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Using an Adaptative Fuzzy-Logic System to Optimize the Performances and the Reduction of Chattering Phenomenon in the Control of Induction Motor | Science Publications

机译:使用自适应模糊逻辑系统优化性能并降低感应电动机控制中的颤振现象科学出版物

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> Problem statement: Neural networks and fuzzy inference systems are becoming well-recognized tools of designing an identifier/controller capable of perceiving the operating environment and imitating a human operator with high performance. Also, by combining these two features, more versatile and robust models, called neuro-fuzzy architectures have been developed. The mo Approach: Motivation behind the use of neuro-fuzzy approaches was based on the complexity of real life systems, ambiguities on sensory information or time-varying nature of the system under investigation. In this way, the present contribution concerns the application of neuro-fuzzy approach in order to perform the responses of the speed regulation, ensure more robustness of the overall system and to reduce the chattering phenomenon introduced by sliding mode control which is very harmful to the actuators in our case and may excite the unmodeled dynamics of the system. Results: In fact, the aim of such a research consists first in simplifying the control of the motor by decoupling between two principles variables which provoque the torque in the motor by using the feedback linearization method. Then, using sliding mode controllers to give our process more robustness towards the variation of different parameters of the motor. However, the latter technique of control called sliding mode control caused an indesirable phenomenon which harmful and could leads to the deterioration of the inverters components called chattering. So, here the authors propose to use neuro-fuzzy systems to reduce this phenomenon and perform the performances of the adopted control process. The type of the neuro-fuzzy system used here is called: Adaptive Neuro Fuzzy Inference System (ANFIS). This neuro-fuzzy is destined to replace the speed fuzzy sliding mode controller after its training process. Conclusion: Therefore, from a control design consideration, the adopted neuro-fuzzy system has opened up a new direction that allows for the design of robust controllers for uncertain non-linear dynamical systems without resorting to system model simplifications and linearization and without imposing structural conditions on system uncertainties. On the other hand, it is important to say that this approach permits to improve the performance of the controlled system only by choosing the appropriate form of the membership functions (shape, triangular) and a good partionnement of the universe of discourse of the diverse variables. Finally the obtained simulation results prove that the objectives of the authors where attempt by a significant reduction of the chattering and a good robustness of the process towards parameter variation and external perturbation (load torque).
机译: > 问题陈述:神经网络和模糊推理系统正成为公认的工具,用于设计能够感知操作环境并模仿高性能操作员的识别器/控制器。而且,通过结合这两个功能,开发了更通用,更强大的模型,称为神经模糊架构。 方法:使用神经模糊方法的动机是基于现实生活系统的复杂性,感官信息的含糊不清或所研究系统的时变性质。这样,本发明涉及神经模糊方法的应用,以便执行速度调节的响应,确保整个系统的鲁棒性,并减少由滑模控制引入的颤动现象,这对驾驶员非常有害。在我们的案例中,执行器可能会激发系统的非建模动力。 结果:实际上,这种研究的目的首先在于通过使用反馈线性化方法使两个主要变量之间脱钩来简化电动机的控制,这两个主要变量会在电动机中产生扭矩。然后,使用滑模控制器使我们的过程对电机不同参数的变化更具鲁棒性。但是,后者的控制技术称为滑模控制,产生了不希望的现象,这种现象是有害的,并可能导致逆变器组件的抖动(称为抖动)。因此,在这里,作者建议使用神经模糊系统来减少这种现象并执行所采用的控制过程的性能。这里使用的神经模糊系统的类型称为:自适应神经模糊推理系统(ANFIS)。这种神经模糊注定要在训练过程后取代速度模糊滑模控制器。 结论:因此,从控制设计的角度出发,所采用的神经模糊系统开辟了一个新的方向,可以为不确定的非线性动力系统设计鲁棒控制器,而无需借助系统模型的简化和线性化,并且不对系统不确定性施加结构条件。另一方面,重要的是要说这种方法仅允许通过选择适当形式的隶属函数(形状,三角形)和对各种变量的论述范围的良好分配来改善受控系统的性能。 。最终,所获得的仿真结果证明了作者的目标是通过显着减少颤动和使过程对参数变化和外部扰动(负载转矩)具有良好的鲁棒性来进行尝试。

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