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Modelling and prediction of diesel engine performance using relevance vector machine
Wong K.I.1; Wong, Pak Kin1; Cheung C.S.2
2015-04
Source PublicationInternational Journal of Green Energy
ABS Journal Level2
ISSN15435083 15435075
Volume12Issue:3Pages:265-271
Abstract

Diesel engines are being increasingly adopted by many car manufacturers today, yet no exact mathematical diesel engine model exists due to its highly nonlinear nature. In the current literature, black-box identification has been widely used for diesel engine modelling and many artificial neural network (ANN) based models have been developed. However, ANN has many drawbacks such as multiple local minima, user burden on selection of optimal network structure, large training data size, and over-fitting risk. To overcome these drawbacks, this article proposes to apply an emerging machine learning technique, relevance vector machine (RVM), to model and predict the diesel engine performance. The property of global optimal solution of RVM allows the model to be trained using only a few experimental data sets. In this study, the inputs of the model are engine speed, load, and cooling water temperature, while the output parameters are the brake-specific fuel consumption and the amount of exhaust emissions like nitrogen oxides and carbon dioxide. Experimental results show that the model accuracy is satisfactory even the training data is scarce. Moreover, the model accuracy is compared with that using typical ANN. Evaluation results also show that RVM is superior to typical ANN approach.

KeywordArtificial Neural Network Data Scarcity Diesel Engine Modelling Engine Performance Relevance Vector Machine
DOI10.1080/15435075.2014.891513
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaThermodynamics ; Science & Technology - Other Topics ; Energy & Fuels
WOS SubjectThermodynamics ; Green & Sustainable Science & Technology ; Energy & Fuels
WOS IDWOS:000344370000011
Scopus ID2-s2.0-84910050341
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Citation statistics
Document TypeJournal article
CollectionFaculty of Science and Technology
DEPARTMENT OF ELECTROMECHANICAL ENGINEERING
Corresponding AuthorCheung C.S.
Affiliation1.Universidade de Macau
2.Hong Kong Polytechnic University
First Author AffilicationUniversity of Macau
Recommended Citation
GB/T 7714
Wong K.I.,Wong, Pak Kin,Cheung C.S.. Modelling and prediction of diesel engine performance using relevance vector machine[J]. International Journal of Green Energy, 2015, 12(3), 265-271.
APA Wong K.I.., Wong, Pak Kin., & Cheung C.S. (2015). Modelling and prediction of diesel engine performance using relevance vector machine. International Journal of Green Energy, 12(3), 265-271.
MLA Wong K.I.,et al."Modelling and prediction of diesel engine performance using relevance vector machine".International Journal of Green Energy 12.3(2015):265-271.
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