自编码
反问题
大地电磁法
地球物理学
高斯分布
反向
逆理论
不确定度量化
人工神经网络
应用数学
计算机科学
算法
地质学
数学
人工智能
物理
数学分析
机器学习
量子力学
电阻率和电导率
电信
表面波
几何学
作者
Óscar Rodríguez,Jamie M. Taylor,David Pardo
摘要
SUMMARY Estimating subsurface properties from geophysical measurements is a common inverse problem. Several Bayesian methods currently aim to find the solution to a geophysical inverse problem and quantify its uncertainty. However, most geophysical applications exhibit more than one plausible solution. Here, we propose a multimodal variational autoencoder model that employs a mixture of truncated Gaussian densities to provide multiple solutions, along with their probability of occurrence and a quantification of their uncertainty. This autoencoder is assembled with an encoder and a decoder, where the first one provides a mixture of truncated Gaussian densities from a neural network, and the second is the numerical solution of the forward problem given by the geophysical approach. The proposed method is illustrated with a 1-D magnetotelluric inverse problem and recovers multiple plausible solutions with different uncertainty quantification maps and probabilities that are in agreement with known physical observations.
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