Towards Learning Assurance for In-Flight Machine Learning-Based Helicopter Weight Estimator
F-0082-2026-0097
5/5/2026
- Content
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This paper introduces a robust supervised machine learning framework for estimating helicopter gross weight during the takeoff phase. The methodology leverages high-fidelity datasets from Airbus's global in-service fleet to ensure a reliable training foundation. At the core of the approach is a long short-term memory recurrent neural network, supported by a patented data-curation pipeline designed to maintain high data integrity. To align with rigorous aviation safety standards, the study outlines a learning assurance process compliant with EASA guidelines, specifically addressing safety assessment objectives for machine learning. A central innovation is the characterization and monitoring of the model's operational design domain through multidimensional functional principal component analysis. By projecting high-dimensional, non-linear sensor data into a manageable tabular subspace, this approach enables the definition of safety envelopes using explainable and efficient classical methods. Validated against diverse real-world flight profiles, the framework demonstrates high predictive accuracy, marking a significant milestone toward deploying the model on airborne targets for safety-critical functions such as condition-based maintenance.
- Citation
- Mechouche, A., Fabre, L., and Valot, N., "Towards Learning Assurance for In-Flight Machine Learning-Based Helicopter Weight Estimator," Vertical Flight Society 82nd Annual Forum and Technology Display, West Palm Beach, Florida, May 5, 2026, https://doi.org/10.4050/F-0082-2026-0097.