Enhancing the Dynamic Performance of a Wind Driven Grid Connected DFIG Using an Effective Control Approach

Mahmoud A. Mossa, M. Abdelhamid, A.A. Hassan
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引用次数: 1

Abstract

The current study concerns with introducing an efficient control approach which improves the dynamic performance of a grid connected doubly fed induction generator (DFIG) which is driven by a wind turbine. To prove the validation of the proposed control algorithm, the generator performance is evaluated under the proposed controller and under the model predictive direct torque control (MPDTC) as a classic predictive control type. After that, a comprehensive dynamic performance comparison is performed between the proposed controller and the MPDTC strategy to visualize the merits and shortages of each control technique to identify the most appropriate approach to be used with the DFIG. The results reveal and confirm the superiority of the formulated predictive control approach over the classic MPDTC, and this is illustrated through the fast-dynamic response, control simplicity, reduced ripples content and minimized computation burden. Moreover, the numerical results are showing a reduction in the total harmonic distortion (THD) with a percentage of 0.57% compared to MPDTC.
采用有效控制方法提高风力并网DFIG的动态性能
本文研究了一种有效的控制方法,以改善风力发电机驱动的并网双馈感应发电机的动态性能。为了验证所提控制算法的有效性,对所提控制器和模型预测直接转矩控制(MPDTC)作为经典预测控制类型下的发电机性能进行了评估。之后,对所提出的控制器和MPDTC策略进行了全面的动态性能比较,以可视化每种控制技术的优缺点,以确定与DFIG一起使用的最合适的方法。结果表明,该预测控制方法具有动态响应快、控制简单、波纹量小、计算量小等优点,优于传统的MPDTC控制方法。此外,数值结果表明,与MPDTC相比,总谐波失真(THD)降低了0.57%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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