Complex equipment maintenance decision-making method based on fault prediction

A technology of fault prediction and decision-making method, applied in neural learning methods, biological neural network models, instruments, etc., can solve the problems of waste, difficult to effectively monitor characteristic factors, and inaccurate maintenance timing, so as to ensure normal operation and achieve high performance. The effect of precision prediction

Active Publication Date: 2020-08-14
CHINA ELECTRONIC TECH GRP CORP NO 38 RES INST
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Problems solved by technology

[0006] Complex equipment has the characteristics of complex structure, complex life distribution, and complex working status, resulting in fewer effective samples of equipment and inaccurate prediction of status trends, which increases the difficulty of equipment maintenance and waste of resources
The current research on predictive maintenance of complex equipment includes but is not limited to the following three difficulties: (1) Some characteristic factors are difficult to implement effective monitoring, resulting in few effective samples for fault state prediction; (2) Equipment fault prediction accuracy is not high, and maintenance timing Inaccurate grasp; (3) The influencing factors of equipment maintenance are characterized by ambiguity and uncertainty

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  • Complex equipment maintenance decision-making method based on fault prediction
  • Complex equipment maintenance decision-making method based on fault prediction
  • Complex equipment maintenance decision-making method based on fault prediction

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Embodiment Construction

[0087] In order to make the object, technical solution and advantages of the present invention clearer, the present invention will be further described in detail below in conjunction with specific embodiments and with reference to the accompanying drawings.

[0088] This embodiment takes the high-voltage power supply module of the radar transmitter as an example to introduce the complex equipment maintenance decision-making method. The high-voltage power supply module is an important component of the radar transmitter, and its status is directly related to the radio frequency quality and life of the radar transmitter. ,like figure 1 As shown, a method for decision-making of complex equipment maintenance based on fault prediction provided in this embodiment includes the following steps:

[0089] Step A: Determine the characteristic factors related to equipment failure, set the failure threshold of the characteristic factors, and collect the historical data of the characteristic...

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Abstract

The invention provides a complex equipment maintenance decision-making method based on fault prediction. The method comprises the following steps: A, determining a feature factor related to an equipment fault, setting a fault threshold of the feature factor, and collecting the historical data of the feature factor; B, predicting the numerical value of the feature factor through a gray model and aBP neural network model respectively; C, determining weights of the gray model and the BP neural network model; and D, carrying out numerical prediction on the equipment feature factor based on the combination model determined by the weight, taking the moment when a fault threshold value is reached as a prediction fault moment, and determining the optimal maintenance opportunity. The method has the following advantages: the advantages that the gray model has low requirements for sample data volume and the BP neural network has strong autonomous learning capability are combined, high-precisionprediction of the feature factor is effectively realized, the maintenance time is determined in time according to comparison with a fault threshold, preventive maintenance can be carried out in time,and normal operation of equipment is ensured.

Description

technical field [0001] The invention relates to the technical field of equipment predictive maintenance, in particular to a complex equipment maintenance decision-making method based on failure prediction. Background technique [0002] With the continuous advancement of science and technology, complex engineering equipment such as wind turbines, CNC machine tools, and construction machinery are gradually developing towards flexibility, precision, and intelligence. This type of equipment system can significantly increase production efficiency, improve the production environment, improve product quality, and reduce business operating costs. However, correspondingly, once such a complex equipment system fails or its health status deteriorates, it will often cause huge economic losses to the enterprise, and even cause catastrophic consequences. However, traditional post-event maintenance and preventive maintenance have been difficult to meet the intelligent support and maintena...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/04G06N3/08G06Q10/00
CPCG06N3/084G06Q10/20G06N3/045
Inventor 张红旗张燕龙郭磊陈亮希陈兴玉田富君周金文魏一雄周红桥李广
Owner CHINA ELECTRONIC TECH GRP CORP NO 38 RES INST
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