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首页> 外文期刊>IEEE Transactions on Power Systems >Combined use of unsupervised and supervised learning for dynamic security assessment
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Combined use of unsupervised and supervised learning for dynamic security assessment

机译:结合使用无监督学习和有监督学习进行动态安全评估

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摘要

It is desirable to assess the security and stability of electric power systems after exposure to large disturbances. In this connection, the critical clearing time (CCT) is an attribute which provides significant information about the quality of the postfault system behavior. It may be regarded as a complex mapping of the prefault, fault-on, and postfault system conditions into the time domain. High prediction and generalization capabilities of artificial neural networks provide the basis for synthesis of such a complex mapping carrying input pattern attributes into the single valued space of the CCT. The authors consider the possibility of using unsupervised and supervised learning programs to discover what combination of raw measurements is significant in determining CCT. Correlation analysis and a Euclidean metric are used to specify interfeature dependencies. An example of a four-machine power system is used to illustrate the suggested approach.
机译:期望在受到大的干扰之后评估电力系统的安全性和稳定性。在这方面,关键清除时间(CCT)是一个属性,它提供有关故障后系统行为质量的重要信息。它可以看作是故障前,故障后和故障后系统条件到时域的复杂映射。人工神经网络的高预测和泛化能力为合成这样复杂的映射提供了基础,该映射将输入模式属性携带到CCT的单值空间中。作者认为,使用无监督和受监督的学习程序来发现原始测量的哪种组合对于确定CCT至关重要。相关分析和欧几里德度量标准用于指定功能相关性。以四机动力系统为例来说明建议的方法。

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