An extremal problem arising in the dynamics of two-phase materials that directly reveals information about the internal geometry
Ornella Mattei, Graeme W. Milton, and Mihai Putinar

TL;DR
This paper develops a mathematical framework using polynomial approximation to analyze the response of two-phase materials, enabling the inference of internal geometry and shape of inclusions from boundary measurements.
Contribution
It introduces explicit error estimates for polynomial approximations of Markov functions, facilitating the design of driving fields to extract geometric information in two-phase materials.
Findings
Explicit error bounds for polynomial approximation improve understanding of response accuracy.
Approximate linear relations involving moments enable geometric inference.
Method extends to operator-valued measures for shape determination in materials.
Abstract
In two phase materials, each phase having a non-local response in time, it has been found that for some driving fields the response somehow untangles at specific times, and allows one to directly infer useful information about the geometry of the material, such as the volume fractions of the phases. Motivated by this, and to obtain an algorithm for designing appropriate driving fields, we find approximate, measure independent, linear relations between the values that Markov functions take at a given set of possibly complex points, not belonging to the interval [-1,1] where the measure is supported. The problem is reduced to simply one of polynomial approximation of a given function on the interval [-1,1] and to simplify the analysis Chebyshev approximation is used. This allows one to obtain explicit estimates of the error of the approximation, in terms of the number of points and the…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Advanced Mathematical Modeling in Engineering · Composite Material Mechanics
