首页> 外文期刊>Advanced Robotics: The International Journal of the Robotics Society of Japan >Multi-level control architecture for Bionic Handling Assistant robot augmented by learning from demonstration for apple-picking
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Multi-level control architecture for Bionic Handling Assistant robot augmented by learning from demonstration for apple-picking

机译:用于仿生处理助理机器人的多级控制架构通过学习苹果采摘的演示增强

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摘要

The control of soft continuum robots is challenging owing to their mechanical elasticity and complex dynamics. An additional challenge emerges when we want to apply Learning from Demonstration (LfD) and need to collect necessary demonstrations due to the inherent control difficulty. In this paper, we provide a multi-level architecture from low-level control to high-level motion planning for the Bionic Handling Assistant (BHA) robot. We deploy learning across all levels to enable the application of LfD for a real-world manipulation task. To record the demonstrations, an actively compliant controller is used. A variant of dynamical systems' application that are able to encode both position and orientation then maps the recorded 6D end-effector pose data into a virtual attractor space. A recent LfD method encodes the pose attractors within the same model for point-to-point motion planning. In the proposed architecture, hybrid models that combine an analytical approach and machine learning techniques are used to overcome the inherent slow dynamics and model imprecision of the BHA. The performance and generalization capability of the proposed multi-level approach are evaluated in simulation and with the real BHA robot in an apple-picking scenario which requires high accuracy to control the pose of the robot's end-effector.
机译:由于其机械弹性和复杂的动态,软连续机器人的控制挑战。当我们希望从示范(LFD)申请学习时,额外的挑战会出现,并且需要由于固有的控制难度收集必要的演示。在本文中,我们提供从低级控制的多级架构到仿生处理助理(BHA)机器人的高级运动规划。我们在各级部署学习,以使LFD应用于真实的操作任务。要记录演示,使用积极兼容的控制器。然后,能够编码位置和方向的动态系统应用程序的变型将记录的6d末端执行器构成数据映射到虚拟吸引子空间。最近的LFD方法在同一模型中对姿势吸引器进行编码,以进行点对点运动规划。在拟议的架构中,结合分析方法和机器学习技术的混合模型用于克服BHA的固有的慢动力动态和模型不精确。在仿真和真正的BHA机器人中评估了所提出的多级方法的性能和泛化能力,在苹果拣选场景中需要高精度来控制机器人的末端效应器的姿势。

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