Advances in inverse problems for partial differential equations : AMS Special Session Recent Developments on Analysis and Computation for Inverse Problems for PDEs, March 13-14, 2021, virtual, AMS Special Session Recent Advances in Inverse Problems for PDEs, October 23-23 [i.e. 24], 2021, virtual
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Bibliographic Information
Advances in inverse problems for partial differential equations : AMS Special Session Recent Developments on Analysis and Computation for Inverse Problems for PDEs, March 13-14, 2021, virtual, AMS Special Session Recent Advances in Inverse Problems for PDEs, October 23-23 [i.e. 24], 2021, virtual
(Contemporary mathematics, 784)
American Mathematical Society, c2023
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Advances in inverse problems for PDEs
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Library, Research Institute for Mathematical Sciences, Kyoto University数研
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Note
Includes bibliographical references
Description and Table of Contents
Description
This volume contains the proceedings of two AMS Special Sessions ""Recent Developments on Analysis and Computation for Inverse Problems for PDEs"", virtually held on March 13-14, 2021, and ""Recent Advances in Inverse Problems for Partial Differential Equations"",' virtually held on October 23-24, 2021.
The papers in this volume focus on new results on numerical methods for various inverse problems arising in electrical impedance tomography, inverse scattering in radar and optics problems, reconstruction of initial conditions, control of acoustic fields, and stock price forecasting. The authors studied iterative and non-iterative approaches such as optimization-based, globally convergent, sampling, and machine learning-based methods.
The volume provides an interesting source on advances in computational inverse problems for partial differential equations.
Table of Contents
U. G. Abdulla and S. Seif, Discretization and convergence of the EIT optimal control problem in Sobolev spaces with dominating mixed smoothness
T. T. Le, Global reconstruction of initial conditions of nonlinear parabolic equations via the Carleman-contraction method
I. Harris, Regularization of the factorization method with applications to inverse scattering
T. Le, D.-L. Nguyen, V. Nguyen, and T. Truong, Sampling type method combined with deep learning for inverse scattering with one incident wave
D.-L. Nguyen and T. Truong, Fast numerical solutions to direct and inverse scattering for bi-anisotropic periodic Maxwell's equation
L. H. Nguyen and H. T.T. Vu, Reconstructing a space-dependent source term via the quasi-reversibility method
Q. Tran, Convergence analysis of Nedelec finite element approximations for a stationary Maxwell's system
M. V. Klibanov, K. V. Golubnichiy, and A. V. Nikitin, Quasi-reversibility method and neural network machine learning for forecasting of stock option prices
V. A. Khoa, M. V. Klibanov, W. G. Powell, and L. C. Nguyen, Numerical reconstruction for 3D nonlinear SAR imaging via a version of the convexification method
V. A. Khoa, M. T. N. Truong, I. Hogan, and R. Williams, Initial state reconstruction on graphs
L. Besabe and D. Onofrei, Active control of scalar Helmholtz fields in the presence of known impenetrable obstacles
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