6 .

[0050] refer to ...

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Abstract

The invention discloses a parameter-optimized machine learning fault diagnosis system. The system is used for fault diagnosis of the ethylene cracking process and comprises a data preprocessing module, a principal component analysis module, a machine learning module and a swarm Intelligence algorithm module. Fault diagnosis is performed on important parameter indexes in the chemical process of ethylene cracking, the defects that existing chemical fault diagnosis technologies are low in instrument prediction accuracy and are easily affected by human factors are overcome, the swarm Intelligencealgorithm module is introduced to optimize parameters of a support vector machine, so that the parameter-optimized machine learning fault diagnosis system is obtained. The system has good prediction effect under the condition of small samples and easily finds the global optimal solution.

Description

technical field [0001] The invention relates to the fields of fault diagnosis, machine learning and swarm intelligence optimization algorithm, in particular to a chemical fault diagnosis system for ethylene cracking process combined with machine learning and swarm intelligence optimization algorithm. Background technique [0002] Chemical industry has penetrated into almost every aspect of people's life and work, and also involves various fields such as national industry, national defense, and agriculture. The chemical process needs to ensure high safety, because once a fault occurs, if the diagnosis is not timely and the fault cannot be eliminated, it will cause serious impacts, and even endanger people's personal and property safety, and the consequences will be disastrous. Therefore, the problem of fault diagnosis and monitoring of chemical process has been paid more and more attention by people. Experts and scholars at home and abroad have carried out in-depth discussion...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05B23/02
CPCG05B23/0243G05B2219/24065
Inventor 刘兴高何世明徐志鹏
Owner ZHEJIANG UNIV
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