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Generative adversarial networks review in earthquake-related engineering fields

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SPRINGER
DOI: 10.1007/s10518-023-01645-7

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Seismic; Seismology; Earthquake engineering; Geophysics; Generative adversarial networks; Deep learning

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Deep learning, particularly through generative adversarial networks (GANs), offers an innovative and beneficial way to generate reliable synthetic data for seismic studies. This study provides a comprehensive review of recent research on GAN-based synthetic generation of ground motion signals and seismic events, which is relevant to various fields such as earth and planetary science, geology, and civil engineering. Understanding the strengths and limitations of current adversarial learning studies in seismology can guide future research efforts.
Within seismology, geology, civil and structural engineering, deep learning (DL), especially via generative adversarial networks (GANs), represents an innovative, engaging, and advantageous way to generate reliable synthetic data that represent actual samples' characteristics, providing a handy data augmentation tool. Indeed, in many practical applications, obtaining a significant number of high-quality information is demanding. Data augmentation is generally based on artificial intelligence (AI) and machine learning data-driven models. The DL GAN-based data augmentation approach for generating synthetic seismic signals revolutionized the current data augmentation paradigm. This study delivers a critical state-of-art review, explaining recent research into AI-based GAN synthetic generation of ground motion signals or seismic events, and also with a comprehensive insight into seismic-related geophysical studies. This study may be relevant, especially for the earth and planetary science, geology and seismology, oil and gas exploration, and on the other hand for assessing the seismic response of buildings and infrastructures, seismic detection tasks, and general structural and civil engineering applications. Furthermore, highlighting the strengths and limitations of the current studies on adversarial learning applied to seismology may help to guide research efforts in the next future toward the most promising directions.

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