Torque control of electric drives is a challenging task, as high dynamics need to be achieved despite different input and state constraints while also pursuing secondary objectives, e.g., maximizing power efficiency. Whereas most state-of-the-art methods generally necessitate thorough knowledge about the system model, a model-free deep reinforcement learning torque controller is proposed. In particular, the deep Q-learning algorithm is utilized which has been successfully used in different application scenarios with a finite action set in the recent past. This nicely fits the considered system, a permanent magnet synchronous motor supplied by a two-level voltage source inverter, since the latter is a power supply unit with a limited amount ...
To benefit from the advantages of Reinforcement Learning (RL) in industrial control applications, RL...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
The need for frequent charging is perceived as a common inconvenience related to all-electric vehicl...
Reinforcement Learning (RL) has been gaining significant attention in recent years as a powerful too...
This paper presents a current control approach for permanent magnet synchronous machines (PMSMs) usi...
Distributed drive electric vehicles are regarded as a broadly promising transportation tool owing to...
The electromechanical system of a typical electric machine controller, usually composed of a motor, ...
In this article, a novel Q-learning scheduling method for the current controller of a switched reluc...
Energy optimization for plug-in hybrid electric vehicles (PHEVs) is a challenging problem due to it...
This work presents an ACC-like longitudinal controller for an autonomous electric vehicle, named Ego...
In this paper, a deep Q-learning (DQL)-based energy management strategy (EMS) is designed for an ele...
AMB control task can be solved using reinforcement learning based method called Q learning. However ...
Machine Learning Control is a control paradigm that applies Artificial Intelligence methods to contr...
The direct torque control approach called model predictive direct torque control (MP-DTC) is extende...
Traditional feedback control methods are often model-based and the mathematical system models need t...
To benefit from the advantages of Reinforcement Learning (RL) in industrial control applications, RL...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
The need for frequent charging is perceived as a common inconvenience related to all-electric vehicl...
Reinforcement Learning (RL) has been gaining significant attention in recent years as a powerful too...
This paper presents a current control approach for permanent magnet synchronous machines (PMSMs) usi...
Distributed drive electric vehicles are regarded as a broadly promising transportation tool owing to...
The electromechanical system of a typical electric machine controller, usually composed of a motor, ...
In this article, a novel Q-learning scheduling method for the current controller of a switched reluc...
Energy optimization for plug-in hybrid electric vehicles (PHEVs) is a challenging problem due to it...
This work presents an ACC-like longitudinal controller for an autonomous electric vehicle, named Ego...
In this paper, a deep Q-learning (DQL)-based energy management strategy (EMS) is designed for an ele...
AMB control task can be solved using reinforcement learning based method called Q learning. However ...
Machine Learning Control is a control paradigm that applies Artificial Intelligence methods to contr...
The direct torque control approach called model predictive direct torque control (MP-DTC) is extende...
Traditional feedback control methods are often model-based and the mathematical system models need t...
To benefit from the advantages of Reinforcement Learning (RL) in industrial control applications, RL...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
The need for frequent charging is perceived as a common inconvenience related to all-electric vehicl...