ue to their very good strength to weight ratio, composite materials make
up over 50% of recent aircraft constructions. The materials are manufactured
from very thin fibrous layers (∼ 10 −4 m) and even thinner resin interfaces
(∼ 10 −5 m). To achieve the required strength, a particular layup sequence of
orientations of the anisotropic fibrous layers is used.
During manufacturing, small localised defects in the form of misaligned
fibrous layers can occur in composite materials. In this talk I will introduce
a Markov Chain Monte Carlo algorithm, which derives the stochastic distri-
bution of such wrinkle defects from image data. The approach significantly
reduces uncertainty in the parameterization of stochastic numerical studies
on the effects of defects. The defects are parameterized by stochastic random
fields defined using Karhunen-Loéve modes inferred from misalignment data
extracted from B-Scan data using a modified version of Multiple Field Image
Analysis [2].
Further, I will discuss using the GENEO coarse space as a surrogate
model for the fine-scale displacement and stress fields. For the coarse space
construction, GENEO computes generalised eigenvectors of the local stiffness
matrices on the overlapping subdomains and builds an approximate coarse
space by combining the smallest energy eigenvectors on each subdomain via a partition of unity [1].
«
ue to their very good strength to weight ratio, composite materials make
up over 50% of recent aircraft constructions. The materials are manufactured
from very thin fibrous layers (∼ 10 −4 m) and even thinner resin interfaces
(∼ 10 −5 m). To achieve the required strength, a particular layup sequence of
orientations of the anisotropic fibrous layers is used.
During manufacturing, small localised defects in the form of misaligned
fibrous layers can occur in composite materials. In this talk...
»