利用辐射电场波形数据定位云对地闪电的改进神经方法

N. Taavousi, R. Moini, S. Sadeghi
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引用次数: 0

摘要

提出了一种基于人工神经网络(ANN)的云对地雷电回波通道定位方法。该技术采用两层弹性反向传播神经网络来估计rsc到测量站的距离。所实现的人工神经网络的训练是基于模拟电场数据,采用雷电RSC修正传输线(MTL)模型。通过将所提出的技术应用于Lin等人,1979年给出的实际测量数据来评估其性能。结果表明,当使用与后续回击相关的数据时,该技术可以更准确地预测RSC的位置。这源于人工神经网络训练中使用的RSC的MTL模型比第一次更接近第二次回击
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An improved neuro-based approach for locating cloud-to-ground lightning using radiated electric field waveform data
A new technique based on an artificial neural network (ANN) is proposed to locate cloud-to-ground lightning return stroke channels (RSCs). The technique uses a two-layer resilient backpropagation neural network to estimate the RSC-to-measuring station distance. The training of the implemented ANN is based on simulated electric field data, using the model of modified transmission line (MTL) for lightning RSC. The performance of the proposed technique is evaluated by applying it to real measured data given by Lin et al, 1979. It is shown that the technique predicts the location of RSC more accurately when the data associated with the subsequent return stroke are used. This stems from the fact the MTL model of RSC used in the training of the ANN is closer to the second return stroke than the first one
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