Visible to the public Damage Location Identification Through Neural Network Learning from Optical Fiber Signal for Structural Health Monitoring

TitleDamage Location Identification Through Neural Network Learning from Optical Fiber Signal for Structural Health Monitoring
Publication TypeConference Paper
Year of Publication2016
AuthorsMallik, Nilanjan, Wali, A. S., Kuri, Narendra
Conference NameProceedings of the 5th International Conference on Mechatronics and Control Engineering
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-5215-4
Keywordsback propagation algorithm, correlation coefficient, damage, Damage Assessment, feature extraction, fiber optic sensor, pubcrawl, resilience, root mean square deviation, Structural health monitoring
Abstract

Present work deals with prediction of damage location in a composite cantilever beam using signal from optical fiber sensor coupled with a neural network with back propagation based learning mechanism. The experimental study uses glass/epoxy composite cantilever beam. Notch perpendicular to the axis of the beam and spanning throughout the width of the beam is introduced at three different locations viz. at the middle of the span, towards the free end of the beam and towards the fixed end of the beam. A plastic optical fiber of 6 cm gage length is mounted on the top surface of the beam along the axis of the beam exactly at the mid span. He-Ne laser is used as light source for the optical fiber and light emitting from other end of the fiber is converted to electrical signal through a converter. A three layer feed forward neural network architecture is adopted having one each input layer, hidden layer and output layer. Three features are extracted from the signal viz. resonance frequency, normalized amplitude and normalized area under resonance frequency. These three features act as inputs to the neural network input layer. The outputs qualitatively identify the location of the notch.

URLhttp://doi.acm.org/10.1145/3036932.3036937
DOI10.1145/3036932.3036937
Citation Keymallik_damage_2016