Transformer Graph Convolutional Network for Relative Travel-Time Shift Prediction

IF 2.6 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Chunwei Jin, Fang Ye, Jinhui Cai, Yan Yao
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引用次数: 0

Abstract

Abstract Predicting surface-wave travel-time shifts is valuable for analyzing potential effects caused by changes in medium properties, station clock errors, instrument response errors, and other factors. Many current neural networks used in seismology are single-station models trained using single-station (pair) data. However, most seismic methods require knowledge of the spatial positions between multiple stations. Multiple stations contain rich interrelationships and spatial information that cannot be exploited by single-station models. We proposed a multistation neural network structure Transformer Graph Convolutional Network (TGCN) that utilizes temporal attention and spatial attention to capture spatiotemporal information for predicting relative travel-time shifts. Before that, we introduced a method that treats station pairs as nodes and constructs a graph with multiple station pairs. We collected original ambient noise waveforms from 2017 to 2019 in the Alaska region and 2010 to 2014 in the southern California region to obtain relative travel-time shift sequences of station pairs for model training and testing. To showcase the improvement of spatial information to the model, we compared TGCN with two other baseline single-station models—temporal convolutional network and long short-term memory. Our proposed method predicted travel-time values more accurately than the two baseline models, and it also exhibited slower decay in performance when predicting over larger intervals. We also found that the number of station pairs has an impact on the model. When there are a sufficient number of station pairs, the model can effectively utilize the rich spatial information and achieve higher accuracy. Our approach, which incorporates spatiotemporal information, provides outputs that are more efficient and accurate compared with the traditional single-station (pair) method that only considers temporal information, suggesting that spatial information does enhance the performance of the model.
变压器图卷积网络的相对走时位移预测
预测地波走时位移对于分析介质特性变化、台站时钟误差、仪器响应误差等因素对地波走时的潜在影响具有重要意义。目前用于地震学的许多神经网络都是使用单站(对)数据训练的单站模型。然而,大多数地震方法需要了解多个台站之间的空间位置。多站点包含丰富的相互关系和空间信息,单站点模型无法利用这些信息。我们提出了一种多站神经网络结构的变压器图卷积网络(TGCN),该网络利用时间注意和空间注意捕获时空信息来预测相对旅行时偏移。在此之前,我们介绍了一种将站对视为节点并构建具有多个站对的图的方法。我们采集了2017 - 2019年阿拉斯加地区和2010 - 2014年南加州地区的原始环境噪声波形,得到了站对的相对行时位移序列,用于模型训练和测试。为了展示空间信息对模型的改进,我们将TGCN与另外两个基线单站模型——时间卷积网络和长短期记忆进行了比较。我们提出的方法比两个基线模型更准确地预测旅行时间值,并且在预测更大的间隔时表现出更慢的性能衰减。我们还发现站点对的数量对模型有影响。当站对数量足够多时,该模型可以有效利用丰富的空间信息,达到较高的精度。与只考虑时间信息的传统单站(对)方法相比,我们的方法结合了时空信息,提供了更高效和准确的输出,这表明空间信息确实增强了模型的性能。
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来源期刊
Seismological Research Letters
Seismological Research Letters 地学-地球化学与地球物理
CiteScore
6.60
自引率
12.10%
发文量
239
审稿时长
3 months
期刊介绍: Information not localized
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