Residual life prediction algorithm based on optimal degradation characteristic quantity

A technology for life prediction and life prediction model, which is applied in the directions of calculation, genetic model, genetic law, etc. It can solve the problems of reducing the amount of data, unable to fully reflect the operating characteristics of equipment in its entire life, and limited information on equipment degradation. Improved accuracy, free from adverse effects

Inactive Publication Date: 2016-12-14
GUANGDONG UNIV OF PETROCHEMICAL TECH
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Problems solved by technology

[0004] Aiming at the current problem of subjectively selecting degradation feature quantities, and the selected degradation feature quantities are all single degradation indicators, a single degradation index contains limited information on equipment degradation, and cannot fully reflect the full-life operating characteristics of equipment. Therefore, the present invention considers using The genetic programming algorithm extracts the optimal degradation feature quantity in the degradation process of the equipment, and uses the optimal degradation feature quantity that synthesizes multiple degradation featu

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  • Residual life prediction algorithm based on optimal degradation characteristic quantity
  • Residual life prediction algorithm based on optimal degradation characteristic quantity
  • Residual life prediction algorithm based on optimal degradation characteristic quantity

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[0021] The present invention will be further described below in conjunction with accompanying drawing:

[0022] The present invention comprises the following steps:

[0023] (1) Extraction of optimal degradation feature quantity of equipment: use waveform index, pulse index, margin index, kurtosis index and peak index, these five dimensionless indexes, and root value, average value, root mean square value, Peak, these 4 dimensioned indicators are used as the terminator set, using addition, subtraction, multiplication, division, absolute value, and root sign as the operator set, and the replication, crossover and mutation between individuals are performed by generating the initial population and other operations, use the monotonic effect as the criterion for judging the degree of individual pros and cons, and continuously evolve the population, and finally obtain the optimal degraded feature quantity under the algorithm termination criterion; because a single degenerated featur...

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Abstract

The invention discloses a residual life prediction algorithm based on optimal degradation characteristic quantity. The residual life prediction algorithm comprises the steps of extracting the optimal degradation characteristic quantity of equipment and establishing a Weiner process residual life prediction model with a random effect. Compared with the prior art, the residual life prediction algorithm solves the problem of choosing degradation characteristic quantity in a man-made subjective mode and overcomes the bad effect that a single degradation characteristic quantity cannot completely represent equipment states. According to the residual life prediction algorithm, the merits and demerits of a genetic programming algorithm and the Weiner process model with the random effect are combined, and an optimal first prediction time can be chosen; thus, the residual life prediction algorithm based on the optimal degradation characteristic quantity can be established. From simulation results, the prediction accuracy of the algorithm is certainly improved.

Description

technical field [0001] The invention relates to a remaining life prediction algorithm combined with a genetic programming algorithm and a random Weiner process, in particular to a remaining life prediction algorithm based on optimal degradation characteristic quantities. Background technique [0002] The existing remaining life prediction technology obtains degradation data by monitoring key characteristic parameters in the process of equipment performance degradation, and then uses the degradation data to predict the remaining life of equipment and determine equipment maintenance strategies. However, the current remaining life research work basically selects the degradation characteristic quantity subjectively. In order to effectively solve this problem, in recent years, L.X. Liao proposed a method of using genetic programming to construct the optimal degraded feature, and using the paris equation to simulate the bearing expansion process, but this method does not consider ...

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Application Information

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IPC IPC(8): G06F19/00G06N3/12
CPCG06N3/126G16Z99/00
Inventor 胡勤覃爱淞张清华段志宏孙国玺何俊邵龙秋林水泉
Owner GUANGDONG UNIV OF PETROCHEMICAL TECH
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