Low ambient temperatures, cold starts and city drives interrupted by still stand phases represent major challenges for energy and emission management of hybrid-electric vehicles (HEVs). Large time constants of battery and thermal systems, require long horizons to optimize overall system performance and avoid constraint violations, such as battery energy or real-world emission targets. In this work, a local online controller is extended with a coarse global optimization to predict optimal state trajectories. Manageable computational demand of this upper level optimization is achieved by a combination of model approximations, dimension reduction and coarse sampling. An online adaptation mechanism is implemented for the low-level controller to...