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首页> 外文期刊>Expert Systems with Application >A comparative experimental study of type-1/type-2 fuzzy cascade controller based on genetic algorithms and particle swarm optimization
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A comparative experimental study of type-1/type-2 fuzzy cascade controller based on genetic algorithms and particle swarm optimization

机译:基于遗传算法和粒子群算法的1型/ 2型模糊级联控制器的对比实验研究

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摘要

In this study, we introduce the design methodology of an optimized fuzzy controller with the aid of particle swarm optimization (PSO) for ball and beam system. The ball and beam system is a well-known control engineering experimental setup which consists of servo motor, beam and ball. This system exhibits a number of interesting and challenging properties when being considered from the control perspective. The ball and beam system determines the position of ball through the control of a servo motor. The displacement change of the position of ball leads to the change of the angle of the beam which determines the position angle of a servo motor. The fixed membership function design of type-1 based fuzzy logic controller (FLC) leads to the difficulty of rule-based control design when representing linguistic nature of knowledge. In type-2 FLC as the expanded type of type-1 FL, we can effectively improve the control characteristic by using the footprint of uncertainty (FOU) of the membership functions. Type-2 FLC exhibits some robustness when compared with type-1 FLC. Through computer simulation as well as real-world experiment, we apply optimized type-2 fuzzy cascade controllers based on PSO to ball and beam system. To evaluate performance of each controller, we consider controller characteristic parameters such as maximum overshoot, delay time, rise time, settling time, and a steady-state error. In the sequel, the optimized fuzzy cascade controller is realized and also experimented with through running two detailed comparative studies including type-l/type-2 fuzzy controller and genetic algorithms/particle swarm optimization.
机译:在这项研究中,我们介绍了一种基于粒子群优化(PSO)的球和梁系统优化模糊控制器的设计方法。球梁系统是众所周知的控制工程实验装置,由伺服电机,梁和球组成。从控制角度考虑,该系统具有许多有趣且具有挑战性的特性。球和横梁系统通过伺服电机的控制来确定球的位置。球位置的位移变化导致光束角的变化,而光束角的变化决定了伺服电机的位置角。基于类型1的模糊逻辑控制器(FLC)的固定隶属函数设计在表示知识的语言本质时导致了基于规则的控制设计的困难。在类型2 FLC作为类型1 FL的扩展类型中,我们可以通过使用隶属函数的不确定性(FOU)覆盖区来有效地改善控制特性。与1型FLC相比,2型FLC表现出一定的鲁棒性。通过计算机仿真和实际实验,我们将基于PSO的优化类型2模糊级联控制器应用于球和梁系统。为了评估每个控制器的性能,我们考虑了控制器的特征参数,例如最大过冲,延迟时间,上升时间,建立时间和稳态误差。在续篇中,通过运行两个详细的比较研究,包括类型-1 /类型2的模糊控制器和遗传算法/粒子群优化,实现了优化的模糊级联控制器,并进行了试验。

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