Sim-to-Real Transfer in Deep Reinforcement Learning for Robotics: a Survey
Abstract
Deep reinforcement learning has recently seen huge success across multiple areas in the robotics domain. Owing to the limitations of gathering real-world data, i.e., sample inefficiency and the cost of collecting it, simulation environments are utilized for training the different agents. This not only aids in providing a potentially infinite data source, but also alleviates safety concerns with real robots. Nonetheless, the gap between the simulated and real worlds degrades the performance of the policies once the models are transferred into real robots. Multiple research efforts are therefore now being directed towards closing this sim-toreal gap and accomplish more efficient policy transfer. Recent years…
Citation impact
- FWCI
- 34.41
- Percentile
- 100%
- References
- 47
Authors
3- WZWenshuai ZhaoCorresponding
University of Turku
- JPJorge Pena Queralta
University of Turku
- TWTomi Westerlund
University of Turku
Topics & keywords
- Reinforcement learning
- Transfer of learning
- Context (archaeology)
- Categorization
- Inefficiency
- Domain (mathematical analysis)
- Closing (real estate)
- Deep learning