SEG Technical Program Expanded Abstracts 2018 2018
DOI: 10.1190/segam2018-2994696.1
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Near-surface velocity analysis for single-sensor data: An integrated workflow using surface waves, AI, and structure-regularized inversion

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Cited by 13 publications
(6 citation statements)
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“…It is expensive to set up an optimization space that includes all the hyperparameter combinations. Referring to deep learningbased surface wave exploration research (Alyousuf et al, 2018;Zhang et al, 2020;Aleardi and Stucchi, 2021;Dai et al, 2021;Fu et al, 2021;Luo et al, 2022), this study sets up four hidden layer blocks. The layers of each hidden layer block are between (0, 2), and the neurons are between (16,256).…”
Section: Tuning the Dnn Hyperparameters Using Bayesian Optimization A...mentioning
confidence: 99%
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“…It is expensive to set up an optimization space that includes all the hyperparameter combinations. Referring to deep learningbased surface wave exploration research (Alyousuf et al, 2018;Zhang et al, 2020;Aleardi and Stucchi, 2021;Dai et al, 2021;Fu et al, 2021;Luo et al, 2022), this study sets up four hidden layer blocks. The layers of each hidden layer block are between (0, 2), and the neurons are between (16,256).…”
Section: Tuning the Dnn Hyperparameters Using Bayesian Optimization A...mentioning
confidence: 99%
“…Tschannen et al (2022) accelerated the compilation speed in wavelet extraction through deep learning, which restrains the iterative adjustment parameters and potential noise. Similarly, some researchers in surface wave exploration have applied deep learning to extract dispersion curves (Alyousuf et al, 2018;Zhang et al, 2020;Dai et al, 2021) and invert velocity structures (Aleardi and Stucchi, 2021;Fu et al, 2021;Luo et al, 2022). Alyousuf et al (2018) used a fully connected network to extract the fundamental-mode dispersion curve.…”
Section: Introductionmentioning
confidence: 99%
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“…For the supervised learning methods, Alyousuf et al. (2018) proposed to pick fundamental‐mode dispersion curves with a multiple layer neural network. Li et al.…”
Section: Introductionmentioning
confidence: 99%
“…Wang et al (2021) develop an unsupervised automatic picking scheme based on the Gaussian mix model clustering algorithm. For the supervised learning methods, Alyousuf et al (2018) proposed to pick fundamental-mode dispersion curves with a multiple layer neural network. Li et al (2019) studied the separation of multi-mode surface waves by supervised machine learning.…”
mentioning
confidence: 99%