Title:A Design Framework for Nonlinear Predictive Engine ControlAuthor(s):Xiaoming Wang,  Peter Ortner,  Daniel AlbererAbstract:Model predictive control (MPC) has been proposed several times for automotive control, with promising results, mostly based on a linear MPC approach. However, as most automotive systems are nonlinear, nonlinear MPC (NMPC) would be an interesting option. Unfortunately, an optimal control design with a generic nonlinear model usually leads to a complex, non convex problem. Against this background, this paper proposes a control system design based on a nonlinear system identification using a quasi linear parameter varying (LPV) structure, which is then used in a NMPC design framework. This paper presents the approach and the application to a well studied system, the air path of a Diesel engine.Booktitle:Proceedings of the ECOSM09Page Reference:7 page(s)Publishing:12/2009

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