Fault Identification Method of Diesel Engine in Light of Pearson Correlation Coefficient Diagram and Orthogonal Vibration Signals

Author:

Zhiyong Li123ORCID,Hongdong Zhao1ORCID,Ruili Zeng4ORCID,Kewen Xia1ORCID,Qiang Guo2,Yuhai Li3

Affiliation:

1. School of Electronic and Information Engineering, Hebei University of Technology, Tianjin 300401, China

2. Department of Basic Science, Army Military Transportation University, Tianjin 300161, China

3. Key Laboratory of Electrooptical Information Control and Security Technology, Tianjin 300308, China

4. Department of Military Vehicle, Army Military Transportation University, Tianjin 300161, China

Abstract

In order to select fault feature parameters simply and quickly and improve the identification rate of diesel engine faults by using the vibration signals, this paper proposes a diesel engine fault identification method on the basis of the Pearson correlation coefficient diagram (PCC Diagram) and the orthogonal vibration signals. At first, the orthogonal vibration acceleration signals are synchronously acquired in the direction of the top and side of the cylinder head. And the time-domain feature parameters are extracted from the orthogonal vibration acceleration signals to obtain the Pearson correlation coefficient (PCC). Then, the correlation coefficient diagram used to do feature parameter screening is constructed by selecting the feature parameters with the correlation coefficient of more than 0.9. Finally, generalized regression neural network (GRNN) is adopted to classify and identify fuel supply fault in diesel engine. The results show that using the PCC Diagram can simplify the selection process of the feature parameters of the orthogonal vibration signals quickly and effectively. It can also improve the fault identification rate of diesel engine significantly with the help of adding the newly proposed cross-correlation coefficient of the orthogonal vibration signals into the GRNN input feature vector set.

Funder

Tactical Vehicle Status Monitoring

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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