Total harmonic distortion analysis of inverter fed induction motor drive using neuro fuzzy type-1 and neuro fuzzy type-2 controllers

G. Srinivas, G. Durga Sukumar, M. Subbarao
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Abstract

Introduction. When the working point of the indirect vector control is constant, the conventional speed and current controllers operate effectively. The operating point, however, is always shifting. In a closed-system situation, the inverter measured reference voltages show higher harmonics. As a result, the provided pulse is uneven and contains more harmonics, which enables the inverter to create an output voltage that is higher. Aim. A space vector modulation (SVM) technique is presented in this paper for type-2 neuro fuzzy systems. The inverter’s performance is compared to that of a neuro fuzzy type-1 system, a neuro fuzzy type-2 system, and classical SVM using MATLAB simulation and experimental validation. Methodology. It trains the input-output data pattern using a hybrid-learning algorithm that combines back-propagation and least squares techniques. Input and output data for the proposed technique include information on the rotation angle and change of rotation angle as input and output of produced duty ratios. A neuro fuzzy-controlled induction motor drive’s dynamic and steady-state performance is compared to that of the conventional SVM when using neuro fuzzy type-2 SVM the induction motor, performance metrics for current, torque, and speed are compared to those of neuro fuzzy type-1 and conventional SVM. Practical value. The performance of an induction motor created by simulation results are examined using the experimental validation of a dSPACE DS-1104. For various switching frequencies, the total harmonic distortion of line-line voltage using neuro fuzzy type-2, neuro fuzzy type-1, and conventional based SVMs are provided. The 3 hp induction motor in the lab is taken into consideration in the experimental validations.
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使用神经模糊 1 型和神经模糊 2 型控制器的变频器馈电感应电机驱动器的总谐波失真分析
简介当间接矢量控制的工作点恒定时,传统的速度和电流控制器就能有效工作。然而,工作点总是在变化。在封闭系统情况下,逆变器测量的参考电压显示出更高的谐波。因此,提供的脉冲是不均匀的,包含更多的谐波,这使得变频器能产生更高的输出电压。目的本文针对 2 型神经模糊系统提出了一种空间矢量调制(SVM)技术。通过 MATLAB 仿真和实验验证,将逆变器的性能与神经模糊 1 型系统、神经模糊 2 型系统和经典 SVM 的性能进行了比较。方法。该系统采用混合学习算法训练输入输出数据模式,该算法结合了反向传播和最小二乘法技术。拟议技术的输入和输出数据包括旋转角度和旋转角度变化的信息,作为生产占空比的输入和输出。在使用神经模糊 2 型 SVM 时,将神经模糊控制感应电机驱动器的动态和稳态性能与传统 SVM 的动态和稳态性能进行了比较,并将电流、转矩和速度的性能指标与神经模糊 1 型和传统 SVM 的性能指标进行了比较。实用价值。通过使用 dSPACE DS-1104 进行实验验证,检验了由仿真结果创建的感应电机的性能。针对不同的开关频率,提供了使用神经模糊 2 型、神经模糊 1 型和基于传统 SVM 的线电压总谐波失真。实验验证考虑了实验室中的 3 马力感应电机。
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