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Genetic-Neuro-Fuzzy Controllers for Second Order Control Systems

机译:二阶控制系统的遗传神经模糊控制器

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摘要

Overshoot, settling and rise time define the timing parameters of a control system. The main challenge is to attempt to reduce these parameters to achieve good control performances. The target is to obtain the optimal timing values. In this paper, three different approaches are presented to improve the control performances of second order control systems. The first approach is related to the design of a PID controller based on Ziegler-Nichols tuning formula. An optimal fuzzy controller optimized through Genetic Algorithms represents the second approach. Following this way, the best membership functions are chosen with the help of the darwinian theory of natural selection. The third approach uses the neural networks to achieve adaptive neuro-fuzzy controllers. In this way, the fuzzy controller assumes self-tuning capability. The results show that the designed PID controller has a very slow rise time. The genetic-fuzzy controller gives good values of overshoot and settling time. The best global results are achieved by neuro-fuzzy controller which presents good values of overshoot, settling and rise time. Moreover, our neuro-fuzzy controller improves the results of some conventional PID and fuzzy controllers.
机译:过冲,稳定和上升时间定义了控制系统的时序参数。主要挑战是尝试减少这些参数以获得良好的控制性能。目标是获得最佳时序值。本文提出了三种不同的方法来改善二阶控制系统的控制性能。第一种方法与基于Ziegler-Nichols调整公式的PID控制器的设计有关。通过遗传算法优化的最优模糊控制器代表了第二种方法。按照这种方式,借助达尔文自然选择理论选择最佳隶属函数。第三种方法使用神经网络来实现自适应神经模糊控制器。以这种方式,模糊控制器具有自整定能力。结果表明,所设计的PID控制器的上升时间非常慢。遗传模糊控制器具有良好的超调和建立时间值。通过神经模糊控制器可以获得最佳的全局结果,该控制器具有良好的过冲,稳定和上升时间值。此外,我们的神经模糊控制器改善了某些常规PID和模糊控制器的结果。

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