Reinforcement learning (RL) is a promising solution for autonomous vehicles to deal with complex and uncertain traffic environments. The RL training process is however expensive, unsafe, and time consuming. Algorithms are often developed first in simulation and then transferred to the real world, leading to a common sim2real challenge that performance decreases when the domain changes. In this paper, we propose a transfer learning process to minimize the gap by exploiting digital twin technology, relying on a systematic and simultaneous combination of virtual and real world data coming from vehicle dynamics and traffic scenarios. The model and testing environment are evolved from model, hardware to vehicle in the loop and proving ground tes...
In the coming years and decades, autonomous vehicles (AVs) will become increasingly prevalent, offer...
The recent wide availability of semi-autonomous vehicles with distance and lane keep capabilities ha...
The researcher developed an autonomous driving simulation by training an end-to-end policy model usi...
The dynamic nature of driving environments and the presence of diverse road users pose significant c...
Deep reinforcement learning (DRL) is a promising method to learn control policies for robots only fr...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
Deep Reinforcement Learning (DRL) enables cognitive Autonomous Ground Vehicle (AGV) navigation utili...
Reinforcement Learning, as one of the main approaches of machine learning, has been gaining high pop...
Autonomous vehicles or self-driving cars are prevalent nowadays, many vehicle manufacturers, and oth...
Reinforcement learning (RL) is a booming area in artificial intelligence. The applications of RL are...
In this project, we implement and deploy reinforcement learning (RL) algorithms for path planning, d...
Traffic simulators are used to generate data for learning in intelligent transportation systems (ITS...
Connected and Automated Vehicles (CAVs), in particular those with multiple power sources, have the p...
Deep reinforcement learning (DRL) is a burgeoning sub-field in the realm of artificial intelligence ...
In the typical autonomous driving stack, planning and control systems represent two of the most cruc...
In the coming years and decades, autonomous vehicles (AVs) will become increasingly prevalent, offer...
The recent wide availability of semi-autonomous vehicles with distance and lane keep capabilities ha...
The researcher developed an autonomous driving simulation by training an end-to-end policy model usi...
The dynamic nature of driving environments and the presence of diverse road users pose significant c...
Deep reinforcement learning (DRL) is a promising method to learn control policies for robots only fr...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
Deep Reinforcement Learning (DRL) enables cognitive Autonomous Ground Vehicle (AGV) navigation utili...
Reinforcement Learning, as one of the main approaches of machine learning, has been gaining high pop...
Autonomous vehicles or self-driving cars are prevalent nowadays, many vehicle manufacturers, and oth...
Reinforcement learning (RL) is a booming area in artificial intelligence. The applications of RL are...
In this project, we implement and deploy reinforcement learning (RL) algorithms for path planning, d...
Traffic simulators are used to generate data for learning in intelligent transportation systems (ITS...
Connected and Automated Vehicles (CAVs), in particular those with multiple power sources, have the p...
Deep reinforcement learning (DRL) is a burgeoning sub-field in the realm of artificial intelligence ...
In the typical autonomous driving stack, planning and control systems represent two of the most cruc...
In the coming years and decades, autonomous vehicles (AVs) will become increasingly prevalent, offer...
The recent wide availability of semi-autonomous vehicles with distance and lane keep capabilities ha...
The researcher developed an autonomous driving simulation by training an end-to-end policy model usi...