Implementation of Inverse Kinematics using ANFIS in Modified PUMA 560 through Tracking Control of Omni-directional wheels

Zeinab mahmoud Omer, Osman Ibrahim Al-Agha, K. Bilal, Altahir mohamoud al hassen, Walla Allsir
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Abstract

In this paper Adaptive Neuro Inference System algorithm, implemented on microcontrollers, was utilized to obtain the solution of IK problem of PUMA 560 robot arm. The problem of accurate and precise displacement is an acute problem faced by designers and operatorsNeuro-Fuzzy systems have been developed to make a sensible merge of linguistic information processing capability of Fuzzy Inference Systems (FIS) and learning capability of neural networks to evolve systems, which have strong modeling capability as well as relatively easy interpretability from the user point of view It differentiates itself from normal fuzzy systems by the adaptive parameters, i.e., both the premise and consequent parameters are adjustable. One of the main goals of a control system is to make the system more stable by reducing the steady state error as fast as possible. There are many types of control systems that can be used such as PID, PD+I, FUZZY PD+I and Adaptive Neuro-Fuzzy Inference System ANFIS. The use of ANFIS proved to be very efficient in handling the accuracy precision problem. Results obtained in this paper showed that error could be decreased to as low as 0.21% using this system. Stability in performance which is another dominant factor was acceptable to a great extent without any serious overshooting or unacceptable delay.
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基于全向车轮跟踪控制的改进型puma560反运动学ANFIS实现
本文采用自适应神经推理系统算法,在单片机上实现PUMA 560机械臂IK问题的求解。精确位移问题是设计人员和操作人员面临的一个尖锐问题。神经模糊系统是将模糊推理系统(FIS)的语言信息处理能力和神经网络的学习能力合理地融合在一起来进化系统的,它具有强大的建模能力和相对容易的可解释性,从用户的角度来看,它与普通模糊系统的区别在于自适应参数。也就是说,前提参数和结果参数都是可调的。控制系统的主要目标之一是通过尽可能快地减小稳态误差使系统更加稳定。有许多类型的控制系统可以使用,如PID, PD+I, FUZZY PD+I和自适应神经模糊推理系统ANFIS。事实证明,利用ANFIS处理精度精度问题是非常有效的。实验结果表明,该系统可将测量误差降低至0.21%。性能的稳定性是另一个主要因素,在很大程度上是可以接受的,没有任何严重的超调或不可接受的延迟。
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