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Uncertainty-Aware Physical Simulation of Neural Radiance Fields for Fluids

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摘要 This paper presents a novel framework aimed at quantifying uncertainties associated with the 3D reconstruction of smoke from2Dimages.This approach reconstructs color and density fields from 2D images using Neural Radiance Field(NeRF)and improves image quality using frequency regularization.The NeRF model is obtained via joint training ofmultiple artificial neural networks,whereby the expectation and standard deviation of density fields and RGB values can be evaluated for each pixel.In addition,customized physics-informed neural network(PINN)with residual blocks and two-layer activation functions are utilized to input the density fields of the NeRF into Navier-Stokes equations and convection-diffusion equations to reconstruct the velocity field.The velocity uncertainties are also evaluated through ensemble learning.The effectiveness of the proposed algorithm is demonstrated through numerical examples.The presentmethod is an important step towards downstream tasks such as reliability analysis and robust optimization in engineering design.
出处 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第7期1143-1163,共21页 工程与科学中的计算机建模(英文)
基金 funded by the National Natural Science Foundation of China(NSFC)(No.52274222) research project supported by Shanxi Scholarship Council of China(No.2023-036).
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