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NASA NTRS · Conference Paper

Use of Design of Experiments in Determining Neural Network Architectures for Loss of Control Detection

Published 2021-04-15 From Langley Research Center 3 authors

Attribution

This is the abstract and citation. Full text lives at NASA NTRS — we link out rather than host. All credit to the authors and Langley Research Center.

Abstract

Verbatim from NASA NTRS. Not paraphrased, not summarized.

We describe empirical methods for selecting a neural network architecture to implement belief state inference on generic commercial transport aircraft. We highlight a case study on the planning, execution, and analysis of a set of experiments to determine the configurations of a conditional variational autoencoder (CVAE). Our main contribution is the application of a structured method that can be used for machine learning in many aerospace applications. This method optimizes the structure and training parameters of a neural network for belief state inference, using Design of Experiments (DOE) statistical methodologies. The motivation for this specific DOE analysis was to identify the appropriate hyperparameters for measuring the CVAE reconstruction probability and latent space, such that the measurements can be used to infer qualitative state changes for the aircraft. We demonstrate that this process yields information about a trained neural network’s utility for this specific application, along with a quantifiable range of certainty. We execute 84 experiments using loss-of-control flight maneuver data from the NASA T 2 aircraft, demonstrating that this empirical process allows us to construct cheap and simple models with specific attributes amenable to belief state inference in aerospace applications.

Authors

  • Newton Campbell Science Applications International Corporation (United States)
  • Jared Andrew Grauer Langley Research Center
  • Irene M Gregory Langley Research Center

Keywords

  • Loss of Control
  • Design of Experiments
  • Neural Networks
  • Conditional Variational Autoencoders

Citation: Newton Campbell, Jared Andrew Grauer, Irene M Gregory (2021). Use of Design of Experiments in Determining Neural Network Architectures for Loss of Control Detection. Langley Research Center. NASA NTRS ID 20205011622. https://ntrs.nasa.gov/citations/20205011622 ↗