Adaptive collaborative control of highly redundant robots

D. Handelman
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引用次数: 1

Abstract

The agility and adaptability of biological systems are worthwhile goals for next-generation unmanned ground vehicles. Management of the requisite number of degrees of freedom, however, remains a challenge, as does the ability of an operator to transfer behavioral intent from human to robot. This paper reviews American Android research funded by NASA, DARPA, and the U.S. Army that attempts to address these issues. Limb coordination technology, an iterative form of inverse kinematics, provides a fundamental ability to control balance and posture independently in highly redundant systems. Goal positions and orientations of distal points of the robot skeleton, such as the hands and feet of a humanoid robot, become variable constraints, as does center-of-gravity position. Behaviors utilize these goals to synthesize full-body motion. Biped walking, crawling and grasping are illustrated, and behavior parameterization, layering and portability are discussed. Robotic skill acquisition enables a show-and-tell approach to behavior modification. Declarative rules built verbally by an operator in the field define nominal task plans, and neural networks trained with verbal, manual and visual signals provide additional behavior shaping. Anticipated benefits of the resultant adaptive collaborative controller for unmanned ground vehicles include increased robot autonomy, reduced operator workload and reduced operator training and skill requirements.
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高冗余度机器人自适应协同控制
生物系统的敏捷性和适应性是下一代无人地面车辆值得追求的目标。然而,管理必要数量的自由度仍然是一个挑战,操作员将行为意图从人类转移到机器人的能力也是一个挑战。本文回顾了由NASA、DARPA和美国陆军资助的试图解决这些问题的美国Android研究。肢体协调技术是一种迭代形式的逆运动学,为高度冗余系统提供了独立控制平衡和姿态的基本能力。机器人骨架远端点的目标位置和方向,如人形机器人的手和脚,就像重心位置一样,成为可变的约束条件。行为利用这些目标来合成全身运动。举例说明了两足行走、爬行和抓取,并讨论了行为参数化、分层和可移植性。机器人技能的获得使行为修正的展示和告诉方法成为可能。由操作员在现场口头建立的声明性规则定义了名义上的任务计划,用口头、手动和视觉信号训练的神经网络提供了额外的行为塑造。由此产生的自适应协同控制器对无人地面车辆的预期好处包括提高机器人的自主性,减少操作员的工作量,减少操作员的培训和技能要求。
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