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Multilevel Predictive Models of IC Engine for Model Predictive Control Implementation
Technical Paper
2008-01-0209
ISSN: 0148-7191, e-ISSN: 2688-3627
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English
Abstract
The paper deals with model based predictive control of combustion engines. Nonlinear black-box predictive models based on neuro-fuzzy approach are utilized. The structure of the models is optimized within an identification process. The nonlinear models are locally linearized and consequently used for the efficient on-line computation of forthcoming control actions. In desire to respect a fact that the speed of input-output response may vary significantly for different input/output groups, multilevel predictive models are proposed. Predictive control is again applied to approximate the desired behavior of chosen output variables. Potential algebraical constraints between different prediction layers are involved in the control algorithm using quadratic programming. The control scheme is optimized using simplified fast simulation model.
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Authors
- Zbynìk Šika - Czech Technical University in Prague, Josef Božek Research Center
- Michael Valášek - Czech Technical University in Prague, Josef Božek Research Center
- Martin Florián - Czech Technical University in Prague, Josef Božek Research Center
- Jan Macek - Czech Technical University in Prague, Josef Božek Research Center
- Miloš Polášek - Czech Technical University in Prague, Josef Božek Research Center
Citation
Šika, Z., Valášek, M., Florián, M., Macek, J. et al., "Multilevel Predictive Models of IC Engine for Model Predictive Control Implementation," SAE Technical Paper 2008-01-0209, 2008, https://doi.org/10.4271/2008-01-0209.Also In
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