Abstract

A convolutional neural network has the characteristics of sharing information between layers, which can realize high-dimensional data processing. In general, the convolutional neural network uses a feedback mechanism to realize parameter self-regulation, which solves the disadvantages of manual parameter adjustment. However, it is unable to determine the iteration number with the best calculation accuracy. Calculation efficiency cannot be guaranteed while achieving the best accuracy. In this paper, a multilayer extreme learning convolutional neural network model is proposed for feature recognition and classification. Firstly, two-dimensional spatial characteristics of planetary bearing status data were enhanced. Then, extreme learning machine is embedded in a convolution layer to solve convex optimization problems. Finally, the parameters obtained from the training model were nested into a network to initialize the model parameters to separate each status feature. Planetary bearing experimental cases show the effectiveness and superiority of the proposed model in the recognition and classification of weak signals.

Highlights

  • With the improvement of automation level in a modern production system, rotating machinery presents the development direction of high speed, high efficiency, and maximum economic benefit

  • A continuous production process makes the equipment run under heavy load for a long time, which will lead to accelerated fatigue of transmission parts

  • Once the transmission parts fail, it will lead to a series of chain reactions and even make the whole equipment or even the whole production line stop working

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Summary

Introduction

With the improvement of automation level in a modern production system, rotating machinery presents the development direction of high speed, high efficiency, and maximum economic benefit. A convolutional neural network (CNN) [11, 12] is one of the representative models for intelligent recognition and classification of weak fault signals of bearings. It has attracted the attention of many researchers and been widely used in many fields such as bearing fault diagnosis. The obtained image is partitioned, which is more suitable for CNN analysis (2) A new model training mechanism of embedding ELM into a convolutional layer was proposed to improve the calculation speed and classification accuracy.

Theoretical Background
Proposed Architecture and Method
Parameter Transfer
Experimental Validation
Findings
Conclusions and Further Works
Full Text
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