基于Kohonen神经网络的电力系统静态安全评估

Mohamed A. El-Sharkawi, R. Atteri
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引用次数: 19

摘要

电力系统的静态安全评估是一项费时的工作,涉及反复求解潮流方程。本文解决的问题是如何大幅减少用于神经网络训练的离线安全评估模拟的数量。为此开发了基于kohonen的分类器。采用该方案,不需要对所有的训练模式都输入系统的安全状态。只有选定的训练模式样本需要通过模拟进行评估。一旦网络得到充分训练,对安全或不安全状态作出反应的神经元就会自组织成簇。在测试阶段,模式安全状态是通过将测试模式与已知安全状态的集群相关联来确定的。该方案还提供了有关系统不安全程度和操作违规范围的信息。
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Static security assessment of power system using Kohonen neural network
Static security assessment of power systems is a time-intensive task involving repetitive solutions of power flow equations. The issue addressed in this paper is how to substantially reduce the amount of offline security assessment simulations used for neural net training. A Kohonen-based classifier is developed for this purpose. With the proposed scheme, the status of the system security is not needed for all training patterns. Only a selected sample of the training patterns needs to be assessed through simulations. Once the network is adequately trained, neurons that respond to secure or insecure states are self organized in clusters. In the testing stage, the pattern security states is determined by correlating the test pattern with a cluster of a known security status. The proposed scheme also provides information on the degree of system insecurity, and the range of the operation violation.<>
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