通过智能算法改善控制器的沉降和上升时间

D. Pelusi
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引用次数: 24

摘要

一般来说,传统控制器的特点是沉降和上升时间过长。为了解决这一问题,设计了合适的模糊逻辑控制器。但是,在控制器设计阶段可以加入一些智能化技术。在文献中,采用的方法有遗传算法和神经网络。第一个是很好的搜索方法,而其他的有能力从数据中学习。本文提出了一种优化的遗传神经模糊控制器。该控制器采用一种实时优化算法,将模糊逻辑、遗传算法和神经网络的特点最优地结合起来。遗传算法搜索最优隶属函数,神经算法优化模糊规则。目标是减少沉降时间和上升时间,超调量为零。这种方法的新颖之处在于优化过程是同时进行的,而不是分开进行的。结果表明,与相同数量的优化PD控制器和PID控制器相比,其沉降时间和上升时间都有所减少。此外,所设计的控制器提高了传统控制器和智能控制器的定时性能。
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Improving Settling and Rise Times of Controllers via Intelligent Algorithms
Generally, conventional controllers are characterized by too longs settling and rise times. In order to solve this problem, suitable fuzzy logic controllers have been designed. However, some intelligent techniques can be added during the controllers designing phase. In the literature, the employed methods are Genetic Algorithms and Neural Networks. The first ones are good search methods whereas the others ones have the capability to learn from data. In this paper, an optimized genetic-neuro-fuzzy controller is proposed. This controller works in according with a real-time optimization algorithm which optimally combines the features of Fuzzy Logic, Genetic Algorithms and Neural Networks. The genetic procedures search the optimal membership functions whereas the neural methods optimize the fuzzy rules. The target is to reduce the settling time and rise time with overshoot equal to zero. The novelty of this approach is that the optimization procedures occur at the same time and not separately. The results show that the settling time and the rise time are reduced by comparing them with the same quantities of optimized PD and PID controllers. Moreover, the designed controller improves the timing performance of conventional and intelligent controllers.
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