TY - GEN
T1 - ML-adjoint: Learn the adjoint source directly for full-waveform inversion using machine learning
AU - Sun, Bingbing
AU - Alkhalifah, Tariq Ali
N1 - KAUST Repository Item: Exported on 2021-02-23
Acknowledgements: We thank KAUST for supporting the research
PY - 2020/9/30
Y1 - 2020/9/30
N2 - The adjoint source is an integral component of the waveform inversion optimization problems. The adjoint source is often derived from the objective function, and fixed regardless of the data. Thus, to utilize data in formulating the adjoint source, we propose to learn the adjoint source in FWI directly. We introduce the new method, we refer to as ML-adjoint, in the framework of Markov decision process (MDP). In MDP, a policy network takes input given by the predicted and measured data and outputs the adjoint source for back propagation in FWI. To achieve fast convergence in training, we specially design the neural network architecture to mimic the computation of the data residual and Jacobian matrix in constructing the adjoint source. The Marmousi model example demonstrates the robustness of the ML-adjoint in converging to an accurate model.
AB - The adjoint source is an integral component of the waveform inversion optimization problems. The adjoint source is often derived from the objective function, and fixed regardless of the data. Thus, to utilize data in formulating the adjoint source, we propose to learn the adjoint source in FWI directly. We introduce the new method, we refer to as ML-adjoint, in the framework of Markov decision process (MDP). In MDP, a policy network takes input given by the predicted and measured data and outputs the adjoint source for back propagation in FWI. To achieve fast convergence in training, we specially design the neural network architecture to mimic the computation of the data residual and Jacobian matrix in constructing the adjoint source. The Marmousi model example demonstrates the robustness of the ML-adjoint in converging to an accurate model.
UR - http://hdl.handle.net/10754/667589
UR - https://library.seg.org/doi/10.1190/segam2020-3420587.1
U2 - 10.1190/segam2020-3420587.1
DO - 10.1190/segam2020-3420587.1
M3 - Conference contribution
BT - SEG Technical Program Expanded Abstracts 2020
PB - Society of Exploration Geophysicists
ER -