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Adaptive fuzzy model based inverse controller design using BB-BC optimization algorithm

机译:基于BB-BC优化算法的自适应模糊模型逆控制器设计

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摘要

The use of inverse system model as a controller might be an efficient way in controlling non-linear systems. It is also a known fact that fuzzy logic modeling is a powerful tool in representing nonlinear systems. Therefore, inverse fuzzy model can be used as a controller for controlling nonlinear plants. In this context, firstly, a new fuzzy model based inverse controller design methodology is presented in this study. The design methodology introduced here is based on a recursive optimization procedure that searches for an optimal inverse model control signal at every sampling time. Since the task of optimiza tion should be accomplished in between two sampling periods the use of a fast optimization algorithm becomes essential. For this reason, Big Bang-Big Crunch (BB-BC) optimization algorithm is used due to its low computational time and high global convergence properties. Even though, inverse model controllers may produce perfect control while operating in an open loop fashion, this open loop control would not be sufficient in the case of modeling mismatches or disturbances that might occur over the system. In order to overcome this problem, secondly, an on-line adaptation mechanism via BB-BC optimization algorithm is introduced in addition to BB-BC optimization based fuzzy model inverse controller. The adaptation mechanism is used to update the related parameters of the model while minimizing the absolute value of the instantaneous error between the system and model outputs. In this manner, the system output is somehow fed back, the overall control form can be considered as a closed-loop system. The new fuzzy model based inverse control scheme with the new online adaptation mechanism has been implemented and tested on the two real time processes; namely, heat transfer and pH processes and very satisfactory results has been reported.
机译:使用逆系统模型作为控制器可能是控制非线性系统的有效方法。众所周知,模糊逻辑建模是表示非线性系统的有力工具。因此,逆模糊模型可以用作控制非线性植物的控制器。在这种情况下,首先,提出了一种基于模糊模型的逆控制器设计方法。此处介绍的设计方法基于递归优化程序,该程序在每个采样时间都搜索最佳逆模型控制信号。由于优化任务应在两个采样周期之间完成,因此使用快速优化算法变得至关重要。因此,使用Big Bang-Big Crunch(BB-BC)优化算法是因为它的计算时间短且具有较高的全局收敛性。即使逆模型控制器在以开环方式运行时也可以产生完美的控制,但是在对系统上可能发生的失配或干扰进行建模的情况下,这种开环控制还是不够的。为了克服这个问题,其次,除了基于BB-BC优化的模糊模型逆控制器之外,还引入了一种通过BB-BC优化算法的在线自适应机制。自适应机制用于更新模型的相关参数,同时最小化系统和模型输出之间的瞬时误差的绝对值。以这种方式,系统输出以某种方式被反馈,整个控制形式可以被认为是一个闭环系统。在两个实时过程上实现并测试了具有新的在线自适应机制的基于模糊模型的逆控制方案。即,传热和pH过程以及非常令人满意的结果已经被报道。

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