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Improved control strategy on buck-boost converter fed DC motor

机译:降压-升压变换器直流电机的改进控制策略

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This paper presents comparison of the performance of neural network controller with that of conventional open loop and closed loop controllers for buck-boost converter fed dc motor based on voltage control method. It describes the use of neural networks in a control loop applied to ac-dc buck-boost converter fed dc motor. The proposed technique makes use of the learning capability of neural networks to implement an auto-adaptive control structure. Such capability allows the network to learn the dynamic behavior of the buck-boost converter fed DC Motor. The performance of the proposed method is investigated using the MATLAB simulation models of buck-boost converter fed dc motor. Neural network controller based on pulse area modulation is built. Closed loop controller provides better dynamic control when compared to other controllers. Comparisons between the proposed Neural Network controller and conventional controller responses are provided through dynamic simulation.
机译:本文介绍了基于电压控制方法的降压-升压变换器直流电动机的神经网络控制器与常规开环和闭环控制器的性能比较。它描述了神经网络在应用于AC-DC降压-升压转换器供电的DC电动机的控制回路中的使用。所提出的技术利用神经网络的学习能力来实现自适应控制结构。这种功能使网络可以学习降压-升压转换器直流电机的动态行为。利用MATLAB仿真模型对降压-升压变换器馈电直流电动机进行了研究。建立了基于脉冲面积调制的神经网络控制器。与其他控制器相比,闭环控制器提供了更好的动态控制。通过动态仿真,可以比较拟议的神经网络控制器和常规控制器的响应。

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