This paper presents a new approach to efficiently integrate long prediction horizons subject to uncertainty into a stochastic model predictive control (MPC) framework for the energy management of hybrid electric vehicles. By exploiting Pontryagin’s minimum principle, we show that the energy supply required to obtain a certain change in the state of charge (SOC) of the battery can be approximated using a quadratic equation. The parameters of these mappings depend on the power request imposed by the driving mission and thus allow to compress the time-resolved power profile into only three scalar variables. Having a driving mission divided into several segments of arbitrary length, the corresponding sequence of quadratic approximations allows ...
The context of this dissertation is to theoretically investigate, design and implement a real-time c...
This paper deals with optimization-based control of real microgrids with uncertain forecasts of rene...
Power management strategies have impacts on fuel economy, greenhouse gasses (GHG) emission, as well ...
This paper illustrates the use of stochastic model predictive control (SMPC) for power management in...
A microgrid with an advanced energy management approach is a feasible solution for accommodating the...
To improve computational efficiency of energy management strategies for plug-in hybrid electric vehi...
Splitting power is a tricky problem for series plug-in hybrid electric vehicles (SPHEVs) for the mul...
Recently, the increasing integration of electric vehicles (EVs) has drawn great interest due to its ...
One of the major limitations of optimization-based strategies for allocating the power flow in hybri...
This paper develops an approach for driver-aware vehicle control based on stochastic model predictiv...
The integration of electric vehicles (EVs) into the electricity systems comprises both threats and c...
There are many approaches addressing the problem of optimal energy management in hybrid electric veh...
We propose a hierarchical Model Predictive Control (MPC) strategy for energy management in plugin hy...
The supervisory control strategy of a hybrid vehicle coordinates the operation of vehicle sub-system...
In this paper, a stochastic model predictive control (MPC) method based on reinforcement learning is...
The context of this dissertation is to theoretically investigate, design and implement a real-time c...
This paper deals with optimization-based control of real microgrids with uncertain forecasts of rene...
Power management strategies have impacts on fuel economy, greenhouse gasses (GHG) emission, as well ...
This paper illustrates the use of stochastic model predictive control (SMPC) for power management in...
A microgrid with an advanced energy management approach is a feasible solution for accommodating the...
To improve computational efficiency of energy management strategies for plug-in hybrid electric vehi...
Splitting power is a tricky problem for series plug-in hybrid electric vehicles (SPHEVs) for the mul...
Recently, the increasing integration of electric vehicles (EVs) has drawn great interest due to its ...
One of the major limitations of optimization-based strategies for allocating the power flow in hybri...
This paper develops an approach for driver-aware vehicle control based on stochastic model predictiv...
The integration of electric vehicles (EVs) into the electricity systems comprises both threats and c...
There are many approaches addressing the problem of optimal energy management in hybrid electric veh...
We propose a hierarchical Model Predictive Control (MPC) strategy for energy management in plugin hy...
The supervisory control strategy of a hybrid vehicle coordinates the operation of vehicle sub-system...
In this paper, a stochastic model predictive control (MPC) method based on reinforcement learning is...
The context of this dissertation is to theoretically investigate, design and implement a real-time c...
This paper deals with optimization-based control of real microgrids with uncertain forecasts of rene...
Power management strategies have impacts on fuel economy, greenhouse gasses (GHG) emission, as well ...