Reduced Order Models For Spectral Domain Inversion: Embedding Into The Continuous Problem And Generation Of Internal Data

INVERSE PROBLEMS(2020)

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摘要
We generate data-driven reduced order models (ROMs) for inversion of the one and two dimensional Schrodinger equation in the spectral domain given boundary data at a few frequencies. The ROM is the Galerkin projection of the Schrodinger operator onto the space spanned by solutions at these sample frequencies. The ROM matrix is in general full, and not good for extracting the potential. However, using an orthogonal change of basis via Lanczos iteration, we can transform the ROM to a block tridiagonal form from which it is easier to extract q. In one dimension, the tridiagonal matrix corresponds to a three-point staggered finite-difference system for the Schrodinger operator discretized on a so-called spectrally matched grid which is almost independent of the medium. In higher dimensions, the orthogonalized basis functions play the role of the grid steps. The orthogonalized basis functions are localized and also depend only very weakly on the medium, and thus by embedding into the continuous problem, the reduced order model yields highly accurate internal solutions. That is to say, we can obtain, just from boundary data, very good approximations of the solution of the Schrodinger equation in the whole domain for a spectral interval that includes the sample frequencies. We present inversion experiments based on the internal solutions in one and two dimensions.
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关键词
reduced order model, Schrodinger, inversion, internal data
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