基于云计算的机器人学习与行为预测控制

Wen-Shyong Yu, Chien Chih Chen
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引用次数: 1

摘要

本文提出了一种基于云计算的学习和行为预测控制方法,利用模糊推理算法对全向轮式机器人进行自主实时预定轨迹跟踪和避障控制。自主轨迹跟踪控制包括基于目标表面和深度测量的动态仿真。该机器人配备了三个独立驱动的全向轮和六个超声波传感器。建立了相对于关节空间的笛卡尔空间间的雅可比矩阵进行椭圆运动规划,使其既能自主地遵循预定的轨迹跟踪,又能避开障碍物。建立一个架构,在远程云和机器人之间分割计算,以便机器人可以与计算云交互。在此机器人/云架构下,采用预测控制算法的闭环控制系统在定期更新的预处理阶段具有良好的云上跟踪性能,并且在给定工作空间变化的情况下,对机器人的操作查询可以实现实时轨迹跟踪和避障。最后,通过实验验证了该算法的路径跟踪性能和计算效率。
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Learning and Behavior Predictive Control for Robots Based on Cloud Computing
In this paper, the learning and behavior predictive control based on cloud computing is proposed for efficiently planning autonomous real time prespecifled trajectory tracking and obstacle avoidance control for an omnidirectional wheeled robot using fuzzy inference algorithm. The autonomous trajectory tracking control includes dynamic simulation according to object surface and depth measurement. The robot is equipped with three independent driven omnidirectional wheels and six ultrasonic sensors. The Jacobian between Cartesian space with respect to the joint space is setup for ellipse motion planning so that it not only can autonomously follow the prespecifled trajectory tracking but also avoid obstacles. An architecture is setup to split computation between the remote cloud and the robots so that the robots can interact with the computing cloud. Given this robot/cloud architecture, the stability of the closed loop control system using the predictive control algorithm is guaranteed with satisfactory tracking performance on the cloud during a periodically updated preprocessing phase, and manipulation queries on the robots given changes in the workspace can achieve real time trajectory tracking and obstacle avoidance. Finally, experiments are given to validate the path tracking performance and computational efficiency.
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