On the recovery of internal source for an elliptic system by neural network approximation

IF 0.9 4区 数学 Q2 MATHEMATICS
Hui Zhang, Jijun Liu
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引用次数: 1

Abstract

Abstract Consider a source detection problem for a diffusion system at its stationary status, which is stated as the inverse source problem for an elliptic equation from the measurement of the solution specified only in part of the domain. For this linear ill-posed problem, we propose to reconstruct the interior source applying neural network algorithm, which projects the problem into a finite-dimensional space by approximating both the unknown source and the corresponding solution in terms of two neural networks. By minimizing a novel loss function consisting of PDE-fit and data-fit terms but without the boundary condition fit, the modified deep Galerkin method (MDGM) is applied to solve this problem numerically. Based on the stability result for the analytic extension of the solution, we strictly estimate the generalization error caused by the MDGM algorithm employing the property of conditional stability and the regularity of the solution. Numerical experiments show that we can obtain satisfactory reconstructions even in higher-dimensional cases, and validate the effectiveness of the proposed algorithm for different model configurations. Moreover, our algorithm is stable with respect to noisy inversion input data for the noise in various structures.
用神经网络近似恢复椭圆系统的内源
摘要考虑扩散系统在静止状态下的源检测问题,该问题被描述为椭圆方程的反源问题,该反源问题来自于仅在部分域中指定的解的测量。对于这个线性不适定问题,我们建议应用神经网络算法重建内部源,该算法通过用两个神经网络逼近未知源和相应的解,将问题投影到有限维空间中。通过最小化由PDE拟合和数据拟合项组成但没有边界条件拟合的新损失函数,应用改进的深伽辽金方法(MDGM)对该问题进行了数值求解。基于解的解析扩展的稳定性结果,我们利用解的条件稳定性和正则性,严格估计了MDGM算法引起的推广误差。数值实验表明,即使在高维情况下,我们也可以获得令人满意的重建,并验证了所提出的算法对不同模型配置的有效性。此外,对于各种结构中的噪声,我们的算法对于有噪声的反演输入数据是稳定的。
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来源期刊
Journal of Inverse and Ill-Posed Problems
Journal of Inverse and Ill-Posed Problems MATHEMATICS, APPLIED-MATHEMATICS
CiteScore
2.60
自引率
9.10%
发文量
48
审稿时长
>12 weeks
期刊介绍: This journal aims to present original articles on the theory, numerics and applications of inverse and ill-posed problems. These inverse and ill-posed problems arise in mathematical physics and mathematical analysis, geophysics, acoustics, electrodynamics, tomography, medicine, ecology, financial mathematics etc. Articles on the construction and justification of new numerical algorithms of inverse problem solutions are also published. Issues of the Journal of Inverse and Ill-Posed Problems contain high quality papers which have an innovative approach and topical interest. The following topics are covered: Inverse problems existence and uniqueness theorems stability estimates optimization and identification problems numerical methods Ill-posed problems regularization theory operator equations integral geometry Applications inverse problems in geophysics, electrodynamics and acoustics inverse problems in ecology inverse and ill-posed problems in medicine mathematical problems of tomography
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