Data-Knowledge Driven Hybrid Deep Learning for Earthquake Early Warning

IF 2.9 3区 地球科学 Q2 ASTRONOMY & ASTROPHYSICS
J. Zhu, S. Li, J. Song
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引用次数: 0

Abstract

Earthquake early warning (EEW) is of great significance in mitigating seismic disasters. Traditional EEW algorithms, which are knowledge-driven approaches, rely on seismologists' analysis. The limited intensity measures were extracted by seismologists from P-wave signals. And there is considerable uncertainty for predicting epicentral distance, magnitude, peak ground acceleration (PGA), and peak ground velocity (PGV). Currently, data-driven deep learning methods with the strong learning abilities do not consider knowledge information from seismologists in EEW; thus, there is unexplored potential in enhancing the performance of deep learning models for EEW. Here, we construct the Data-knowledge driven Hybrid deep Learning network (DHLnet) for EEW using the waveform input, knowledge embedding, convolutional neural network and graph convolutional network, aiming to integrate knowledge information from knowledge-driven methods and the strong learning ability of data-driven deep learning methods, that is, improving the performance of EEW. For the same test data set, compared with knowledge-driven methods and data-driven deep learning models, we demonstrate that DHLnet enhances the timeliness and robustness in predicting the epicentral distance, magnitude, PGA, and PGV during 10 s time window following the arrival of P-wave. Furthermore, to validate the generalization and robustness of the DHLnet in EEW, we applied the trained DHLnet to an independent data set, within first few seconds after an earthquake occurs, DHLnet can provide robust magnitude estimation, epicentral distance estimation and high alarm accuracy. The potential of the proposed network is to enhance the performance of EEW systems and provides new insights into the exploration of deep learning methods for EEW domain.

Abstract Image

用于地震预警的数据知识驱动型混合深度学习
地震预警(EEW)对减轻地震灾害具有重要意义。传统的 EEW 算法属于知识驱动型方法,依赖于地震学家的分析。地震学家从 P 波信号中提取的烈度值有限。而预测震中距、震级、峰值地面加速度(PGA)和峰值地面速度(PGV)存在相当大的不确定性。目前,具有较强学习能力的数据驱动型深度学习方法并未考虑地震学家在 EEW 中提供的知识信息,因此在提高深度学习模型在 EEW 中的性能方面还有待挖掘。在此,我们利用波形输入、知识嵌入、卷积神经网络和图卷积网络构建了用于 EEW 的数据-知识驱动混合深度学习网络(DHLnet),旨在整合知识驱动方法的知识信息和数据驱动深度学习方法的强学习能力,即提高 EEW 的性能。对于同一测试数据集,与知识驱动方法和数据驱动深度学习模型相比,我们证明了 DHLnet 在预测 P 波到达后 10 秒时间窗内的震中距、震级、PGA 和 PGV 方面提高了及时性和鲁棒性。此外,为了验证 DHLnet 在 EEW 中的通用性和鲁棒性,我们将训练好的 DHLnet 应用于一个独立的数据集,在地震发生后的最初几秒内,DHLnet 可以提供鲁棒的震级估计、震中距估计和高报警精度。所提出网络的潜力在于提高 EEW 系统的性能,并为探索 EEW 领域的深度学习方法提供了新的见解。
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来源期刊
Earth and Space Science
Earth and Space Science Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
5.50
自引率
3.20%
发文量
285
审稿时长
19 weeks
期刊介绍: Marking AGU’s second new open access journal in the last 12 months, Earth and Space Science is the only journal that reflects the expansive range of science represented by AGU’s 62,000 members, including all of the Earth, planetary, and space sciences, and related fields in environmental science, geoengineering, space engineering, and biogeochemistry.
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