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The inverse determination of aerodynamic loading from structural response data using neural networks

journal contribution
posted on 2024-11-01, 03:03 authored by Pavel TrivailoPavel Trivailo, Cheril Carn
The prediction and monitoring of aircraft structural fatigue damage is vital for the safe operation of ageing aircraft. The ability to determine aerodynamic loading inversely using structural response data has the potential to significantly improve fatigue monitoring capabilities. This study examines how a Neural Network can be used to estimate and predict aerodynamic loading from structural response data. To simulate aerodynamic loading conditions F/A-18 Empennage fatigue test data which includes the application of both high frequency buffet and low frequency manoeuvre loading will be used. The neural network was trained using response data from several strain gauges as input and known applied loads as output. It was then tested with new data and compared to the known applied loading corresponding to the new data. The network was also tested in its ability to predict the aerodynamic loading across locations different to the locations of the training data.

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    ISSN - Is published in 17415977

Journal

Journal on Inverse Problems in Science and Engineering

Volume

14

Issue

4

Start page

379

End page

395

Total pages

17

Publisher

Taylor and Francis

Place published

UK

Language

English

Copyright

© 2006 Taylor & Francis

Former Identifier

2006001465

Esploro creation date

2020-06-22

Fedora creation date

2009-02-27

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