Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
822667 | Composites Science and Technology | 2007 | 7 Pages |
Abstract
Large Scale Bridging in SiC/MAS-L (ceramic glass matrix) composites was investigated by using DEN specimens under tensile loading conditions with in situ Acoustic Emission monitoring. The AE data were successfully classified using Unsupervised Pattern Recognition Algorithms and the resulted clusters were correlated to the dominant damage mechanisms of the material. The evolution in time of the different damage mechanisms is feasible after the pattern recognition classification. Microscopic examination was used to correlate the clusters to the damage mechanism they correspond and thus to provide the failure mode identification based on AE data.
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Engineering (General)
Authors
V. Kostopoulos, T. Loutas, K. Dassios,