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Enhancement of SVC performance in electric arc furnace for flicker suppression using a Gray‐ANN based prediction method

机译:使用基于Gray-ANN的预测方法增强电弧炉中SVC性能以抑制闪烁

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摘要

Delays in reactive power measurement and thyristor ignition limit SVC performance in flicker mitigation of electric arc furnaces (EAFs). To overcome this limitation, prediction methods can be employed to forecast the EAF reactive power for half cycle ahead, used as a reference signal of the SVC. The utilized prediction methods in this area can be divided into linear and black-box approaches. However, the linear approaches cannot extract the nonlinear governed relations, and using a black-box model is not efficient for linear relations. A Gray-ANN method is proposed here to take the advantages of the two mentioned approaches. Results from indices based on actual records of Mobarakeh Steel Company confirm superiorities of the proposed method over previously utilized prediction methods in this application. Furthermore, SVC's flicker mitigation ability is evaluated using the actual data. The results confirm the significant reduction of flicker compared with the regular system.
机译:电弧炉(EAF)的闪烁缓解中无功功率测量和晶闸管点火极限SVC性能的延迟。为了克服此限制,可以使用预测方法来预测提前半个周期的EAF无功功率,以用作SVC的参考信号。在该领域中使用的预测方法可以分为线性方法和黑盒方法。但是,线性方法无法提取非线性控制关系,并且使用黑盒模型对线性关系效率不高。本文提出了一种灰色神经网络方法,以利用上述两种方法的优势。根据Mobarakeh钢铁公司的实际记录得出的指数结果证实了该方法相对于本应用中先前使用的预测方法的优越性。此外,使用实际数据评估SVC的闪烁缓解能力。结果证实与常规系统相比,闪烁显着减少。

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