科学研究
学术报告
当前位置: 77779193永利集团 > 科学研究 > 学术报告 > 正文

DNN for inverse scattering problems

发布时间:2024-06-18 作者:77779193永利集团 浏览次数:
Speaker: 张凯 DateTime: 2024年6月19日(周三)下午14:30-15:30
Brief Introduction to Speaker:

...

Place: 6号楼二楼报告厅
Abstract:This presentation investigates the inverse obstacle scattering problem with low-frequency data in an acoustic waveguide. A Bayesian inference scheme, combining the multi-fidelity strategy and surrogate model with guided modes and deep neural network (DNN), is proposed to reconstruct the shape of unknown scattering objects. Firstly, the inverse problem is reformulated as a statistical inference problem using Bayes' formula, which provides statistical characteristics of the posterior distribution and quantification of the uncertainties. The well-posedness of the posterior distribution is proved by using the f-divergence. Subsequently, a Markov chain Monte Carlo(MCMC) algorithm is used to explore the posterior density. We propose a new multi-fidelity surrogate model to speed up the sampling procedure while maintaining high accuracy. Our numerical simulations demonstrate that this method not only yields high-quality reconstructions but also substantially reduces computational costs.