STOCHASTIC INVERSE PROBLEMS: MODELS AND METRICS

被引:0
|
作者
Sabbagh, Elias H. [1 ]
Sabbagh, Harold A. [1 ]
Murphy, R. Kim [1 ]
Aldrin, John C. [2 ]
Annis, Charles [3 ]
Knopp, Jeremy S. [4 ]
机构
[1] Victor Technol LLC, Bloomington, IN 47407 USA
[2] Computat Tools, Gurnee, IL 60031 USA
[3] Stat Engn, Palm Beach Gardens, FL 33418 USA
[4] US Air Force, Res Lab, AFRL RXCA, Wright Patterson AFB, OH 45433 USA
关键词
D O I
10.1063/1.4914812
中图分类号
O59 [应用物理学];
学科分类号
摘要
In past work, we introduced model-based inverse methods, and applied them to problems in which the anomaly could be reasonably modeled by simple canonical shapes, such as rectangular solids. In these cases the parameters to be inverted would be length, width and height, as well as the occasional probe lift-off or rotation. We are now developing a formulation that allows more flexibility in modeling complex flaws. The idea consists of expanding the flaw in a sequence of basis functions, and then solving for the expansion coefficients of this sequence, which are modeled as independent random variables, uniformly distributed over their range of values. There are a number of applications of such modeling: 1. Connected cracks and multiple half-moons, which we have noted in a POD set. Ideally we would like to distinguish connected cracks from one long shallow crack. 2. Cracks of irregular profile and shape which have appeared in cold work holes during bolt-hole eddy-current inspection. One side of such cracks is much deeper than other. 3. L or C shaped crack profiles at the surface, examples of which have been seen in bolt-hole cracks. By formulating problems in a stochastic sense, we are able to leverage the stochastic global optimization algorithms in NLSE, which is resident in VIC-3D (R), to answer questions of global minimization and to compute confidence bounds using the sensitivity coefficient that we get from NLSE. We will also address the issue of surrogate functions which are used during the inversion process, and how they contribute to the quality of the estimation of the bounds.
引用
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页码:1865 / 1872
页数:8
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