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Load Flow Analysis of Distribution System Using Artificial Neural Networks

机译:利用人工神经网络载荷分析分配系统

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In distribution system to determine static states at each node or bus and operating conditions, the load flow studies are very crucial. The load flow studies are very important, not only in finding static states but also during distribution system planning and its extension. In this paper, the load flow problem has been solved by artificial neural networks and these networks are efficient to describe the relation involved within the raw data. Two types neural networks are proposed to solve load flow problem of a distribution system, first one is Radial Basis Function Neural Network (RBFN) and other one is Multilayer Feedforward Neural Network with Backpropagation Algorithm (MFFN with BPA). The mathematical model of distribution load flow comprises a set of nonlinear algebraic equations that are solved using network topology-based distribution load flow which is usurped as reference off-line load flow. A series of training data is generated using off-line load flow, which is used to train the neural networks. The training data consists of different loading conditions and voltages corresponding to each and every node in the distribution system. The neural networks are trained with series of training data and tested with a loading which is not present in training data. Results obtained from two neural networks closely agrees with the reference off-line load flow result of same loading. The results of neural networks are compared together and computational time of two neural networks is considerably small.
机译:在分配系统中确定每个节点或总线和操作条件的静态状态,负载流程研究非常至关重要。负载流程研究非常重要,不仅在寻找静态状态,而且在分配系统规划和其延伸期间。在本文中,通过人工神经网络解决了负载流问题,并且这些网络有效地描述了原始数据内所涉及的关系。提出了两种类型的神经网络来解决分配系统的负载流量问题,首先是径向基函数神经网络(RBFN)和其他一个是具有反向衰退算法的多层前馈神经网络(MFFN,BPA)。分配负荷流的数学模型包括一组非线性代数方程,其使用基于网络拓扑的分布载流来解决,该分布负载流是借鉴的基于网络拓扑负载流。使用离线负载流产生一系列培训数据,用于培训神经网络。培训数据包括不同的加载条件和与分发系统中的每个节点对应的电压。神经网络培训,具有一系列训练数据,并通过训练数据中不存在的负载进行测试。从两个神经网络获得的结果紧密地同意了相同负载的参考离线负载流量结果。神经网络的结果在一起比较,两个神经网络的计算时间相当小。

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