Performance degradation trend prediction method based on collaborative derivation related entropy extreme learning machine

An extreme learning machine and trend prediction technology, applied in biological models, special data processing applications, instruments, etc., can solve problems such as adverse effects of prediction models, failure of models to give prediction results, etc., and achieve high robustness and prediction accuracy high effect

Active Publication Date: 2019-12-20
UNIV OF ELECTRONIC SCI & TECH OF CHINA
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  • Abstract
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  • Application Information

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Problems solved by technology

Since the criterion assumes that the model error obeys a normal distribution condition, non-normally distributed noise and singular values ​​in the training data can easily have a negative impact on the prediction model, causing the model to fail to give correct prediction results

Method used

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  • Performance degradation trend prediction method based on collaborative derivation related entropy extreme learning machine
  • Performance degradation trend prediction method based on collaborative derivation related entropy extreme learning machine
  • Performance degradation trend prediction method based on collaborative derivation related entropy extreme learning machine

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Embodiment

[0057] figure 1 It is a flow chart of the method for predicting the performance degradation trend based on the collaborative derivation correlation entropy extreme learning machine of the present invention.

[0058] In this example, if figure 1 As shown, the present invention is a method for predicting performance degradation trend based on collaborative derivation correlation entropy extreme learning machine, comprising the following steps:

[0059] S1. Extreme learning machine initialization based on cooperative derivation correlation entropy

[0060] S1.1. Set the input sample set X={x of the extreme learning machine 1 ,x 2 ,...,x j ,...,x K}, the corresponding current output set is Y={y 1 ,y 2 ,...,y j ,...,y K}, and the real output set is T={t 1 ,t 2 ,...t j ,...,t K}, where the jth input sample x j The corresponding real output is t j , K is the total number of input samples;

[0061] S1.2. Randomly set the hidden layer weight W of the extreme learning ma...

example

[0107] In order to illustrate the technical effect of the present invention, the real-time flow prediction of the direct current transmission ratio of a photocoupler is taken as an example to verify the present invention.

[0108]A photocoupler is an electronic component that uses light as a medium to transmit electrical signals and converts electrical energy to optical energy. It is used to isolate input and output electrical signals. Its structure is as follows: image 3 shown. The DC current transfer ratio of an optocoupler can effectively reflect the health status of the device. In order to verify the effectiveness of the present invention, a prediction model is established through the method of the present invention to predict the trend of the real-time flow data in the degraded state of the photocoupler.

[0109] Meanwhile, the method of the present invention is compared with regularized extreme learning machine (R-ELM), correlated entropy extreme learning machine (ECC-...

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Abstract

The invention discloses a performance degradation trend prediction method based on a collaborative derivation related entropy extreme learning machine. The method comprises the following steps: firstly, calculating hidden layer output of an input sample based on an extreme learning machine of collaborative derivation correlation entropy; and corresponding prediction error, solving an optimal correlation entropy variance and an influence weight through a collaborative derivation algorithm; performing update iteration, until a global optimal solution [sigma]gbest in the particle swarm is found;q2 and the corresponding influence weight serving as the optimal correlation entropy variance and the influence weight, finally, under the condition that calculation convergence of the extreme learning machine is met, outputting a prediction value of the input sample, and therefore the performance degradation trend of the input sample is obtained, and the method has the advantages of being high inprediction precision, high in robustness and the like.

Description

technical field [0001] The invention belongs to the technical field of electronic devices, and more specifically relates to a performance degradation trend prediction method based on a cooperative derivation correlation entropy extreme learning machine. Background technique [0002] With the increasing update speed of electronic systems, the requirements for reliability analysis of electronic devices are further increased. The prediction of the degradation trend of electronic devices can better improve the maintenance efficiency of the system, so the related research has extremely high application value. In recent years, the degradation trend prediction method based on extreme learning machine has been widely used in the fault diagnosis of electronic devices due to its fast model training, simple structure, and high prediction accuracy. However, the vast majority of extreme learning machine prediction methods use the least mean square criterion as the training basis for the...

Claims

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Application Information

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IPC IPC(8): G06F17/50G06N3/00
CPCG06N3/006
Inventor 刘震梅文娟程玉华杨成林田书林
Owner UNIV OF ELECTRONIC SCI & TECH OF CHINA
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