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A Hybrid Intelligent Method for Estimating Distribution Network Reconfigurations

机译:估计配电网重配置的混合智能方法

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Abstract: This paper proposes a hybrid intelligent method for estimating distribution network reconfigurations. As the idea of smart grid is well-spread in the world, a good method is required to deal with distribution network operation. In this paper, distribution network reconfigurations are discussed to evaluate the distribution network losses. The emergence of renewable energy such as PV system and wind power generation makes nodal voltage magnitudes fluctuate due to weather conditions. In this paper, a hybrid intelligent method of RBFN (Radial Basis Function Network) of ANN (Artificial Neural Network) and Regression Tree of Data Mining is proposed to estimate distribution network reconfigurations to reduce distribution network losses efficiently. RBFN is used to estimate network reconfigurations from the network conditions. As a prefilitering technique, Regression Tree plays a key role to classify input variables into some clusters where RBFN is constructed at each cluster. The use of the technique makes the learning process of RBFN much easier. The proposed method is successfully applied to a sample system. A comparison is made of the proposed and the conventional methods in terms of errors and computational time.
机译:摘要:本文提出了一种用于估计配电网络重配置的混合智能方法。随着智能电网的思想在世界范围内得到广泛传播,需要一种好的方法来应对配电网络的运行。在本文中,讨论了配电网重新配置以评估配电网损耗。诸如光伏系统和风力发电之类的可再生能源的出现使节点的电压幅值因天气条件而波动。本文提出了一种基于人工神经网络的神经网络的RBFN(径向基函数网络)和数据挖掘的回归树的混合智能方法,用于估计配电网的重构,以有效地减少配电网的损耗。 RBFN用于根据网络状况估算网络重新配置。作为一种预过滤技术,回归树在将输入变量分类到某些集群中起着关键作用,在每个集群中都构建了RBFN。该技术的使用使RBFN的学习过程变得更加容易。所提出的方法已成功应用于样本系统。在误差和计算时间方面对提出的方法和常规方法进行了比较。

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