Restoration of a potential from noisy spectral data

被引:0
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作者
V. V. Ternovskii
T. M. Khapaeva
M. M. Khapaev
机构
[1] Moscow State University,Faculty of Computational Mathematics and Cybernetics
来源
Doklady Mathematics | 2017年 / 96卷
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摘要
Interest in the inverse Sturm–Liouville problem is motivated by its numerous applications in mathematics and computational physics. To solve a complete inverse problem, one needs two exact spectra, which are usually not known in experimental spectroscopy. Accordingly, a problem of interest is to restore the potential from a finite set of noisy spectral data. A new variational method for solving inverse spectral problems is proposed, which is based on the regularization of ill-posed problems. The method takes into account the measurement error of the spectrum and restores the potential without using simplifying assumptions that it belongs to a certain functional class. The method has been tested on potentials involving smooth segments and jump discontinuities.
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页码:403 / 405
页数:2
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