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Three-level Inverter-fed Induction Motor Drive Performance Improvement with Neuro-fuzzy Space Vector Modulation

机译:采用神经模糊空间矢量调制的三电平逆变器感应电动机驱动性能改善

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摘要

The space vector modulation technique is an optimal pulse-width modulation technique used for inverter control. This article presents a neuro-fuzzy-based space vector modulation technique for a three-level inverter fed induction motor. It uses a hybrid learning algorithm (combination of back-propagation and least-squares methods) for training the input-output data pattern. The training data for neuro-fuzzy-based space vector modulation are generated from the conventional simplified space vector modulation method. The proposed scheme uses the space vector rotation angle and change of rotation angle information as input and generated duty ratios as output. The dynamic and steady-state performance of a neuro-fuzzy-controlled induction motor drive is compared with the conventional space vector modulation and neural network-based space vector modulation methods. The simulation results obtained are verified experimentally using a dSPACE kit (DS1104). The performance measure in terms of the total harmonic distortion of inverter line-line voltage of the neuro-fuzzy-based system is compared with the neural network-based space vector modulation and conventional space vector modulation methods.
机译:空间矢量调制技术是用于逆变器控制的最佳脉冲宽度调制技术。本文提出了一种基于神经模糊的空间矢量调制技术,用于三电平逆变器供电的感应电动机。它使用混合学习算法(反向传播和最小二乘方法的组合)来训练输入输出数据模式。基于神经模糊的空间矢量调制的训练数据是从常规的简化空间矢量调制方法生成的。提出的方案使用空间矢量旋转角和旋转角信息的变化作为输入,并使用生成的占空比作为输出。将神经模糊控制的感应电动机驱动器的动态和稳态性能与常规空间矢量调制和基于神经网络的空间矢量调制方法进行了比较。使用dSPACE套件(DS1104)通过实验验证了获得的仿真结果。将基于神经模糊系统的逆变器线路电压总谐波失真的性能指标与基于神经网络的空间矢量调制和常规空间矢量调制方法进行了比较。

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