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Tytuł artykułu

Diagnosing faults in the timing system of a passenger car spark ignition engine using the bayes classifier and entropy of vibration signals

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Języki publikacji
EN
Abstrakty
EN
Today's systems for diagnosing the technical condition of machines, including vehicles, use very advanced methods of acquiring and processing input data. Presently, work is being conducted globally to solve related problems. At the moment, it is not yet possible to create a single procedure that would enable the construction of a properly functioning diagnostic system, regardless of the selected object to be diagnosed. Hence, there is a need to conduct further research into the possibility of using already developed methods, as well as their modification to other diagnostic cases. This article presents the results of research related to the use of the Bayes classifier for diagnosing the technical condition of passenger car engine components. Damage to the exhaust valve of a spark ignition engine was diagnosed. The source of information on the technical condition was vibration signals recorded at various measuring points and under different operating conditions of the car. To describe the nature of changes in the vibration signals, the entropy measures were determined for the decomposed signal using the discrete wavelet transform is proposed.
Rocznik
Tom
Strony
83--98
Opis fizyczny
Bibliogr. 45 poz.
Twórcy
autor
  • Faculty of Transport and Aviation Engineering, The Silesian University of Technology, Krasinskiego 8 Street, 40-019 Katowice, Poland0000-0002-0884-8765
Bibliografia
  • 1. Albarbar A., F. Gu, A.D. Ball. 2010. „Diesel engine fuel injection monitoring using acoustic measurements and independent component analysis”. Measurement: Journal of the International Measurement Confederation 43(10): 1376-1386.
  • 2. Broemeling Lyle D. Bayesian analysis of infectious diseases. COVID-19 and beyond. CRC Press. Taylor & Francis Group. ISBN: 9780367633868.
  • 3. Chechile Richard A. 2020. Bayesian statistics for experimental scientists: a general introduction using distribution-free methods. The MIT Press. ISBN: 9780262044585.
  • 4. Christensen R., W. Johnson, A. Branscum, T.E. Hanson. 2011. Bayesian ideas and data analysis: an introduction for scientists and statisticians. CRC Press. Taylor & Francis Group. Boca Raton. ISBN: 9780429111778.
  • 5. Czech P., J. Mikulski. 2014. “Application of Bayes classifier and entropy of vibration signals to diagnose damage of head gasket in internal combustion engine of a car”. In: Mikulski J. (ed.). 14th International Conference on Transport Systems Telematics. Katowice Ustron, Poland. 22-25 October 2014. Telematics - Support for Transport. Book series: Communications in Computer and Information Science, 2014, Vol. 471, P. 225-232.
  • 6. Denton T. 2020. Advanced automotive fault diagnosis: automotive technology: vehicle maintenance and repair. Routledge. ISBN-13: 978-0367330521.
  • 7. Devendra V., A. Mukthar. 2017. Automobile engineering. I K International Publishing House Pvt. Ltd. ISBN-13: 978-9384588649.
  • 8. Duda R.O., P.E. Hart. 1973. Pattern classification and scene analysis. New York: John Wiley and Sons. ISBN: 0-471-22361-1.
  • 9. Figlus T. 2019. “A method for diagnosing gearboxes of means of transport using multi-stage filtering and entropy”. Entropy 21(5): 1-13.
  • 10. Figlus T., J. Gnap, T. Skrúcaný, B. Šarkan, J. Stoklosa. 2016. „The use of denoising and analysis of the acoustic signal entropy in diagnosing engine valve clearance”. Entropy 18(7): 1-11.
  • 11. Figlus T., Š. Liščák, A. Wilk, B. Łazarz. 2014. „Condition monitoring of engine timing system by using wavelet packet decomposition of a acoustic signal”. Journal of Mechanical Science and Technology 28: 1663-1671.
  • 12. Friedman N., D. Geiger, M. Goldszmidt. 1997. „Bayesian network classifiers”. Machine Learning 29: 131-163.
  • 13. Gilles T. 2018. Automotive engines: diagnosis, repair, rebuilding. Cengage Learning. ISBN-13: 978-1337567480.
  • 14. Gustof P., A. Hornik. 2007. “Modelling of the heat loads of the valves in turbo Diesel engine and the accuracy of calculations”. Journal of Achievements in Materials and Manufacturing Engineering 23(2): 59-62.
  • 15. Heywood J.B. 2018. Internal combustion engines fundamentals. McGraw Hill Inc. ISBN: 9781260116106.
  • 16. Hornik A. 2011. “The influence of the engine speed on the temperature distribution in the piston of the turbocharged diesel engine”. Transport Problems 6(3): 93-98.
  • 17. Jasiulewicz–Kaczmarek M., K. Antosz, P. Żywica, D. Mazurkiewicz, B. Sun, Y. Ren. 2021. „Framework of machine criticality assessment with criteria interactions”. Eksploatacja i Niezawodnosc – Maintenance and Reliability 23(2): 207-220.
  • 18. Jármai K., B. Bolló. 2017. Vehicle and automotive engineering. In: Proceedings of the JK2016, Miskolc, Hungary. Berlin: Springer International Publishing AG. ISBN: 3319511882.
  • 19. Jędrusik D., P. Gustof. 2004. “Using of model of two-zone for determines of temperatures the exhaust valve of turbo Diesel engine in unsteade state”. Technical Journal of Cracow Technical University. Series Mechanics 6-M/2004: 263-270.
  • 20. Johanson C., M.T. Stockel, M.W. Stockel. 2014. Auto fundamentals: how and why of the design, construction, and operation of automobiles: applicable to all makes and models. Goodheart Willcox Co. ISBN-13: 978-1619608207.
