Quantitative theory of the inverse spectral problem for Sturm-Liouville operator with applications
Yuchao He, Yonghui Xia, Meirong Zhang

TL;DR
This paper develops a quantitative phase plane analysis framework for the inverse spectral problem of Sturm-Liouville operators, providing explicit solutions, uniqueness results, and error relations applicable in engineering and physics.
Contribution
It introduces a novel quantitative approach using phase plane analysis, yielding explicit solutions and proving uniqueness for the inverse spectral problem in the case.
Findings
Explicit analytical expression for reconstructed potential in case.
Proved uniqueness of for any given target potential and eigenvalue.
Established a homeomorphic mapping relating errors in potential reconstruction.
Abstract
An interesting inverse optimization spectral problem, with important applications in structural health monitoring and damage detection, material design, seismic wave analysis, sonar detection, and related fields, involves reconstructing a potential from a finite set of observed eigenvalues such that yields an optimal approximation of the target potential . Previous efforts have been confined to qualitative analysis, whereas the quantitative counterpart remains an open problem. This paper introduces a quantitative framework for the inverse spectral problem by using a phase plane analysis (planar dynamical system approach). We provide a quantitative characterization of the relationship between the reconstructed potential , its target potential , and the observed eigenvalue . Remarkably, for , our analysis yields a…
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Taxonomy
TopicsNumerical methods in inverse problems · Spectral Theory in Mathematical Physics · Microwave Imaging and Scattering Analysis
