Deep-Learning for Volcanic Seismic Events Classification

A. Salazar, Rodrigo Arroyo, Noel Pérez, D. Benítez
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引用次数: 2

Abstract

In this work, we proposed a new method to classify long-period and volcano-tectonic spectrogram images using six different deep learning architectures. The developed method used three deep convolutional neural networks named: DCNN1, DCNN2, and DCNN3. Also, three deep convolutional neural networks combined with deep recurrent neural networks named DCNN-RNN1, DCNN-RNN2, and DCNN-RNN3 to maximize the area under the curve of the receiver operating characteristic scores on a dataset of volcano seismic spectrogram images. The three deep recurrent neural network-based models reached the worst results due to the overfitting produced by the small number of samples in the training sets. The DCNN1 overcame the remaining models by touching an area under the curve of the receiver operating characteristic and accuracy scores of 0.98 and 95%, respectively. Although these values were not the highest values per metric, they did not represent statistical differences against other results obtained by more algorithmically complex models. The proposed DCNN1 model showed similar or superior performance when compared to the majority of the state of the art methods in terms of the accuracy metric. Therefore it can be considered a successful scheme to classify LP and VT seismic events based on their spectrogram images.
火山地震事件分类的深度学习
在这项工作中,我们提出了一种使用六种不同的深度学习架构对长周期和火山构造光谱图图像进行分类的新方法。该方法使用了三个深度卷积神经网络:DCNN1、DCNN2和DCNN3。同时,将DCNN-RNN1、DCNN-RNN2、dcnn - rn3 3种深度卷积神经网络与深度递归神经网络相结合,在火山地震谱图图像数据集上实现接收机工作特征分数曲线下面积最大化。三种基于深度递归神经网络的模型由于训练集中样本数量少而产生过拟合,结果最差。DCNN1通过触及接收器工作特性曲线下的面积和准确度得分分别达到0.98和95%,克服了其他模型。虽然这些值不是每个度量的最高值,但它们并不代表与由更复杂的算法模型获得的其他结果的统计差异。在精度度量方面,与大多数最先进的方法相比,所提出的DCNN1模型表现出相似或更好的性能。因此,基于低频和低频地震事件的谱图图像分类是一种成功的方法。
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