Abstract
This paper presents analyses and test results of engine management system’s operational architecture with an artificial neural network (ANN). The research involved several steps of investigation: theory, a stand test of the engine, training of ANN with test data, generated from the proposed engine control system to predict the future values of fuel consumption before calculating the engine speed. In our paper, we study a small size 1.5 L gasoline engine without direct fuel injection (injection in intake manifold). The purpose of this study is to simplify engine and vehicle integration processes, decrease exhaust gas volume, decrease fuel consumption by optimizing cam timing and spark timing, and improve engine mechatronic functioning. The method followed in this work is applicable to small/medium size gasoline/diesel engines. The results show that the developed model achieved good accuracy on predicting the future demand of fuel consumption for engine control unit (ECU). It yields with the error rate of 1.12e-6 measured as Mean Square Error (MSE) on unseen samples.
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References
Jiang, F., Zhenhua, L.: Electronic control unit design of artificial neural network-based natural gas engine. Adv. Mater. Res. 998–999, 617–620 (2014). ISSN: 1662-8985
Deng, J., Stobart, R., Maass, B.: Artificial neural networks—Industrial and control engineering application. Loughborough University, UK (2011)
Howlett, R.J., de Zoysa, M.M., Walters, S.D., Howson, P.A.: Neural network techniques for monitoring and control of internal combustion. In: International Symposium on Intelligent Industrial Automation, Genova, Italy (1999)
Jones, R.P., Cherry, A.S., Farrall, S.D.: Application of intelligent control in automotive vehicles. In: IEEE International Conference on Control, Coventry, UK, vol. 389, pp. 159–164 (1994)
Ayeb, M., Lichtenthaler, D., Winsel, T., Theuerkauf, H.J.: SI engine modeling using neural networks. In: Proceedings of the 1998 SAE International Congress & Exposition. Detroit, USA, vol. 1357, pp. 107–115 (1998)
“GM Global Hot test procedure” standards process
Diaconescu, E.: Prediction of chaotic time series with NARX recurrent dynamic neural networks. In: Proceedings 9th WSEAS International Conference on Automation and Information. World Scientific and Engineering Academy and Society, Bucharest, Romania (2008)
Haykin, S.: Neural networks, 2nd edn. Pearson Education, Singapore (1999)
Dorffner, Georg: Neural networks for time series processing. Neural Netw. World 6(4), 447–468 (1996)
Pasero, E.G., Moniaci, W.: Artificial neural networks for meteorological Nowcast. In: International Symposium on Computational Intelligence for Measurement Systems and Application CIMSA (2004)
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Aliev, K., Narejo, S., Pasero, E., Inoyatkhodjaev, J. (2018). A Predictive Model of Artificial Neural Network for Fuel Consumption in Engine Control System. In: Esposito, A., Faudez-Zanuy, M., Morabito, F., Pasero, E. (eds) Multidisciplinary Approaches to Neural Computing. Smart Innovation, Systems and Technologies, vol 69. Springer, Cham. https://doi.org/10.1007/978-3-319-56904-8_21
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DOI: https://doi.org/10.1007/978-3-319-56904-8_21
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