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A novel stability classifier based on reformed support vector machines for online stability assessment

机译:基于改进的支持向量机的新型稳定性分类器用于在线稳定性评估

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Online transient stability assessment (TSA) has always been a tough problem for power systems. One of the promising solutions is to extract hidden stability rules from historical data by machine learning algorithms. These algorithms have not been fully accommodated to TSA, since power system has its special characteristics. To ensure conservativeness of TSA, this paper proposes a synthetic stability classifier based on reformed support vector machines. It separates samples into stable, unstable and grey area. The stable and unstable classes are expected to be exactly correct. Moreover, an SVM solver for large scale problem is designed based on sequential minimal optimization (SMO). It decomposes large scale training into parallel small scale training so as to speed up computation. Case studies on IEEE 39-bus system show no false dismissals and demonstrate the advantage of proposed classifier and SVM solver.
机译:在线暂态稳定性评估(TSA)一直是电力系统的难题。一种有前途的解决方案是通过机器学习算法从历史数据中提取隐藏的稳定性规则。由于电力系统具有其特殊特性,因此这些算法尚未完全适应TSA。为了保证TSA的保守性,本文提出了一种基于改进的支持向量机的综合稳定性分类器。它将样品分为稳定,不稳定和灰色区域。稳定类和不稳定类应该是完全正确的。此外,基于顺序最小优化(SMO)设计了用于大规模问题的SVM求解器。它将大规模训练分解为并行的小规模训练,从而加快了计算速度。 IEEE 39总线系统的案例研究显示没有错误解雇,并证明了所提出的分类器和SVM求解器的优势。

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