On the Generalization Properties of Deep Learning for Aircraft Fuel Flow Estimation Models
Gabriel Jarry, Ramon Dalmau, Philippe Very, Junzi Sun

TL;DR
This paper explores how deep learning models can accurately predict aircraft fuel flow across various aircraft types, including unseen models, by integrating domain generalization techniques and data augmentation.
Contribution
It introduces a novel methodology combining neural networks with domain generalization to improve fuel flow prediction for unseen aircraft types.
Findings
Models achieve 2-10% error on new aircraft types
Adding noise improves generalization performance
High accuracy (below 1%) on known aircraft types
Abstract
Accurately estimating aircraft fuel flow is essential for evaluating new procedures, designing next-generation aircraft, and monitoring the environmental impact of current aviation practices. This paper investigates the generalization capabilities of deep learning models in predicting fuel consumption, focusing particularly on their performance for aircraft types absent from the training data. We propose a novel methodology that integrates neural network architectures with domain generalization techniques to enhance robustness and reliability across a wide range of aircraft. A comprehensive dataset containing 101 different aircraft types, separated into training and generalization sets, with each aircraft type set containing 1,000 flights. We employed the base of aircraft data (BADA) model for fuel flow estimates, introduced a pseudo-distance metric to assess aircraft type similarity,…
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Taxonomy
TopicsModel Reduction and Neural Networks · Aerospace and Aviation Technology · Nuclear reactor physics and engineering
MethodsSparse Evolutionary Training · Balanced Selection
