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On-line evaluation of capacity and energy losses in power transmission systems by using artificial neural networks

机译:使用人工神经网络在线评估输电系统的容量和能量损失

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An adaptive loss evaluation algorithm for power transmission systems is proposed in this paper. The algorithm is based on training of artificial neural networks (ANNs) using backpropagation. Due to the capability of parallel information processing of the ANNs, the proposed method is fast and yet accurate. Active and reactive powers of generators and loads, as well as the magnitudes of voltages at voltage-controlled buses are chosen as inputs to the ANN. System losses are chosen as the outputs. Training data are obtained by load flow studies, assuming that the state variables of the power system to be studied take the values uniformly distributed in the ranges of their lower and upper limits. Load flow studies for different system topologies are carried out and the results are compiled to form the training set. Numerical results are presented in the paper to demonstrate the effectiveness of the proposed algorithm in terms of accuracy and speed. It is concluded that the trained ANN can be utilized for both off-line simulation studies and on-line calculation of demand and energy losses. High performance has been achieved through complex mappings, modeled by the ANN, between system losses and system topologies, operating conditions and load variations.
机译:提出了一种输电系统的自适应损耗评估算法。该算法基于使用反向传播训练的人工神经网络(ANN)。由于人工神经网络的并行信息处理能力,该方法是快速而准确的。发电机和负载的有功和无功功率以及电压控制母线上的电压幅值均被选作ANN的输入。选择系统损耗作为输出。假设要研究的电力系统的状态变量取其上下限范围内的值均匀分布,则通过潮流研究获得训练数据。进行了针对不同系统拓扑的潮流研究,并汇总了结果以形成训练集。本文给出了数值结果,以证明所提算法在准确性和速度方面的有效性。结论是,训练后的人工神经网络可以用于离线仿真研究以及需求和能量损失的在线计算。通过ANN建模的复杂映射,可以在系统损耗与系统拓扑,操作条件和负载变化之间实现高性能。

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