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Fused Smart Sensor Network for Multi-Axis Forward Kinematics Estimation in Industrial Robots

机译:融合智能传感器网络用于工业机器人多轴正向运动学估计

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摘要

Flexible manipulator robots have a wide industrial application. Robot performance requires sensing its position and orientation adequately, known as forward kinematics. Commercially available, motion controllers use high-resolution optical encoders to sense the position of each joint which cannot detect some mechanical deformations that decrease the accuracy of the robot position and orientation. To overcome those problems, several sensor fusion methods have been proposed but at expenses of high-computational load, which avoids the online measurement of the joint’s angular position and the online forward kinematics estimation. The contribution of this work is to propose a fused smart sensor network to estimate the forward kinematics of an industrial robot. The developed smart processor uses Kalman filters to filter and to fuse the information of the sensor network. Two primary sensors are used: an optical encoder, and a 3-axis accelerometer. In order to obtain the position and orientation of each joint online a field-programmable gate array (FPGA) is used in the hardware implementation taking advantage of the parallel computation capabilities and reconfigurability of this device. With the aim of evaluating the smart sensor network performance, three real-operation-oriented paths are executed and monitored in a 6-degree of freedom robot.
机译:柔性机械手机器人具有广泛的工业应用。机器人的性能要求充分感知其位置和方向,这称为正向运动学。在市场上可以买到的运动控制器使用高分辨率的光学编码器来感测每个关节的位置,这些位置无法检测到某些机械变形,从而降低了机器人位置和方向的准确性。为了克服这些问题,已经提出了几种传感器融合方法,但要付出高计算量的代价,这种方法避免了在线测量关节的角位置和在线向前运动学估计。这项工作的目的是提出一个融合的智能传感器网络,以估计工业机器人的正向运动学。开发的智能处理器使用卡尔曼滤波器对传感器网络的信息进行过滤和融合。使用了两个主要传感器:光学编码器和3轴加速度计。为了在线获取每个关节的位置和方向,在硬件实现中使用了现场可编程门阵列(FPGA),该阵列利用了该设备的并行计算能力和可重新配置性。为了评估智能传感器网络的性能,在6自由度机器人中执行和监视了三个面向实际操作的路径。

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