Samenvatting
Reinforcement learning (RL) for motion planning of multi-degree-of-freedom robots still suffers from low efficiency in terms of slow training speed and poor generalizability. In this article, we propose a novel RL-based robot motion planning framework that uses implicit behavior cloning (IBC) and dynamic movement primitive (DMP) to improve the training speed and generalizability of an off-policy RL agent. IBC utilizes human demonstration data to leverage the training speed of RL, and DMP serves as a heuristic model that transfers motion planning into a simpler planning space. To support this, we also create a human demonstration dataset using a pick-and-place experiment that can be used for similar studies. Comparison studies reveal the advantage of the proposed method over the conventional RL agents with faster training speed and higher scores. A real-robot experiment indicates the applicability of the proposed method to a simple assembly task. Our work provides a novel perspective on using motion primitives and human demonstration to leverage the performance of RL for robot applications.
| Originele taal-2 | Engels |
|---|---|
| Pagina's (van-tot) | 4733-4749 |
| Aantal pagina's | 17 |
| Tijdschrift | IEEE Transactions on Robotics |
| Volume | 40 |
| DOI's | |
| Status | Gepubliceerd - 26 sep. 2024 |
Bibliografische nota
Publisher Copyright:© 2024 IEEE.
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