Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory
A proper intelligent approach was developed for fault diagnosis of spark plug in an IC engine based on acoustic and vibration signals using sensor fusion and classifier combination. Wavelet de-nosing technique was used for removing the signal noises. ANN and LS-SVM were employed in classification st...
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my.ump.umpir.88032018-01-30T07:18:29Z http://umpir.ump.edu.my/id/eprint/8803/ Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory R., Mamat Moosavian, Ashkan Khazaee, Meghdad G., Najafi Kettner, Maurice TJ Mechanical engineering and machinery A proper intelligent approach was developed for fault diagnosis of spark plug in an IC engine based on acoustic and vibration signals using sensor fusion and classifier combination. Wavelet de-nosing technique was used for removing the signal noises. ANN and LS-SVM were employed in classification stage. D–S evidence theory was applied to increase the fault detection accuracy. The results showed that the classification accuracies of ANN were 67.46% and 65.08% based on the acoustic and vibration signals. For LS-SVM, the classification accuracies of 65.08% and 57.94% were achieved based on the acoustic and vibration signals. By employing D–S theory, the classification accuracy reached a high level of 98.56%. The results indicated that the data fusion method improved significantly the performance of the intelligent approach in spark plug fault detection. The simultaneous use of acoustic and vibration signals increased the effectiveness of diagnostic system in engine condition monitoring. Moreover, the results demonstrated that the proposed procedure had great potential in spark plug fault recognition. Elsevier Ltd 2015 Article PeerReviewed application/pdf en http://umpir.ump.edu.my/id/eprint/8803/1/fkm-2015-rizalman-Spark%20Plug%20Fault.pdf R., Mamat and Moosavian, Ashkan and Khazaee, Meghdad and G., Najafi and Kettner, Maurice (2015) Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory. Applied Acoustics, 93. pp. 120-129. ISSN 0003-682X http://dx.doi.org/10.1016/j.apacoust.2015.01.008 DOI: 10.1016/j.apacoust.2015.01.008 |
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TJ Mechanical engineering and machinery R., Mamat Moosavian, Ashkan Khazaee, Meghdad G., Najafi Kettner, Maurice Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory |
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A proper intelligent approach was developed for fault diagnosis of spark plug in an IC engine based on acoustic and vibration signals using sensor fusion and classifier combination. Wavelet de-nosing technique was used for removing the signal noises. ANN and LS-SVM were employed in classification stage. D–S evidence theory was applied to increase the fault detection accuracy. The results showed that the classification accuracies of ANN were 67.46% and 65.08% based on the acoustic and vibration signals. For LS-SVM, the classification accuracies of 65.08% and 57.94% were achieved based on the acoustic and vibration signals. By employing D–S theory, the classification accuracy reached a high level of 98.56%. The results indicated that the data fusion method improved significantly the performance of the intelligent approach in spark plug fault detection. The simultaneous use of acoustic and vibration signals increased the effectiveness of diagnostic system in engine condition monitoring. Moreover, the results demonstrated that the proposed procedure had great potential in spark plug fault recognition. |
format |
Article |
author |
R., Mamat Moosavian, Ashkan Khazaee, Meghdad G., Najafi Kettner, Maurice |
author_facet |
R., Mamat Moosavian, Ashkan Khazaee, Meghdad G., Najafi Kettner, Maurice |
author_sort |
R., Mamat |
title |
Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory |
title_short |
Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory |
title_full |
Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory |
title_fullStr |
Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory |
title_full_unstemmed |
Spark Plug Fault Recognition Based on Sensor Fusion and Classifier Combination using Dempster–Shafer Evidence Theory |
title_sort |
spark plug fault recognition based on sensor fusion and classifier combination using dempster–shafer evidence theory |
publisher |
Elsevier Ltd |
publishDate |
2015 |
url |
http://umpir.ump.edu.my/id/eprint/8803/1/fkm-2015-rizalman-Spark%20Plug%20Fault.pdf http://umpir.ump.edu.my/id/eprint/8803/ http://dx.doi.org/10.1016/j.apacoust.2015.01.008 |
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1643665970216042496 |