Search Results for author: Xinquan Huang

Found 10 papers, 0 papers with code

Controllable seismic velocity synthesis using generative diffusion models

no code implementations9 Feb 2024 Fu Wang, Xinquan Huang, Tariq Alkhalifah

Accurate seismic velocity estimations are vital to understanding Earth's subsurface structures, assessing natural resources, and evaluating seismic hazards.

Physics-informed neural wavefields with Gabor basis functions

no code implementations16 Oct 2023 Tariq Alkhalifah, Xinquan Huang

Specifically, for the Helmholtz equation, we augment the fully connected neural network model with an adaptable Gabor layer constituting the final hidden layer, employing a weighted summation of these Gabor neurons to compute the predictions (output).

GaborPINN: Efficient physics informed neural networks using multiplicative filtered networks

no code implementations10 Aug 2023 Xinquan Huang, Tariq Alkhalifah

The computation of the seismic wavefield by solving the Helmholtz equation is crucial to many practical applications, e. g., full waveform inversion.

A prior regularized full waveform inversion using generative diffusion models

no code implementations22 Jun 2023 Fu Wang, Xinquan Huang, Tariq Alkhalifah

Specifically, we pre-train a diffusion model in a fully unsupervised manner on a prior velocity model distribution that represents our expectations of the subsurface and then adapt it to the seismic observations by incorporating the FWI into the sampling process of the generative diffusion models.

Microseismic source imaging using physics-informed neural networks with hard constraints

no code implementations9 Apr 2023 Xinquan Huang, Tariq Alkhalifah

To be more specific, we modify the representation of the frequency-domain wavefield to inherently satisfy the boundary conditions (the measured data on the surface) by means of a hard constraint, which helps to avoid the difficulty in balancing the data and PDE losses in PINNs.

Efficient physics-informed neural networks using hash encoding

no code implementations26 Feb 2023 Xinquan Huang, Tariq Alkhalifah

Physics-informed neural networks (PINNs) have attracted a lot of attention in scientific computing as their functional representation of partial differential equation (PDE) solutions offers flexibility and accuracy features.

NeuralStagger: Accelerating Physics-constrained Neural PDE Solver with Spatial-temporal Decomposition

no code implementations20 Feb 2023 Xinquan Huang, Wenlei Shi, Qi Meng, Yue Wang, Xiaotian Gao, Jia Zhang, Tie-Yan Liu

Neural networks have shown great potential in accelerating the solution of partial differential equations (PDEs).

LordNet: Learning to Solve Parametric Partial Differential Equations without Simulated Data

no code implementations19 Jun 2022 Wenlei Shi, Xinquan Huang, Xiaotian Gao, Xinran Wei, Jia Zhang, Jiang Bian, Mao Yang, Tie-Yan Liu

Neural operators, as a powerful approximation to the non-linear operators between infinite-dimensional function spaces, have proved to be promising in accelerating the solution of partial differential equations (PDE).

PINNup: Robust neural network wavefield solutions using frequency upscaling and neuron splitting

no code implementations29 Sep 2021 Xinquan Huang, Tariq Alkhalifah

Solving for the frequency-domain scattered wavefield via physics-informed neural network (PINN) has great potential in seismic modeling and inversion.

Single Reference Frequency Loss for Multi-frequency Wavefield Representation using Physics-Informed Neural Networks

no code implementations NeurIPS Workshop AI4Scien 2021 Xinquan Huang, Tariq Alkhalifah

However, the neural network (NN) training can be costly and the cost dramatically increases as we train for multi-frequency wavefields by adding frequency to the NN multidimensional function, as the variation of the wavefield with frequency adds more complexity to the NN training.

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