Title :
Smart data driven maintenance: Improving damage detection and assessment on aerospace structures
Author :
Archetti, Francesco ; Arosio, Gaia ; Candelieri, Antonio ; Giordani, Ilaria ; Sormani, Raul
Author_Institution :
Consorzio Milano Ric., Milan, Italy
Abstract :
Data driven on-line assessment of structural health of aircraft fuselage panels is crucial both in military and civilian settings. This paper shows how Support Vector Machines (SVM) and Genetic Algorithm (GA) enable to analyze the strain values acquired through a monitoring sensor network and improve the diagnostic steps: 1) detecting a damage 2) identifying the specific component affected 3) characterizing the damage in terms of centre and size. The first two steps are performed through the SVM while the 3rd step is based on an Artificial Neural Network (ANN). Finally, the remaining useful life is estimated by using ANNs to predict the values of two parameters of the NASGRO equation which is used to estimate the damage propagation.
Keywords :
aerospace components; aerospace engineering; aircraft; condition monitoring; genetic algorithms; maintenance engineering; neural nets; structural engineering; support vector machines; ANN; GA; NASGRO equation; SVM; aerospace structures; aircraft fuselage panels; artificial neural network; damage assessment; damage detection; genetic algorithm; smart data driven maintenance; structural health; support vector machines; Artificial neural networks; Genetic algorithms; Helicopters; Monitoring; Reliability; Strain; Support vector machines; artificial neural networks; sensor networks; smart monitoring; strain measurement; support vector machines;
Conference_Titel :
Metrology for Aerospace (MetroAeroSpace), 2014 IEEE
Conference_Location :
Benevento
DOI :
10.1109/MetroAeroSpace.2014.6865902