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Measurement of Robot Wrist Forces Based on MLF Network

机译:基于MLF网络的机器人腕力测量

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摘要

Quantitative analysis of wrist forces for robot grippers is an important issue for robot control and operation safety. An approach is proposed to deduce the wrist forces from distributed force sensors in the robot fingers. A multi-layer forward (MLF) neural network is designed to fuse the data from finger force sensors. The experiment results demonstrate that the maximum deducing error of the wrist forces is decreased to 4.8% from 18.7% by comparing with previous sensor fusion methods.
机译:机器人夹具的腕力的定量分析是机器人控制和操作安全的重要问题。提出了一种从机器人手指中的分布式力传感器推导出腕力的方法。多层前向(MLF)神经网络被设计为融合来自手指力传感器的数据。实验结果表明,与以前的传感器融合方法相比,腕力的最大推导误差从18.7%降低到4.8%。

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