论文标题
具有多源不确定性建模的强大人类机器人共享控制的一般仲裁模型
A General Arbitration Model for Robust Human-Robot Shared Control with Multi-Source Uncertainty Modeling
论文作者
论文摘要
远程运行中的共同控制权都利用了人类和机器人的优势,并且在减少远程运营机器人和提高任务绩效方面的困难方面具有很大的优势。共享控制中的一个基本问题是如何有效地将控制能力分配给人类和机器人。研究人员一直在主观定义违反原则后的仲裁政策,从而导致政策不一致。我们将这种不一致归因于人类机器人系统中多资源不确定性的不考虑。为了填补空白,我们开发了一个多源不确定性模型,该模型适用于现实世界中各种不确定性,然后开发了一般仲裁模型,以全面融合不确定性并调节分配给机器人代理的仲裁权重。除了传统的宏观性能指标外,我们还引入了机器人帮助和友好性的客观和定量指标,这些指标评估了辅助机器人在微观和宏观水平上的合作。模拟和实验的结果表明,在现有政策上,新的仲裁模型更有效,更友好,并且可以强大地应对多源不确定性。通过这种新的仲裁模型,我们期望在实用和复杂的远程操作任务中,人类机器人共享的共同控制能力增加。
Shared control in teleoperation leverages both human and robot's strengths and has demonstrated great advantages of reducing the difficulties in teleoperating a robot and increasing the task performance. One fundamental question in shared control is how to effectively allocate the control power to the human and robot. Researchers have been subjectively defining the arbitrate policies following conflicting principles, which resulted in great inconsistency in the policies. We attribute this inconsistency to the inconsiderateness of the multi-resource uncertainty in the human-robot system. To fill the gap, we developed a multi-source uncertainty model that was applicable to various types of uncertainty in real world, and then a general arbitration model was developed to comprehensively fuse the uncertainty and regulate the arbitration weight assigned to the robotic agent. Beside traditional macro performance metrics, we introduced objective and quantitative metrics of robotic helpfulness and friendliness that evaluated the assistive robot's cooperation at micro and macro levels. Results from simulations and experiments showed the new arbitration model was more effective and friendly over the existing policies and was robust to coping with multi-source uncertainty. With this new arbitration model, we expect the increased adoption of human-robot shared control in practical and complex teleoperation tasks.