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Forward kinematic-like neural network for solving the 3D reaching inverse kinematics problems

机译:用于解决逆运动学问题的3D的前向运动样神经网络

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This paper presents the inverse kinematic solutions based on neural networks. General neural network approaches use data of the end-effector positions as an input and angle joints as an output to train the neural network for mapping the input to the output. However, the proposed method creates the custom networks from forward kinematic equations. This special structure makes the network like a position finder with ability to automatically adjust angle joints until the end-effector reaches the desired position by backpropagation with variable learning rate algorithm. Then, the solutions of angles can be found from the final weights and bias values. Moreover, the proposed network use less number of neurons and amount of the solution space is not depend on the training data. Finally, to evaluate the performance algorithm, the MATLAB Program is used to demonstrate a 4-DOF robotic arm movement in 3-dimensional. As a result, the proposed algorithm can help a robotic arm move to the desired position (3D reaching) quickly and correctly.
机译:本文介绍了基于神经网络的反向运动解决方案。通用神经网络方法使用末端效应器位置的数据作为输入和角度接头作为输出,以训练神经网络以将输入映射到输出。但是,所提出的方法从前向运动方程创建自定义网络。这种特殊结构使网络如同能够自动调整角度接头的位置查找器,直到末端执行器通过与可变学习率算法的反向验证达到所需位置。然后,可以从最终权重和偏置值找到角度的解。此外,所提出的网络使用少量神经元和溶液空间的量不依赖于训练数据。最后,为了评估性能算法,MATLAB程序用于展示三维中的4-DOF机器人臂运动。结果,该算法可以帮助机器人臂快速且正确地移动到所需位置(3D到达)。

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