Deep Learning Framework for Inverse Kinematics Mapping for a 5 DoF Robotic Manipulator

V. J, Bharat Singh, Ankit Vijayvargiya, Rajesh Kumar
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Abstract

Robotic manipulators have several applications, such as in manufacturing, surgery, transport, etc. Appropriate control techniques are essential to avoid undesirable consequences. Deep learning has been shown to be useful in robotic manipulator control. This paper presents a deep learning frame-work for the mapping of inverse kinematics (IK) for as-degree of freedom robotic manipulator. The framework provides a mapping from joint angles to end-effector position and orientation. Inputs used for the networks are the desired trajectory points and outputs are the joint angles. Additionally, a vector-based mean absolute error loss function is proposed for the training of different deep learning networks. The framework is investigated based on the position error and orientation error between the calculated and actual trajectory, and the computational time required to predict the joint angle values for the reference trajectory. The results show that the implementation of neural networks facilitated the quicker prediction of the joint angles. The best joint angle prediction in terms of minimum position error with the least amount of time is provided by the Deep Neural Network, whereas Long Short Term Memory performs better for orientation error.
五自由度机器人逆运动学映射的深度学习框架
机器人操纵器在制造业、外科手术、运输等领域有多种应用。适当的控制技术对于避免不良后果至关重要。深度学习已被证明在机器人操纵器控制中是有用的。提出了一种基于深度学习的单自由度机器人逆运动学映射框架。该框架提供了从关节角度到末端执行器位置和方向的映射。网络的输入是期望的轨迹点,输出是关节角。此外,提出了一种基于向量的平均绝对误差损失函数,用于不同深度学习网络的训练。基于计算轨迹与实际轨迹之间的位置误差和姿态误差,以及预测参考轨迹关节角值所需的计算时间,对该框架进行了研究。结果表明,神经网络的实现有助于更快地预测关节角度。深度神经网络在最小的位置误差和最短的时间内提供了最佳的关节角度预测,而长短期记忆在方向误差方面表现更好。
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