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Online Adaptive Fuzzy Logic Controller Using Genetic Algorithm and Neural Network for Networked Control Systems

机译:基于遗传算法和网络控制系统神经网络的在线自适应模糊逻辑控制器

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Networked Control Systems are used for controlling remote plants via shared data communication networks such as Ethernet. These systems have found many applications in industrial, medical and space sciences fields. However there are some drawbacks in these systems, which make them challenging to design. One of the most common problems in these systems is the stochastic time delay. Packet switching in internet brings about the randomly varying time delay and consequently makes these systems instable. Convenient controllers such as PID and PI type controllers which are just matched with a constant time delay could not be a solution for these systems. Fuzzy logic controllers due to their nonlinear characteristic which is compatible with these systems are potentially a wise option for their control purpose. Fuzzy logic controller could become adaptive by means of neural networks and beneficial to deal with the varying time delay problem. Further, they do have more capabilities to tackle packet dropouts and dynamically system variables. This paper introduces a novel control method which addresses the varying time delay problem effectively. This novel method suggests an online adaptive fuzzy logic controller which has been controlled and adapted through the neural network. This method takes the advantage of the genetic algorithm to optimize the membership functions for its fuzzy logic controller. This designed controller is applied to an AC 400 W servo motor as a remote plant in order to control its position via Ethernet. The measurement of round-trip time (RTT) is used to estimate the online time delay as a parameter in online adaptive fuzzy logic controller. The rule-based table of designed fuzzy logic controller rotates in relation to this estimated time delay. The value of rotating is obtained from a trained neural network. Comparison of simulation results for different controllers indicates that this novel designed controller provides a better performance over the varying time delay. The proposed method follows the input easily, despite classical methods which result in an unstable system especially over the large time delays as large as 600 ms. Results get even more improved when genetic algorithm is applied to fuzzy logic controller.
机译:网络控制系统用于通过以太网等共享数据通信网络控制远程设备。这些系统在工业,医疗和空间科学领域找到了许多应用。然而,这些系统存在一些缺点,这使得它们挑战了设计。这些系统中最常见的问题之一是随机时间延迟。 Internet中的数据包交换带来随机变化的时间延迟,因此使这些系统无法稳定。与恒定时间延迟匹配的PID和PI型控制器等方便的控制器不能是这些系统的解决方案。由于其与这些系统兼容的非线性特性,模糊逻辑控制器可能是其控制目的的明智选项。模糊逻辑控制器可以通过神经网络变得自适应,并有利于处理变化的时间延迟问题。此外,它们确实有更多功能来解决数据包丢失和动态系统变量。本文介绍了一种新的控制方法,有效地解决了变化的时间延迟问题。这种新方法建议了一种通过神经网络控制和调整的在线自适应模糊逻辑控制器。该方法采用遗传算法的优点,以优化其模糊逻辑控制器的隶属函数。该设计的控制器应用于AC 400 W伺服电机作为远程设备,以便通过以太网控制其位置。往返时间(RTT)的测量用于估计在线自适应模糊逻辑控制器中的参数作为参数。基于规则的设计模糊逻辑控制器表相对于该估计的时间延迟旋转。旋转值是从训练有素的神经网络获得的。不同控制器的仿真结果的比较表明,该新颖的设计控制器在不同的时间延迟提供了更好的性能。拟议的方法很容易遵循输入,尽管经典方法导致不稳定的系统,尤其是大约600毫秒的大时间延迟。当遗传算法应用于模糊逻辑控制器时,结果甚至更加改善。

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