Hybrid Optimal Theory and Predictive Control for Power Management in Hybrid Electric Vehicle
Kasemsak Uthaichana, Raymond DeCarlo, Sorin Bengea, Milo\v{s}, \v{Z}efran, Steve Pekarek

TL;DR
This paper develops a nonlinear model predictive control method for optimal power management in hybrid electric vehicles, balancing fuel efficiency, battery health, and vehicle performance.
Contribution
It introduces a hierarchical control framework using nonlinear predictive control and embedded optimal control for improved power-split strategies in PHEVs.
Findings
Effective suboptimal control solutions demonstrated via simulations
Balances fuel consumption, battery SOC, and vehicle tracking
Applicable to real-time power management in hybrid vehicles
Abstract
This paper presents a nonlinear-model based hybrid optimal control technique to compute a suboptimal power-split strategy for power/energy management in a parallel hybrid electric vehicle (PHEV). The power-split strategy is obtained as model predictive control solution to the power management control problem (PMCP) of the PHEV, i.e., to decide upon the power distribution among the internal combustion engine, an electric drive, and other subsystems. A hierarchical control structure of the hybrid vehicle, i.e., supervisory level and local or subsystem level is assumed in this study. The PMCP consists of a dynamical nonlinear model, and a performance index, both of which are formulated for power flows at the supervisory level. The model is described as a bi-modal switched system, consistent with the operating mode of the electric ED. The performance index prescribing the desired behavior…
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