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Action Recognition Method for Multi-joint Industrial Robots Based on End-arm Vibration and BP Neural Network

机译:基于端部振动和BP神经网络的多联合工业机器人的动作识别方法

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Recognizing the motion of the multi-joint industrial robot from the measurement signal is helpful to link the test signal with the motion joint and improve the accuracy of state evaluation. A motion recognition method for multi-joint industrial robots based on end-arm vibration and Back Propagation (BP) neural network is proposed in this paper. A three-axis vibration sensor is installed on the last joint of the multi-joint industrial robot to obtain the vibration signals and then segment the acquired signal according to the length of time and extract the features, establish a feature matrix, train the network model through a single joint motion feature matrix, and finally identify the action corresponding to each small segment of the signal in the multi-joint motion of the robot through the model. The experimental results show that the proposed motion recognition method based on end-arm vibration and BP neural network has high practical value in action state recognition of multi-joint industrial robots.
机译:识别来自测量信号的多关节工业机器人的运动有助于将测试信号与运动接头联系起来,提高状态评估的准确性。本文提出了一种基于端部振动和反向传播(BP)神经网络的多关节工业机器人的运动识别方法。三轴振动传感器安装在多关节工业机器人的最后一个接头上,以获得振动信号,然后根据时间长度段,提取特征,建立一个特征矩阵,训练网络模型通过单个关节运动特征矩阵,最后通过该模型在机器人的多关节运动中识别对应于信号的每个小段的动作。实验结果表明,基于末端振动和BP神经网络的提出的运动识别方法具有高实际识别多关节工业机器人的实用价值。

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