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Estimation of operational parameters for a direct injection turbocharged spark ignition engine by using regression analysis and artificial neural network
Author(s) -
Erdi Tosun,
Kadir Aydın,
Simona Silvia Merola,
Adrian Irimescu
Publication year - 2016
Publication title -
thermal science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.339
H-Index - 43
eISSN - 2334-7163
pISSN - 0354-9836
DOI - 10.2298/tsci160302151t
Subject(s) - turbocharger , artificial neural network , spark (programming language) , automotive engineering , ignition system , mean effective pressure , computer science , spark ignition engine , linear regression , engine coolant temperature sensor , petrol engine , turbine , internal combustion engine , combustion , engineering , mechanical engineering , artificial intelligence , machine learning , combustion chamber , compression ratio , chemistry , organic chemistry , programming language , aerospace engineering
This study was aimed at estimating the variation of several engine control parameters within the rotational speed-load map, using regression analysis and artificial neural network techniques. Duration of injection, specific fuel consumption, exhaust gas at turbine inlet, and within the catalytic converter brick were chosen as the output parameters for the models, while engine speed and brake mean effective pressure were selected as independent variables for prediction. Measurements were performed on a turbocharged direct injection spark ignition engine fueled with gasoline. A three-layer feed-forward structure and back-propagation algorithm was used for training the artificial neural network. It was concluded that this technique is capable of predicting engine parameters with better accuracy than linear and non-linear regression techniques

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