Combined use of unsupervised and supervised learning for dynamic security assessment

Y. Pao, D. Sobajic
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引用次数: 135

Abstract

It is highly desirable that the security and stability of electric power systems after exposure to large disturbances be assessable. In this connection, the critical clearing time (CCT) is an attribute which provides significant information about the quality of the post-fault system behavior. It may be regarded as a complex mapping of the prefault, fault-on, and post-fault system conditions in the time domain. Y.-H. Pao and D.J. Solajic (1989) showed that a feedforward neural network can be used to learn this mapping and successfully perform under variable system operating conditions and topologies. In that work the system was described in terms of some conventionally used parameters. In contrast to using those pragmatic features selected on the basis of the engineering understanding of the problem, the possibility of using unsupervised and supervised learning paradigms to discover what combination of raw measurements are significant in determining CCT is considered. Correlation analysis and Euclidean metric are used to specify interfeature dependencies. An example of a 4-machine power system is used to illustrate the suggested approach.<>
结合使用无监督和监督学习进行动态安全评估
人们非常希望电力系统在受到大扰动后的安全性和稳定性能够被评估。在这方面,临界清除时间(CCT)是一个属性,它提供了关于故障后系统行为质量的重要信息。它可以看作是故障前、故障接通和故障后系统条件在时间域中的复杂映射。中州。Pao和D.J. Solajic(1989)表明,前馈神经网络可以用来学习这种映射,并在可变的系统运行条件和拓扑结构下成功地执行。在那份工作中,系统是用一些常用的参数来描述的。与使用基于对问题的工程理解选择的那些实用特征相比,我们考虑了使用无监督和有监督学习范式来发现哪些原始测量组合在确定CCT方面具有重要意义的可能性。使用相关分析和欧几里得度量来指定特征间的依赖关系。最后以四机电力系统为例说明了所提出的方法。
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