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ML-descent: An optimization algorithm for full-waveform inversion using machine learning
Bingbing Sun,
Tariq Ali Alkhalifah
Physical Sciences and Engineering
Earth Science and Engineering
Research output
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Contribution to journal
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Article
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peer-review
27
Scopus citations
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INIS
wave forms
100%
algorithms
100%
machine learning
100%
optimization
100%
neural networks
57%
nonlinear problems
42%
energy
14%
data
14%
information
14%
modifications
14%
losses
14%
trains
14%
space
14%
accuracy
14%
norm
14%
convergence
14%
learning
14%
variational methods
14%
hands
14%
Computer Science
Machine Learning
100%
Mathematical Optimization
100%
Functions
66%
Models
50%
Inverse Problem
33%
Algorithms
33%
Recurrent Neural Network
33%
Gradient Descent
16%
Optimization Problem
16%
History Information
16%
Descent Direction
16%
Conjugate Gradients
16%
Residual Data
16%
Faster Convergence
16%
Accuracy
16%
Autoencoder
16%