PrismPatNet: Novel prism pattern network for accurate fault classification using engine sound signals

Author:

Sahin Sakir Engin1,Gulhan Gokhan2,Barua Prabal Datta34567,Tuncer Turker8ORCID,Dogan Sengul8,Faust Oliver9ORCID,Acharya U. Rajendra10

Affiliation:

1. Department of Computer Technologies, Arapgir Vocational School Malatya Turgut Ozal University Malatya Turkey

2. Department of Motor Vehicles and Transportation Technologies, Automotive Technology Program, Arapgir Vocational School Malatya Turgut Ozal University Malatya Turkey

3. Cogninet Australia Sydney New South Wales Australia

4. School of Business (Information System) University of Southern Queensland Toowoomba Australia

5. Faculty of Engineering and Information Technology University of Technology Sydney Sydney New South Wales Australia

6. Australian International Institute of Higher Education Sydney New South Wales Australia

7. School of Science and Technology University of New England Brisbane Australia

8. Department of Digital Forensics Engineering, College of Techology Firat University Elazig Turkey

9. School of Computing and Information Science Anglia Ruskin University Cambridge Campus Cambridge UK

10. School of Mathematics, Physics and Computing University of Southern Queensland Springfield Australia

Abstract

AbstractEngines are prone to various types of faults, and it is crucial to detect and indeed classify them accurately. However, manual fault type detection is time‐consuming and error‐prone. Automated fault type detection promises to reduce inter‐ and intra‐observer variability while ensuring time invariant attention during the observation duration. We have proposed an automated fault‐type detection model based on sound signals to realize these advantageous properties. We have named the detection model prism pattern network (PrismPatNet) to reflect the fact that our design incorporates a novel feature extraction algorithm that was inspired by a 3D prism shape. Our prism pattern model achieves high accuracy with low‐computational complexity. It consists of three main phases: (i) prism pattern inspired multilevel feature generation and maximum pooling operator, (ii) feature ranking and feature selection using neighbourhood component analysis (NCA), and (iii) support vector machine (SVM) based classification. The maximum pooling operator decomposes the sound signal into six levels. The proposed prism pattern algorithm extracts parameter values from both the signal itself and its decompositions. The generated parameter values are merged and fed to the NCA algorithm, which extracts 512 features from that input. The resulting feature vectors are passed on to the SVM classifier, which labels the input as belonging to 1 of 27 classes. We have validated our model with a newly collected dataset containing the sound of (1) a normal engine and (2) 26 different types of engine faults. Our model reached an accuracy of 99.19% and 98.75% using 80:20 hold‐out validation and 10‐fold cross‐validation, respectively. Compared with previous studies, our model achieved the highest overall classification accuracy even though our model was tasked with identifying significantly more fault classes. This performance indicates that our PrismPatNet model is ready to be installed in real‐world applications.

Publisher

Wiley

Subject

Artificial Intelligence,Computational Theory and Mathematics,Theoretical Computer Science,Control and Systems Engineering

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