雷电模型的人工神经网络评估与识别

I. Silva, A. Souza, M. E. Bordon
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引用次数: 4

摘要

本文描述了一种利用人工神经网络映射闪电模型的新方法。网络作为闪电模型结构特征的标识符,因此可以从输入参数集估计和推广输出参数。仿真实例验证了该方法的有效性。更具体地说,神经网络被用来计算电场强度和临界破坏电压,同时考虑到几个大气和结构因素,如压力、温度、湿度、相间距离、母线高度和波形。本文还提供了与其他方法的比较分析来说明这种新方法。
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Evaluation and identification of lightning models by artificial neural networks
This paper describes a novel approach for mapping lightning models using artificial neural networks. The networks acts as identifier of structural features of the lightning models so that output parameters can be estimated and generalised from an input parameter set. Simulation examples are presented to validate the proposed approach. More specifically, the neural networks are used to compute electrical field intensity and critical disruptive voltage taking into account several atmospheric and structural factors, such as pressure, temperature, humidity, distance between phases, height of bus bars, and wave forms. A comparative analysis with other approaches is also provided to illustrate this new methodology.
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