  • 21. Korbicz J., J.M. Kościelny, Z. Kowalczuk, W. Cholewa (Eds.). 2004. Fault diagnosis: models, artificial intelligence, applications. Berlin: Springer International Publishing AG. ISBN: 978-3-642-62199-4.
  • 22. Kozłowski E., K. Antosz, D. Mazurkiewicz, J. Sęp, T. Żabiński. 2021. „Integrating advanced measurement and signal processing for reliability decision-making”. Eksploatacja i Niezawodnosc – Maintenance and Reliability 23(4): 777-787.
  • 23. Maden N. 2015. Vehicular and automotive engineering. ML Books International - IPS. ISBN-13: 978-1632405111.
  • 24. Mallat S. 1999. „A theory for multiresolution signal decomposition: the wavelet representation”. IEEE Transaction on pattern analysis and machine intelligence 11: 674-693.
  • 25. Martin A. 2022. Automotive engines: an engineering perspective. Murphy & Moore Publishing. ISBN: 9781639870684.
  • 26. Mitchell Tom M. 1997. Machine learning. McGraw-Hill, 1997. ISBN-13: 978-0070428072.
  • 27. Moosavian A., G. Najafi, B. Ghobadian, M. Mirsalim, S.M. Jafari, P. Sharghi. 2016. “Piston scuffing fault and its identification in an IC engine by vibration analysis”. Applied Acoustics 102: 40-48.
  • 28. Newey A. 2017. How to Build a Car. HarperCollins Publishers. ISBN: 000819680X.
  • 29. Nyberg M. 2002. “Model-based diagnosis of an automotive engine using several types of fault models”. IEEE Transactions on Control Systems Technology 10(5): 679-689.
  • 30. Reich Brian J., Sujit K. Ghosh. 2019. Bayesian statistical methods. CRC Press. Taylor & Francis Group. ISBN: 9781032093185.
  • 31. Sahin Ferat, M. Çetin Yavuz, Ziya Arnavut, Önder Uluyol. 2007. „Fault diagnosis for airplane engines using Bayesian networks and distributed particle swarm optimization”. Parallel Computing 33(2): 124-143.
  • 32. Shaw Himansu, S.K. Vijay. 2021. “Diagnosis and detection of IC engine fault at end of line engine vibration measurement system with machine learning model”. Proceedings of the International Conference on Industrial Engineering and Operations Management. Bangalore, India, August 16-18, 2021. P. 216-225.
  • 33. Shirazi F.A., M.J. Mahjoob. 2007. “Application of discrete wavelet transform (DWT) in combustion failure detection of IC engines”. Proceedings of the 5th International Symposium on Image and Signal Processing and Analysis. 27-29 Sept. 2007. IEEE.
  • 34. Siano D., D. D’Agostino. 2015. “Knock detection in SI engines by using the discrete wavelet transform of the engine block vibrational signals”. Energy Procedia 81: 673-688.
  • 35. Stauffer Howard B. 2007. Contemporary Bayesian and frequentist statistical research methods for natural resource scientists. Wiley-Interscience. ISBN: 978-0-470-16504-1.
  • 36. Stephens T. 2022. Automotive engines handbook. NY Research Press. ISBN: 9781632388544.
  • 37. Tadeusiewicz R., R. Chaki, N. Chaki. 2014. Exploring neural networks with C#. CRC Press. Taylor & Francis Group. Boca Raton. ISBN: 9780429256226.
  • 38. Toufik Bensana, S. Mekhilef. 2016. “Numerical and experimental analysis of vibratory signals for rolling bearing fault diagnosis”. Mechanika 22(3): 217-224.
  • 39. Wang Jingyue, Haotian Wang, Lixin Guo, Diange Yang. 2018. “Rolling Bearing Fault Detection Using Autocorrelation Based Morpho-logical Filtering and Empirical Mode Decomposition”. Mechanika 24(6): 817-823.
  • 40. Wang Y., J. Yang, Z. Ji. 2013. „Study on gasoline engine knock indicators based on wavelet transform and rough set”. Advanced Materials Research 651: 625-630.
  • 41. Warner B., M. Misra. 1996. “Understanding neural networks as statistical tools”. The American Statistician 50: 284-293.
  • 42. Wong Pak Kin, Jianhua Zhong, Zhixin Yang, Chi Man Vong. 2016. „Sparse Bayesian extreme learning committee machine for engine simultaneous fault diagnosis”. Neurocomputing 174(Part A): 331-343.
  • 43. Yang C., T. Feng. 2012. „Abnormal noise diagnosis of internal combustion engine using wavelet spatial correlation filter and symmetrized dot pattern”. Applied Mechanics and Materials 141(1): 168-173.
  • 44. Yang W.X. 2006. “Establishment of the mathematical model for diagnosing the engine valve faults by genetic programming”. Journal of Sound and Vibration 293: 213-226.
  • 45. Zheng Kai, Yun Zhang, Chen zhao, Tianliang Li. 2016. “Fault Diagnosis for Supporting Rollers of the Rotary Kiln Using the Dynamic Model and Empirical Mode Decomposition”. Mechanika 22(3): 198-205.
Uwagi
PL
Opracowanie rekordu ze środków MNiSW, umowa nr SONP/SP/546092/2022 w ramach programu "Społeczna odpowiedzialność nauki" - moduł: Popularyzacja nauki i promocja sportu (2024).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-917e6c0c-a33a-4aeb-b371-440166324992
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