Abstract

Diesel engine fault diagnosis is vital due to enhanced reliability and economic efficiency requirements. The extracted features in traditional fault diagnosis are constructed manually, which is very cumbersome because of the requirement for lots of expertise. To handle this issue, this paper proposed a variational stacked autoencoder (VSAE) to adaptively extract features from angular domain signals. As an unsupervised algorithm, VSAE can extract high-level features with the help of multiple encoding layers. Layer-wise pre-training and fine-tuning are introduced to get a better network initialization value. Moreover, the dropout technique and the batch normalization technique are carried out to prevent over-fitting and implement fast convergence. Finally, the harmony search optimizer (HSO) algorithm is introduced to get an appropriate hyper-parameter setting in the VSAE model, as well as make adaptive adjustment of the network structure. In order to verify the proposed method, the valve train fault data is collected on the diesel engine test rig under twelve operating conditions. The results indicate that the proposed scheme can effectively diagnose different degrees of intake valve fault, exhaust valve fault, and coupling fault under various operating conditions. Furthermore, the classification accuracy improved from 94.10% to 98.85%VSAE compared with stacked autoencoder (SAE) and some other traditional fault diagnosis algorithms.

Highlights

  • A Variational Stacked Autoencoder with HarmonyKun Chen 1 , Zhiwei Mao 1, * , Haipeng Zhao 1 , Zhinong Jiang 2 and Jinjie Zhang 2

  • As a critical power source, diesel engines are an irreplaceable part of heavy industry, agriculture, nuclear power, and other fields

  • In order to further reflect the diagnostic effect of harmony search optimizer (HSO)–variational stacked autoencoder (VSAE), a detailed analysis is carried out layer, but the aggregation of same category is unsatisfactory

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Summary

A Variational Stacked Autoencoder with Harmony

Kun Chen 1 , Zhiwei Mao 1, * , Haipeng Zhao 1 , Zhinong Jiang 2 and Jinjie Zhang 2.

Introduction
Background
Variational
VSAE Model
Harmony Search Optimizer
The Proposed HSO–VSAE Method
Test Rig and Data Description
Model Input
Dropout Rate
Parameter Optimization Based on HSO Algorithm
Feature Visualization
Discussion of Diagnostic
Detailed
11. It are four four data data files files of of NS
Comparison with Baselines
Findings
Method
Conclusions
Full Text
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