This paper deals with the evaluation of residual tensile strength of composite laminates containing artificial defects, consisting of impact damages of different severity and implanted holes of various diameters. Sensor fusion of acoustic emission and load data was carried out through artificial neural networks, to obtain a reliable prediction of residual tensile strength as early as possible in the loading history. The results show that neural network processing offers an effective method for the monitoring of composite specimens based on acoustic emission detection and analysis
Residual strength prediction of artificially damaged composite laminates based on neural networks / D'Addona, DORIANA MARILENA; Teti, Roberto; Caprino, Giancarlo. - In: JOURNAL OF INTELLIGENT & FUZZY SYSTEMS. - ISSN 1064-1246. - 23:5(2012), pp. 217-223. [10.3233/IFS-2012-0511]
Residual strength prediction of artificially damaged composite laminates based on neural networks
D'ADDONA, DORIANA MARILENA;TETI, ROBERTO;CAPRINO, GIANCARLO
2012
Abstract
This paper deals with the evaluation of residual tensile strength of composite laminates containing artificial defects, consisting of impact damages of different severity and implanted holes of various diameters. Sensor fusion of acoustic emission and load data was carried out through artificial neural networks, to obtain a reliable prediction of residual tensile strength as early as possible in the loading history. The results show that neural network processing offers an effective method for the monitoring of composite specimens based on acoustic emission detection and analysisI documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


