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Adaptable fuzzy control solutions for driving systems working under continuously variable conditions

机译:适用于连续变化条件下的驱动系统的自适应模糊控制解决方案

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Based on our previous research results partially published in [1], [2], [3] and [4], the paper presents a survey on dedicated control solutions for driving systems working under continuously variable conditions: variable reference input (speed), variable moment of inertia and variable load disturbance. The solutions were validated using numerical simulation and tested on a laboratory equipment [5]. The structures employ the switching between different ModelBased (MB) control algorithms; due on the simplicity in adaptation, different fuzzified Takagi-Sugeno control solutions are offered. A hybrid Takagi-Sugeno PI-neuro-fuzzy controller is presented. The solutions are based on a classical cascade control structure with an inner current controller and an external speed control loop with bump-less switching between the control algorithms. Our solutions are representative for mechatronics applications.
机译:基于我们先前在[1],[2],[3]和[4]中部分发表的研究结果,本文对驱动系统在连续可变条件下工作的专用控制解决方案进行了调查:可变参考输入(速度),可变的惯性矩和可变的负载扰动。该解决方案使用数值模拟进行了验证,并在实验室设备上进行了测试[5]。这些结构采用了不同的基于模型(MB)的控制算法之间的切换。由于适应性简单,因此提供了多种模糊的Takagi-Sugeno控制解决方案。提出了混合式Takagi-Sugeno PI神经模糊控制器。这些解决方案基于经典的级联控制结构,该结构具有内部电流控制器和外部速度控制回路,并在控制算法之间进行无冲击切换。我们的解决方案是机电一体化应用的代表。

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