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Evolutionary fuzzy extreme learning machine for inverse kinematic modeling of robotic arms

机译:逆运动学建模的进化模糊极端学习机

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Evolutionary fuzzy extreme learning machine (EF-ELM) is one of the neuro-fuzzy system, which combines the learning capabilities of extreme learning machine (ELM) and the explicit knowledge of the fuzzy systems. In EF-ELM, the differential evolutionary technique is used to tune the membership function parameters were as the consequent parameters are tuned by Moore-Penrose generalized inverse techniques. In this paper, inverse kinematic modelings of 2-DOF and 3-DOF robotic arms are proposed. Evolutionary fuzzy extreme learning machine is used to predict the inverse kinematics of robotic arms. Extensive simulations are performed to study the prediction behavior of EF-ELM and comparative analysis is included against ELM and back propagation (BP) based neural networks. It is observed that the EF-ELM technique produces good generalization with minimum root mean square error for predicting the inverse kinematics solution of robotic arms.
机译:进化模糊极端学习机(EF-ELM)是神经模糊系统之一,它结合了极端学习机(ELM)的学习能力和模糊系统的明确知识。在EF-ELM中,使用差分进化技术来调谐隶属函数参数,因为摩尔彭罗索广泛的逆技术调整的随后的参数。在本文中,提出了2-DOF和3-DOF机器人臂的逆运动学建模。进化模糊极端学习机用于预测机器人臂的逆运动学。进行广泛的模拟以研究EF-ELM的预测行为,并包括基于ELM和后传播(BP)的神经网络的比较分析。观察到EF-ELM技术以最小的根均线误差产生良好的概括,用于预测机器人臂的逆运动学溶液。

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