Analyzing the Effects of Abnormal Resonance Voltages using Artificial Neural Networks

V. Kuchanskyy, O. Rubanenko, Marijana Cosovic, I. Hunko
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引用次数: 1

Abstract

The possibilities of using artificial neural networks (ANNs) for quick decision-making in the events of prolonged surges are presented in this paper considering that neural networks can establish non-linear relationships between the parameters of an ultra-high voltage transmission line. Research has been carried out based on theoretical models as well as practical problems aiming at the analysis of resonant overvoltages during their occurrence, development and existence. Determining of overvoltage characteristics was carried out in the presence of a significant number of fuzzy specified factors affecting the accuracy. The multilayer model, suitable for identifying the factors having the greatest impact on the occurrence, frequency and multiplicity of overvoltages in electrical networks, is applied. The resonant overvoltages were generated by connecting the autotransformer to the electrical bulk network. The results of determining the characteristics of resonant overvoltages using ANNs are presented in this paper. To achieve this goal, the following four tasks were formulated: (i) overvoltage characteristics using neural network methods were determined, (ii) neural network model corresponding to power line initial data was built, (iii) forecasted results were obtained, and (iv) the accuracy of constructed model was evaluated.
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用人工神经网络分析异常谐振电压的影响
考虑到神经网络可以建立超高压输电线路各参数之间的非线性关系,本文提出了利用人工神经网络在长时间浪涌事件中进行快速决策的可能性。针对谐振过电压的发生、发展和存在过程,结合理论模型和实际问题进行了研究。在存在大量影响精度的模糊指定因素的情况下进行过电压特性的确定。多层模型适用于识别对电网过电压的发生、频率和多重影响最大的因素。谐振过电压是通过将自耦变压器接入电网产生的。本文介绍了用人工神经网络测定谐振过电压特性的结果。为实现这一目标,制定了以下四项任务:(1)利用神经网络方法确定过电压特性,(2)建立与电力线初始数据相对应的神经网络模型,(3)获得预测结果,(4)评估构建模型的准确性。
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