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Classification of VLF/LF Lightning Signals Using Sensors and Deep Learning Methods

机译:使用传感器和深度学习方法对VLF / LF雷电信号进行分类

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摘要

Lightning waveform plays an important role in lightning observation, location, and lightning disaster investigation. Based on a large amount of lightning waveform data provided by existing real-time very low frequency/low frequency (VLF/LF) lightning waveform acquisition equipment, an automatic and accurate lightning waveform classification method becomes extremely important. With the widespread application of deep learning in image and speech recognition, it becomes possible to use deep learning to classify lightning waveforms. In this study, 50,000 lightning waveform samples were collected. The data was divided into the following categories: positive cloud ground flash, negative cloud ground flash, cloud ground flash with ionosphere reflection signal, positive narrow bipolar event, negative narrow bipolar event, positive pre-breakdown process, negative pre-breakdown process, continuous multi-pulse cloud flash, bipolar pulse, skywave. A multi-layer one-dimensional convolutional neural network (1D-CNN) was designed to automatically extract VLF/LF lightning waveform features and distinguish lightning waveforms. The model achieved an overall accuracy of 99.11% in the lightning dataset and overall accuracy of 97.55% in a thunderstorm process. Considering its excellent performance, this model could be used in lightning sensors to assist in lightning monitoring and positioning.
机译:雷电波形在雷电观测,定位和雷电灾害调查中起着重要作用。基于现有的实时极低频/低频(VLF / LF)雷电波形采集设备提供的大量雷电波形数据,自动准确的雷电波形分类方法变得极为重要。随着深度学习在图像和语音识别中的广泛应用,使用深度学习对闪电波形进行分类成为可能。在这项研究中,收集了50,000个闪电波形样本。数据分为以下几类:正云地面闪光,负云地面闪光,带电离层反射信号的云地面闪光,正窄双极事件,负窄双极事件,正预分解过程,负预分解过程,连续多脉冲云闪,双极脉冲,天波。设计了多层一维卷积神经网络(1D-CNN),以自动提取VLF / LF雷电波形特征并区分雷电波形。该模型在闪电数据集中的整体准确度为99.11%,在雷暴过程中的整体准确度为97.55%。考虑到其出色的性能,该模型可用于雷电传感器,以帮助进行雷电监视和定位。

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