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首页> 外文期刊>Journal of King Saud University >Geomagnetic micro-pulsation automatic detection via deep leaning approach guided with discrete wavelet transform
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Geomagnetic micro-pulsation automatic detection via deep leaning approach guided with discrete wavelet transform

机译:通过深层学习方法引导地磁微脉动自动检测与离散小波变换引导

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Ultra-low frequency (ULF) signals in the geomagnetic records are important indicators for many phenomena; therefore identification of such signals is an important issue. Automatic identification of these ULF signals is not an easy target because of their small magnitudes. Through this study in hand, two algorithms are proposed to automatically detect these micro-pulsations. The first algorithm uses the multi-level components (details) of the discrete wavelet transform (DWT) instead of the original geomagnetic record. The vector of the maximum values of the cross-correlation between the record and an arbitrary chosen ULF pattern in the same frequency range is a good indicator for the existence of these micro-pulsations. The second algorithm is based on convolutional neural network (CNN) framework guided with the multi-resolution-analysis (MRA) of the DWT. Preprocessing the geomagnetic records using the MRA of DWT to produce the fifth and the sixth details to be the input to the deep CNN topology, highly improved the accuracy to approach 91.11%. In addition, deep learning based algorithm showed better results than the DWT based algorithm in light of all the performance metrics.
机译:地质记录中的超低频率(ULF)信号是许多现象的重要指标;因此,识别此类信号是一个重要问题。由于它们的小量表,自动识别这些ULF信号不是一个简单的目标。通过手头的这项研究,提出了两种算法以自动检测这些微脉动。第一算法使用离散小波变换(DWT)的多级分量(细节)而不是原始地磁记录。在相同频率范围内的记录和任意所选ULF图案之间的互相关的最大值的矢量是存在这些微脉动的良好指标。第二算法基于与DWT的多分辨率分析(MRA)引导的卷积神经网络(CNN)框架。使用DWT的MRA预处理地磁记录以产生第五和第六个细节,以成为深度CNN拓扑的输入,高度提高了接近91.11%的准确性。此外,鉴于所有性能指标,基于深度学习的算法显示出比基于DWT的算法更好的结果。

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