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On-line voltage stability monitoring using an Ensemble AdaBoost classifier

机译:使用Ensemble AdaBoost分类器进行在线电压稳定性监控

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Predictive modeling in an electrical power systems is currently gaining momentum especially as Phasor Measurement Units (PMUs) are being deployed in modern electrical grids to replace the Supervisory Control and Data Acquisition System (SCADA). This paper evaluates machine learning algorithms for the task of monitoring voltage instability for online decision making. In particular the performance of the Naïve Bayesian, K-Nearest Neighbors, Decision Tree and Ensembles classifiers (XGBoost, Bagging, Random Forest, and AdaBoost) were compared. Performance evaluation measures of Precision, Recall, F1-score, and Accuracy were adopted to evaluate the performance of the classifiers. In this paper, a number of voltage stability operating points were generated with different variations of load/generation, using the PSSE Power-Voltage (PV) analysis tool. An IEEE 39 bus was used as a test system. Sufficient training patterns that captured different Operating Points (OPs) at base-case and at multiple contingencies (N-k) were gathered to train machine learning methods to identify acceptable operating conditions and near collapse situations. Experimental results show that AdaBoost achieved the highest classification accuracy, i.e. 96.02%, compared to the other classifiers.
机译:电力系统中的预测建模目前正在蓬勃发展,尤其是当相量测量单元(PMU)被部署在现代电网中以取代监督控制和数据采集系统(SCADA)时。本文评估了机器学习算法,以监测在线决策中的电压不稳定性。特别是比较了朴素贝叶斯,K最近邻,决策树和集成分类器(XGBoost,Bagging,Random Forest和AdaBoost)的性能。采用Precision,Recall,F1分数和Accuracy的性能评估方法来评估分类器的性能。在本文中,使用PSSE功率电压(PV)分析工具生成了具有不同负载/发电变化的许多电压稳定工作点。 IEEE 39总线用作测试系统。收集了足够的训练模式来捕获基本情况和多个突发事件(N-k)的不同操作点(OP),以训练机器学习方法来识别可接受的操作条件和接近崩溃的情况。实验结果表明,与其他分类器相比,AdaBoost达到了最高的分类精度,即96.02%。

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