Unable to log in or get member pricing? Having trouble changing your password?

Please review our Frequently Asked Questions for complete information on these and other common situations.
 

Vertical Flight Library & Store

From Dampers Estimated Loads to In-Service Degradation Correlations

Ammar Mechouche, Valerio Camerini, Caroline Del Cistia Gallimard, Elsa Cansell, Konstanca Nikolajevic, Airbus Helicopters

May 7, 2024

https://doi.org/10.4050/F-0080-2024-1108

Abstract:
This paper presents an original method that takes advantage of existing large in-service flight data, damper load Machine Learning models as well as the inventory of degraded dampers (elastomeric part), to link the estimated loads and operational conditions to damper degradation cases. The Machine Learning models are trained on flight test campaigns data, and then applied on in-service helicopter data to estimate damper loads as a function of flight parameters. The estimated load history is then used as an input to generate engineering load indicators. These latter, jointly with operational and usage data, are correlated with the reported dampers' degradation observations. Finally, an explainability mechanism is investigated to better understand the Machine Learning models inferences, opening perspectives towards precise damper degradation root causes identification. The obtained results are promising, showing that the occurrence of damper degradation correlates with load history and helicopter operations.


From Dampers Estimated Loads to In-Service Degradation Correlations

  • Presented at Forum 80
  • 10 pages
  • SKU # : F-0080-2024-1108
  • Health and Usage Management Systems

  • Your Price : $30.00
  • Join or log in to receive the member price of $15.00!


VFS member?
Don't add this to your cart just yet!
Be sure to log in first to receive the member price of $15.00!

 
Add To Cart

Reward Value:
(60) Member Points

From Dampers Estimated Loads to In-Service Degradation Correlations

Authors / Details:
Ammar Mechouche, Valerio Camerini, Caroline Del Cistia Gallimard, Elsa Cansell, Konstanca Nikolajevic, Airbus Helicopters