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Modelling and design of a modified neuro-fuzzy control-based IM drive via feedback linearization

机译:通过反馈线性化的改进的基于神经模糊控制的IM驱动器的建模和设计

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This research paper presents a design of a simplified structured adaptive neuro-fuzzy controller (NFC) technique with an intuitive feedback linearization controlled induction motor (IM) model for extensive torque and speed ripple minimization with better performance enhancement of IM drive. The non-linear dynamics of IM is modeled and simulated based on state space linearization technique in the stationary reference frame. The proposed simplified adaptive NFC is the fusion approach of fuzzy logic and neural network with one input as torque error unlike conventional two-input NFC as torque error and change in torque error. It also improves the computational efficiency by making the structure very simple and robust as compared to the conventional NFC, thereby easy to apply in a realistic environment. The effectiveness and execution of the proposed control technique based linearized IM drive is investigated in MATLAB environment in various operating conditions and is contrasted with the conventional two-input NFC as well as PI-controller to analyze the superior performance of IM drive. The system is also implemented in real-time system using DSP 2812 to validate the different control strategies.
机译:这篇研究论文提出了一种简化的结构化自适应神经模糊控制器(NFC)技术的设计,该技术具有直观的反馈线性化控制的感应电动机(IM)模型,以实现广泛的转矩和速度波动最小化,并改善了IM驱动器的性能。基于状态空间线性化技术,在固定参考系中对IM的非线性动力学进行建模和仿真。所提出的简化的自适应NFC是模糊逻辑和神经网络的融合方法,其中一个输入为转矩误差,而传统的两输入NFC为转矩误差和转矩误差变化。与传统的NFC相比,它还通过使结构非常简单且坚固而提高了计算效率,从而易于在现实环境中应用。在MATLAB环境下的各种工况下研究了所提出的基于控制技术的线性IM驱动器的有效性和执行情况,并与常规的两输入NFC和PI控制器进行了对比,以分析IM驱动器的卓越性能。该系统还使用DSP 2812在实时系统中实现,以验证不同的控制策略。

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