Low-Velocity Impact Monitoring System for a Helicopter Frame by Means of an Artificial Neural Network

F-0071-2015-10197

5/5/2015

Authors
Abstract
Content

Low-velocity impacts, like those due to stone debris, hailstone and bird strike, are a present issue for helicopter operations. Aim of the paper is to develop a low-velocity impact monitoring system able to provide information regarding the position of a low velocity impact. Impacts have been implemented by means of a dynamometric hammer on sandwich panels representing a helicopter frame. One of the most innovative aspects of the research regards the use of a sensor network composed of strain gauges, which are rarely applied for impact localization purposes. Several experimental impact tests have been carried out and an artificial neural network (ANN) has been trained. The system demonstrates the possibility to apply the sensors on a face of the sandwich panel whilst the impacts take place on the other, still guaranteeing robust impact localization. Furthermore, if proper filtering techniques are applied, the algorithm provides a general response regardless of the material used as the hammer tip.

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DOI
https://doi.org/10.4050/F-0071-2015-10197
Citation
Sbarufatti, C., Gilioli, A., Manes, A., and Giglio, M., "Low-Velocity Impact Monitoring System for a Helicopter Frame by Means of an Artificial Neural Network," Vertical Flight Society 71st Annual Forum and Technology Display, Virginia Beach, Virginia, May 5, 2015, https://doi.org/10.4050/F-0071-2015-10197.
Additional Details
Publisher
Published
5/5/2015
Product Code
F-0071-2015-10197
Content Type
Technical Paper
Language
English