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Cerebellum-inspired neural network solution of the inverse kinematics problem

机译:小脑神经网络逆运动学问题的解决方案

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摘要

The demand today for more complex robots that have manipulators with higher degrees of freedom is increasing because of technological advances. Obtaining the precise movement for a desired trajectory or a sequence of arm and positions requires the computation of the inverse kinematic (IK) function, which is a major problem in robotics. The solution of the IK problem leads robots to the precise position and orientation of their end-effector. We developed a bioinspired solution comparable with the cerebellar anatomy and function to solve the said problem. The proposed model is stable under all conditions merely by parameter determination, in contrast to recursive model-based solutions, which remain stable only under certain conditions. We modified the proposed model for the simple two-segmented arm to prove the feasibility of the model under a basic condition. A fuzzy neural network through its learning method was used to compute the parameters of the system. Simulation results show the practical feasibility and efficiency of the proposed model in robotics. The main advantage of the proposed model is its generalizability and potential use in any robot.
机译:由于技术的进步,如今对具有更高自由度的机械手的更复杂的机器人的需求正在增长。为了获得所需轨迹或手臂和位置序列的精确运动,需要计算逆运动学(IK)函数,这是机器人技术中的主要问题。 IK问题的解决方案将机器人引导至其末端执行器的精确位置和方向。我们开发了一种与小脑解剖学和功能相仿的生物启发解决方案,以解决上述问题。与基于递归模型的解决方案(仅在某些条件下保持稳定)相比,所提出的模型仅通过参数确定即可在所有条件下保持稳定。我们对简单的两段式手臂进行了修改,以证明该模型在基本条件下的可行性。一个模糊神经网络通过其学习方法被用来计算系统的参数。仿真结果表明了该模型在机器人技术中的实际可行性和有效性。提出的模型的主要优点是其可推广性和在任何机器人中的潜在用途。

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