AI Agents 相关度: 7/10

Deep Reinforcement Learning for Robotic Manipulation under Distribution Shift with Bounded Extremum Seeking

Shaifalee Saxena, Rafael Fierro, Alexander Scheinker
arXiv: 2604.01142v1 发布: 2026-04-01 更新: 2026-04-01

AI 摘要

论文提出了一种结合深度强化学习和有界极值搜索的混合控制器,以增强机器人操作在分布偏移下的鲁棒性。

主要贡献

  • 提出了一种混合控制器,结合DDPG和有界极值搜索
  • 提高了机器人操作在分布偏移下的鲁棒性
  • 在时间变化的目标和空间变化的摩擦补丁下进行了评估

方法论

使用DDPG训练强化学习策略,并结合有界极值搜索,提高在测试环境下的鲁棒性。

原文摘要

Reinforcement learning has shown strong performance in robotic manipulation, but learned policies often degrade in performance when test conditions differ from the training distribution. This limitation is especially important in contact-rich tasks such as pushing and pick-and-place, where changes in goals, contact conditions, or robot dynamics can drive the system out-of-distribution at inference time. In this paper, we investigate a hybrid controller that combines reinforcement learning with bounded extremum seeking to improve robustness under such conditions. In the proposed approach, deep deterministic policy gradient (DDPG) policies are trained under standard conditions on the robotic pushing and pick-and-place tasks, and are then combined with bounded ES during deployment. The RL policy provides fast manipulation behavior, while bounded ES ensures robustness of the overall controller to time variations when operating conditions depart from those seen during training. The resulting controller is evaluated under several out-of-distribution settings, including time-varying goals and spatially varying friction patches.

标签

强化学习 机器人操作 分布偏移 极值搜索 DDPG

arXiv 分类

cs.RO cs.LG