2020
DOI: 10.48550/arxiv.2007.02753
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robo-gym -- An Open Source Toolkit for Distributed Deep Reinforcement Learning on Real and Simulated Robots

Abstract: Applying Deep Reinforcement Learning (DRL) to complex tasks in the field of robotics has proven to be very successful in the recent years. However, most of the publications focus either on applying it to a task in simulation or to a task in a real world setup. Although there are great examples of combining the two worlds with the help of transfer learning, it often requires a lot of additional work and fine-tuning to make the setup work effectively. In order to increase the use of DRL with real robots and redu… Show more

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Cited by 2 publications
(2 citation statements)
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“…However, it exclusively focuses on the simulation without consideration on the application of real robots. The toolkit, robo-gym [18] introduces a freely available framework allowing the use of DRL in the simulations and real-world robots. The framework is tailored for the single mobile robot and manipulator as it cannot be extend into multi-robot systems in both simulation and the real world.…”
Section: Related Work a Learning Based Framework For Single-robot Sys...mentioning
confidence: 99%
“…However, it exclusively focuses on the simulation without consideration on the application of real robots. The toolkit, robo-gym [18] introduces a freely available framework allowing the use of DRL in the simulations and real-world robots. The framework is tailored for the single mobile robot and manipulator as it cannot be extend into multi-robot systems in both simulation and the real world.…”
Section: Related Work a Learning Based Framework For Single-robot Sys...mentioning
confidence: 99%
“…Similar to the Navigation task mentioned above, we further tested our method on a robotic arm simulator developed by [8]. The task was to make the end-effector reach a goal coordinate from a fixed configuration (C-space), as shown in Figure 1.…”
Section: B Ur5 Robot Arm In Ros Gazebomentioning
confidence: 99%