基于cbr的配电网负荷估计

Jianzhong Wu, Yixin Yu
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引用次数: 11

摘要

负荷估计对复杂配电网的管理和控制具有重要意义。提出了一种基于案例推理(CBR)的配电网节点负荷估计方法。分析了该方法的原理,提出了一种混合学习算法,并对其应用进行了讨论。基于cbr的负荷估计方法可以通过快速增量的学习过程动态构建模糊神经网络的节点和连接,并通过网络自组织有效抵御不良数据的影响。该方法是综合负荷和状态估计框架的关键组成部分。在一个有33个节点的系统上进行了测试,测试结果表明,该方法可以提供高质量的节点负载估计
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CBR-based Load Estimation for Distribution Networks
Load estimation is very important for management and control of complex distribution networks. A novel method based on case-based-reasoning (CBR) is proposed for distribution network nodal load estimation. Principle of the method is analyzed, a hybrid learning algorithm is presented, and its application is discussed. The CBR-based load estimation method can build nodes and connections for a fuzzy neural network dynamically by a rapid and incremental learning procedure and can withstand the effect of bad data effectively through network self-organizing. The method is a key component of an integrated load and state estimation framework. The proposed method is tested on a 33-node system whose nodal load data come from a practical system, and test results show that it can provide high quality nodal load estimates
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