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Investigation of power system transient stability using Clustering Based Support Vector Machines and preventive control by rescheduling generators

机译:基于聚类的支持向量机电力系统瞬态稳定性的研究及重新安排发电机的预防控制

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In the deregulated environment of power systems, the transmission networks are often operated with reduced security margins. This seeks the development of reliable and faster security monitoring methods. Support Vector Machines (SVM), a Neural Network Technology has been presented as an important contributor for reaching the goals of online Transient stability assessment (TSA). To ensure secure operation of power system, some preventive actions are required when potential instabilities are detected. This paper presents a new Clustering Based Support Vector Machine (CB-SVM) to identify the stability status of power system and the identified unstable cases are brought back to a more stable economic operating point by rescheduling the generators optimally. To maximize the benefit of learning the SVM, it is combined with Fuzzy-C-Means data clustering technique. The proposed method is demonstrated using New England 39 bus test system and the results are shown to be promising.
机译:在能量系统的解除管制环境中,传输网络通常以减少的安全利润率为操作。这旨在开发可靠和更快的安全监控方法。支持向量机(SVM),神经网络技术已作为达到在线暂态稳定性评估(TSA)的目标的重要贡献者。为确保电力系统的安全运行,检测到潜在不稳定性时需要一些预防措施。本文介绍了一种新的基于集群的支持向量机(CB-SVM),以识别电力系统的稳定状态,通过最佳地重新安排发电机,所识别的不稳定情况被带回更稳定的经济操作点。为了最大限度地提高学习SVM的好处,它与模糊-C-均值数据聚类技术相结合。使用新英格兰39总线测试系统证明了所提出的方法,结果显示出有前途。

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