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Speed sensorless model predictive current control of doubly-fed induction machine drive using model reference adaptive system

机译:使用模型参考自适应系统进行速度无传感器模型预测电流控制双馈电机驱动

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摘要

This paper presents a speed sensorless control scheme named as finite control set-model predictive current control (FCS-MPCC) using a modified fictitious ohmic quantity (R) based model reference adaptive system (MRAS) for grid-connected doubly-fed induction machine (DFIM) drive. The variables of the reference model of this speed sensorless scheme (R-MRAS) are represented in stationary reference frame while those for the adaptive model are denoted in synchronously rotating reference frame. The sensorless formulation thus obtained is completely independent of any stator/rotor resistance terms. The scheme is also devoid of any stator/rotor flux estimation. Moreover, the intuitiveness of FCS-MPCC brings in additional flexibility in comparison to the conventional control techniques like field oriented control (FOC) and direct torque control (DTC). The overall scheme demonstrates faster execution time than FOC/DTC based control of DFIM drive. The proposed control algorithm is simulated and tested for limited speed range application in MATLAB/Simulink. The validation of simulation results are further done by experimentation on a dSPACE-1103 based DFIM laboratory setup. (C) 2018 ISA. Published by Elsevier Ltd. All rights reserved.
机译:本文介绍了一种使用基于修改的虚拟欧姆数量(R)的模型参考自适应系统(MRAS)被命名为有限控制设施模型预测电流控制(FCS-MPCC)的速度传感器控制方案,用于网格连接的双馈电流机( DFIM)驱动器。该速度传感器方案(R-MRAS)的参考模型的变量在静止参考帧中表示,而自适应模型的那些在同步旋转参考帧中表示。由此获得的无传感器配方完全独立于任何定子/转子电阻术语。该方案也没有任何定子/转子磁通估计。此外,与传统的控制技术相比,FCS-MPCC的直接性与现场取向控制(FOC)和直接扭矩控制(DTC)相比,额外的灵活性。总体方案比基于FOC / DTC的DFIM驱动器控制更快地执行时间。模拟和测试所提出的控制算法,用于Matlab / Simulink中的有限速度范围应用。基于DSPACE-1103的DFIM实验室设置,进一步完成了仿真结果的验证。 (c)2018 ISA。 elsevier有限公司出版。保留所有权利。

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