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Advanced multi-input system identification for next generation aircraft loads monitoring using linear regression, neural networks and deep learning

Publication ,  Journal Article
Candon, M; Esposito, M; Fayek, H; Levinski, O; Koschel, S; Joseph, N; Carrese, R; Marzocca, P
Published in: Mechanical Systems and Signal Processing
May 15, 2022

Over the past decade, the ideologies surrounding Structural Health Monitoring (SHM) have shifted drastically within the aerospace engineering disciplines, predominantly onus to rapid advancements in machine intelligence. While traditional SHM practices are based on scheduled and pre-emptive maintenance, the NextGen SHM system, known commonly as Prognostics and Health Management (PHM), has a focus on pro-active condition-based maintenance, forecasting and prognostics — a milestone on the trajectory towards Digital Twin technology. In aircraft, particularly defense fighter air platforms, fatigue-critical high-amplitude cyclic behavior is unavoidable, where rapid fatigue life consumption due to an airframe buffet is one of the most problematic phenomena that engineers have encountered throughout the 4th and 5th generation fighter programs. This paper serves as a point-of-reference consolidating a range of machine learning models, under a single benchmark aircraft Multi-Input Single-Output (MISO) loads monitoring problem. Linear regression models, traditional (shallow) artificial neural networks, and deep learning strategies are all explored, where strain sensors are used as inputs to predict representative bending and torsional dynamic (buffet) and quasi-static (maneuver) load spectra on an aircraft wing during transonic buffeting maneuvers. For the benchmark system considered herein, the MISO coherence ranges from high to very weak depending on the load case, hereby providing a unique opportunity to rigorously explore the time-series modeling requirements and make valuable recommendations across a wide range of data-qualities that are likely to be encountered in traditional or modern aircraft data-acquisition systems or, for that matter, in any mechanical systems plagued by fatigue.

Duke Scholars

Published In

Mechanical Systems and Signal Processing

DOI

EISSN

1096-1216

ISSN

0888-3270

Publication Date

May 15, 2022

Volume

171

Related Subject Headings

  • Acoustics
  • 4017 Mechanical engineering
  • 4006 Communications engineering
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Candon, M., Esposito, M., Fayek, H., Levinski, O., Koschel, S., Joseph, N., … Marzocca, P. (2022). Advanced multi-input system identification for next generation aircraft loads monitoring using linear regression, neural networks and deep learning. Mechanical Systems and Signal Processing, 171. https://doi.org/10.1016/j.ymssp.2022.108809
Candon, M., M. Esposito, H. Fayek, O. Levinski, S. Koschel, N. Joseph, R. Carrese, and P. Marzocca. “Advanced multi-input system identification for next generation aircraft loads monitoring using linear regression, neural networks and deep learning.” Mechanical Systems and Signal Processing 171 (May 15, 2022). https://doi.org/10.1016/j.ymssp.2022.108809.
Candon M, Esposito M, Fayek H, Levinski O, Koschel S, Joseph N, et al. Advanced multi-input system identification for next generation aircraft loads monitoring using linear regression, neural networks and deep learning. Mechanical Systems and Signal Processing. 2022 May 15;171.
Candon, M., et al. “Advanced multi-input system identification for next generation aircraft loads monitoring using linear regression, neural networks and deep learning.” Mechanical Systems and Signal Processing, vol. 171, May 2022. Scopus, doi:10.1016/j.ymssp.2022.108809.
Candon M, Esposito M, Fayek H, Levinski O, Koschel S, Joseph N, Carrese R, Marzocca P. Advanced multi-input system identification for next generation aircraft loads monitoring using linear regression, neural networks and deep learning. Mechanical Systems and Signal Processing. 2022 May 15;171.
Journal cover image

Published In

Mechanical Systems and Signal Processing

DOI

EISSN

1096-1216

ISSN

0888-3270

Publication Date

May 15, 2022

Volume

171

Related Subject Headings

  • Acoustics
  • 4017 Mechanical engineering
  • 4006 Communications engineering