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Aero-Engines AI - A Machine-Learning App for Aircraft Engine Concepts Assessment Effective deployment of trained machine-learning models could drive a high level of efficiency in aircraft engine conceptual design. Aero-Engines AI is a Windows app that has been created to deploy trained machine-learning models to assess aircraft engine concepts. It was created using tkinter, a GUI (graphical user interface) module that is built into the standard Python library. Employing tkinter greatly facilitates the sharing of machine-learning application as an executable file which can be run on Windows machines (without the need to have Python or any library installed). Current version of the app focuses on the performance prediction of conventional turbofans. The app gets user input for a turbofan design, preprocesses the input data, and deploys trained machine-learning models to predict turbofan thrust specific fuel consumption (TSFC), engine weight, core size, and turbomachinery stage-counts. The machine-learning predictive models were built by employing supervised deep-learning algorithm to study patterns in an existing open-source database of production and research turbofan engines. They were trained, cross-validated, and tested in Keras, an open-source neural networks API (application programming interface) written in Python, with TensorFlow (Google open-source artificial intelligence library) serving as the backend engine. The smooth deployment of these machine-learning models using the app shows that Aero-Engines AI is an easy-to-use and a time-saving tool for aircraft engine design-space exploration during the conceptual design stage.
Document ID
20230008530
Acquisition Source
Glenn Research Center
Document Type
Presentation
Authors
Michael T. Tong
(Glenn Research Center Cleveland, Ohio, United States)
Date Acquired
June 2, 2023
Subject Category
Cybernetics, Artificial Intelligence and Robotics
Aircraft Propulsion and Power
Meeting Information
Meeting: Turbomachinery Technical Conference & Exposition (Turbo Expo)
Location: Boston, MA
Country: US
Start Date: June 26, 2023
End Date: June 30, 2023
Sponsors: Ansys (United States)
Funding Number(s)
WBS: 081876.02.03.30
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
Technical Review
Single Expert
Keywords
machine learning
Python
tkinter
Tensorflow
aircraft engine
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