Excitation Current Forecasting for Reactive Power Compensation in Synchronous Motors: A Data Mining Approach

R. Bayindir, M. Yesilbudak, I. Colak, Ş. Sağiroğlu
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引用次数: 6

Abstract

Excitation current of a synchronous motor has a key role in reactive power compensation. For this purpose, the k-nearest neighbor (k-NN) classifier designed in this paper predicts the excitation current parameter using n-tupled inputs. Load current, power factor, power factor error and the change of excitation current parameters were utilized in n-tupled inputs. Moreover, Euclidean, Manhattan and Minkowski distance metrics were employed for measuring the closeness among the observations and the nearest neighbor number k was assigned as 1, 2, 3, 4 and 5, respectively. The forecasting results have shown that the k-NN classifier which uses power factor and the change of excitation current parameters achieved the best forecasting accuracy for k=1 in Minkowski distance metric. However, the k-NN classifier which uses load current, power factor and power factor error parameters gave the worst forecasting accuracy for k=5 in Minkowski distance metric.
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同步电机无功补偿励磁电流预测:一种数据挖掘方法
同步电动机励磁电流在无功补偿中起着关键作用。为此,本文设计的k近邻(k-NN)分类器使用n元输入来预测激励电流参数。将负载电流、功率因数、功率因数误差和励磁电流参数的变化作为n元输入。采用欧几里得距离、曼哈顿距离和闵可夫斯基距离度量来度量观测值之间的接近程度,并将最近邻数k分别定为1、2、3、4和5。预测结果表明,利用功率因数和励磁电流参数变化的k- nn分类器在闵可夫斯基距离度量中k=1时的预测精度最好。然而,使用负载电流、功率因数和功率因数误差参数的k- nn分类器在闵可夫斯基距离度量中对k=5的预测精度最差。
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