A maximum entropy approach to sssess debonding in honeycomb aluminum plates
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2014Metadata
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Meruane Naranjo, Viviana
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A maximum entropy approach to sssess debonding in honeycomb aluminum plates
Abstract
Honeycomb sandwich structures are used in a wide variety of applications.
Nevertheless, due to manufacturing defects or impact loads, these structures can be subject to
imperfect bonding or debonding between the skin and the honeycomb core. The presence of
debonding reduces the bending stiffness of the composite panel, which causes detectable
changes in its vibration characteristics. This article presents a new supervised learning
algorithm to identify debonded regions in aluminum honeycomb panels. The algorithm
uses a linear approximation method handled by a statistical inference model based on the
maximum-entropy principle. The merits of this new approach are twofold: training is
avoided and data is processed in a period of time that is comparable to the one of neural
networks. The honeycomb panels are modeled with finite elements using a simplified
three-layer shell model. The adhesive layer between the skin and core is modeled using
linear springs, the rigidities of which are reduced in debonded sectors. The algorithm
is validated using experimental
General note
Artículo de publicación ISI
Patrocinador
Valentina del Fierro was supported by CONICYT grant CONICYT-PCHA/Magster
Nacional/2013-221320691. The authors acknowledge the partial financial support of the Chilean
National Fund for Scientific and Technological Development (Fondecyt) under Grants No. 11110389
and 11110046.
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Entropy 2014, 16, 2869-2889
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