Towards On-Board Implementation of ML-Based HelicopterWeight Estimator

F-0082-2026-0095

5/5/2026

Authors
Abstract
Content

This paper focuses on the implementation of a novel supervised Machine Learning model for estimating helicopter weight during takeoff, utilizing extensive datasets from Airbus's global in-service fleet. The study details a learning assurance process aligned with the EASA concept paper for machine learning application, and with the on-going Eurocae ED-324. We propose a set of Machine Learning Requirements, a Machine Learning Model Description, and its implementation for a long short-term memory recurrent neural network. Finally, we verify the requirements on the implementation. Demonstrated on legacy avionics computers, the implementation is suitable for the deployment of the developed Machine Learning Model weight estimator on airborne targets for critical functions such as on-board alerting.

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DOI
https://doi.org/10.4050/F-0082-2026-0095
Citation
Valot, N., Fabre, L., Pagetti, C., Mechouche, A., et al., "Towards On-Board Implementation of ML-Based HelicopterWeight Estimator," Vertical Flight Society 82nd Annual Forum and Technology Display, West Palm Beach, Florida, May 5, 2026, https://doi.org/10.4050/F-0082-2026-0095.
Additional Details
Publisher
Published
May 05
Product Code
F-0082-2026-0095
Content Type
Technical Paper
Language
English