Grey-box modeling for hcci engine control
Document Type
Conference Proceeding
Publication Date
1-1-2013
Abstract
High fidelity models that balance accuracy and computation load are essential for real-time model-based control of Homogeneous Charge Compression Ignition (HCCI) engines. Grey-box modeling offers an effective technique to obtain desirable HCCI control models. In this paper, a physical HCCI engine model is combined with two feed-forward artificial neural networks models to form a serial architecture grey-box model. The resulting model can predict three major HCCI engine control outputs including combustion phasing, Indicated Mean Effective Pressure (IMEP), and exhaust gas temperature (Texh). The grey-box model is trained and validated with the steady-state and transient experimental data for a large range of HCCI operating conditions. The results indicate the grey-box model significantly improves the predictions from the physical model. For 234 HCCI conditions tested, the grey-box model predicts combustion phasing, IMEP, and Texh with an average error less than 1 crank angle degree, 0.2 bar, and 6 °C respectively. The grey-box model is computationally efficient and it can be used for real-time control application of HCCI engines. © 2013 by ASME.
Publication Title
ASME 2013 Internal Combustion Engine Division Fall Technical Conference, ICEF 2013
Recommended Citation
Bidarvatan, M.,
&
Shahbakhti, M.
(2013).
Grey-box modeling for hcci engine control.
ASME 2013 Internal Combustion Engine Division Fall Technical Conference, ICEF 2013,
1.
http://doi.org/10.1115/ICEF2013-19097
Retrieved from: https://digitalcommons.mtu.edu/michigantech-p/11847