Treffer: Machine Learning-Based Predictive Analytics for Aircraft Engine Conceptual Design

Title:
Machine Learning-Based Predictive Analytics for Aircraft Engine Conceptual Design
Authors:
Publisher Information:
United States: NASA Center for Aerospace Information (CASI), 2020.
Publication Year:
2020
Document Type:
Report Report
Language:
English
Notes:
081876.02.03.30.01
Accession Number:
edsnas.20205007448
Database:
NASA Technical Reports

Weitere Informationen

Big data and artificial intelligence/machine learning are transforming the global business environment. Data is now the most valuable asset for enterprises in every industry. Companies are using data-driven insights for competitive advantage. With that, the adoption of machine learning-based data analytics is rapidly taking hold across various industries, producing autonomous systems that support human decision-making. This work explored the application of machine learning to aircraft engine conceptual design. Supervised machine-learning algorithms for regression and classification were employed to study patterns in an existing, open-source database of production and research turbofan engines, and resulting in predictive analytics for use in predicting performance of new turbofan designs. Specifically, the author developed machine learning-based analytics to predict cruise thrust specific fuel consumption (TSFC) and core sizes of high-efficiency turbofan engines, using engine design parameters as the input. The predictive analytics were trained and deployed in Keras, an open-source neural networks application program interface (API) written in Python, with Google’s TensorFlow (an open source library for numerical computation) serving as the backend engine. The promising results of the predictive analytics show that machine-learning techniques merit further exploration for application in aircraft engine conceptual design.