基于卷积神经网络的小江断裂北段短周期密集阵列离散曲线的质量影响因素

IF 1.2 4区 地球科学 Q3 Earth and Planetary Sciences
Si Chen , Rui Gao , Zhanwu Lu , Yao Liang , Wei Cai , Lifu Cao , Zilong Chen , Guangwen Wang
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引用次数: 0

摘要

随着短周期密集阵列尺度的增大,色散曲线的数量显著增加。由于数据量的大幅增加,快速评估色散曲线质量以及选择可用的色散曲线变得非常重要。因此,本研究通过训练卷积神经网络模型,使用短周期密集阵列进行环境噪声层析成像,定量评估色散曲线质量。该模型可以选择高质量的色散曲线,人工筛选结果与模型之间的差异≤10%。此外,本研究通过分析色散曲线的质量及其影响因素,建立了色散曲线损失函数,从而估计现有观测系统可用色散曲线的数量。此外,利用蒙特卡罗模拟实验验证了在随机部署台站的观测系统中,与台站数目无关的站对间隔距离概率密度函数。结果表明,为保证色散曲线的损失率,直线长度应超过15 km;0.5,同时保持研究区域内阈值环境噪声层析成像精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quality influencing factors of dispersion curves from short period dense arrays based on a convolutional neural network across the north section of the Xiaojiang fault area

The number of dispersion curves increases significantly when the scale of a short-period dense array increases. Owing to a substantial increase in data volume, it is important to quickly evaluate dispersion curve quality as well as select the available dispersion curve. Accordingly, this study quantitatively evaluated dispersion curve quality by training a convolutional neural network model for ambient noise tomography using a short-period dense array. The model can select high-quality dispersion curves that exhibit a ≤ 10% difference between the results of manual screening and the proposed model. In addition, this study established a dispersion curve loss function by analyzing the quality of the dispersion curve and the corresponding influencing factors, thereby estimating the number of available dispersion curves for the existing observation systems. Furthermore, a Monte Carlo simulation experiment is used to illustrates the station-pair interval distance probability density function, which is independent of station number in the observational system with randomly deployed stations. The results suggested that the straight-line length should exceed 15 km to ensure that loss rate of dispersion curves remains < 0.5, while maintaining the threshold ambient noise tomography accuracy within the study area.

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来源期刊
Earthquake Science
Earthquake Science GEOCHEMISTRY & GEOPHYSICS-
CiteScore
1.10
自引率
8.30%
发文量
42
审稿时长
3 months
期刊介绍: Earthquake Science (EQS) aims to publish high-quality, original, peer-reviewed articles on earthquake-related research subjects. It is an English international journal sponsored by the Seismological Society of China and the Institute of Geophysics, China Earthquake Administration. The topics include, but not limited to, the following ● Seismic sources of all kinds. ● Earth structure at all scales. ● Seismotectonics. ● New methods and theoretical seismology. ● Strong ground motion. ● Seismic phenomena of all kinds. ● Seismic hazards, earthquake forecasting and prediction. ● Seismic instrumentation. ● Significant recent or past seismic events. ● Documentation of recent seismic events or important observations. ● Descriptions of field deployments, new methods, and available software tools. The types of manuscripts include the following. There is no length requirement, except for the Short Notes. 【Articles】 Original contributions that have not been published elsewhere. 【Short Notes】 Short papers of recent events or topics that warrant rapid peer reviews and publications. Limited to 4 publication pages. 【Rapid Communications】 Significant contributions that warrant rapid peer reviews and publications. 【Review Articles】Review articles are by invitation only. Please contact the editorial office and editors for possible proposals. 【Toolboxes】 Descriptions of novel numerical methods and associated computer codes. 【Data Products】 Documentation of datasets of various kinds that are interested to the community and available for open access (field data, processed data, synthetic data, or models). 【Opinions】Views on important topics and future directions in earthquake science. 【Comments and Replies】Commentaries on a recently published EQS paper is welcome. The authors of the paper commented will be invited to reply. Both the Comment and the Reply are subject to peer review.
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