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Comparison Study of Machine Learning Techniques to Predict Flight Energy Consumption for Advanced Air MobilityThis paper addresses the need to predict the flight energy consumption of aerial vehicles in the presence of wind using machine learning techniques. The presented work is critical to achieving sustainable and efficient operations for Advanced Air Mobility (AAM) and to evaluating the readiness of the ground-supporting energy infrastructure, e.g., electric grid and AAM portals. The flight energy consumption is described using the "energy per meter" (EPM) metric. We present a comparison study of influential machine learning techniques in predicting EPM using real-world flight test data. We presented new results of using the Decision Tree, Random Forest, and linear regression techniques, along with our previous results using the Recurrent Neural Network and Feed Forward Neural Network techniques. The comparison results show that the Linear Regression method outperforms other methods on the basis of the Mean Squared Error and error variance.
Document ID
20230017835
Acquisition Source
Ames Research Center
Document Type
Conference Paper
Authors
Robert Selje II
(New Mexico State University Las Cruces, United States)
Reagan Rubio
(New Mexico State University Las Cruces, United States)
George Gorospe
(Ames Research Center Mountain View, United States)
Liang Sun
(New Mexico State University Las Cruces, United States)
Date Acquired
December 6, 2023
Subject Category
Aeronautics (General)
Air Transportation and Safety
Meeting Information
Meeting: AIAA SciTech Forum and Exposition
Location: Orlando, FL
Country: US
Start Date: January 8, 2024
End Date: January 12, 2024
Sponsors: American Institute of Aeronautics and Astronautics
Funding Number(s)
WBS: 109492.02.01.07.07
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
NASA Peer Committee
Keywords
Machine Learning
Advanced Air Mobility
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