Development of hybrid electric vehicles depends on an advanced and efficient energy management strategy (EMS). With online and real-time requirements in mind, this article presents a human-like energy management framework for hybrid electric vehicles according to deep reinforcement learning methods and collected historical driving data. The hybrid powertrain studied has a series-parallel topology, and its control-oriented modeling is founded first. Then, the distinctive deep reinforcement learning (DRL) algorithm, named deep deterministic policy gradient (DDPG), is introduced. To enhance the derived power split controls in the DRL framework, the global optimal control trajectories obtained from dynamic programming (DP) are regarded as exper...
There is an increasing concern on the usage of vehicles powered by internal combustion engines due t...
Energy management is critical to reduce energy consumption and extend the service life of hybrid pow...
In this paper, we propose an energy management strategy based on deep reinforcement learning for a h...
An energy management strategy (EMS) is important for hybrid electric vehicles (HEVs) since it plays ...
Abstract Plug-in Hybrid Electric Vehicles (PHEVs) offer a promising solution for the increasing CO2...
© 2021, Korean Society for Precision Engineering.An energy management strategy (EMS) plays an import...
Plug-in hybrid fuel cell and battery propulsion systems appear promising for decarbonising transport...
The high emission and low energy efficiency caused by internal combustion engines (ICE) have become ...
For global optimal control strategy, it is not only necessary to know the driving cycle in advance b...
Connected and Automated Vehicles (CAVs), in particular those with multiple power sources, have the p...
Essential decision-making tasks such as power management in future vehicles will benefit from the de...
An energy management strategy (EMS) has an essential role in ameliorating the efficiency and lifetim...
The deep reinforcement learning-based energy management strategies (EMS) have become a promising sol...
PHEVs (plug-in hybrid electric vehicles) equipped with diesel engines have multiple model transition...
This paper investigates an adaptive dynamic programming (ADP)-based energy management control strate...
There is an increasing concern on the usage of vehicles powered by internal combustion engines due t...
Energy management is critical to reduce energy consumption and extend the service life of hybrid pow...
In this paper, we propose an energy management strategy based on deep reinforcement learning for a h...
An energy management strategy (EMS) is important for hybrid electric vehicles (HEVs) since it plays ...
Abstract Plug-in Hybrid Electric Vehicles (PHEVs) offer a promising solution for the increasing CO2...
© 2021, Korean Society for Precision Engineering.An energy management strategy (EMS) plays an import...
Plug-in hybrid fuel cell and battery propulsion systems appear promising for decarbonising transport...
The high emission and low energy efficiency caused by internal combustion engines (ICE) have become ...
For global optimal control strategy, it is not only necessary to know the driving cycle in advance b...
Connected and Automated Vehicles (CAVs), in particular those with multiple power sources, have the p...
Essential decision-making tasks such as power management in future vehicles will benefit from the de...
An energy management strategy (EMS) has an essential role in ameliorating the efficiency and lifetim...
The deep reinforcement learning-based energy management strategies (EMS) have become a promising sol...
PHEVs (plug-in hybrid electric vehicles) equipped with diesel engines have multiple model transition...
This paper investigates an adaptive dynamic programming (ADP)-based energy management control strate...
There is an increasing concern on the usage of vehicles powered by internal combustion engines due t...
Energy management is critical to reduce energy consumption and extend the service life of hybrid pow...
In this paper, we propose an energy management strategy based on deep reinforcement learning for a h...