LAPSE:2023.5642
Published Article

LAPSE:2023.5642
New Design Method of Solid Propellant Grain Using Machine Learning
February 23, 2023
Abstract
The correlation between solid propellant grain configuration and burning surface area profile is a complicated nonlinear problem. Nonlinear optimization has been adopted to design grain configurations that satisfied the objective area profiles. However, as conventional design methods are impractical, with limited performance, it is necessary to investigate alternatives. Useful information for grain design can be obtained by analyzing the aforementioned correlation. However, this aspect has not been studied owing to the requirement of large amounts of data and analysis techniques. In this study, machine learning was used to develop a new design method. The objective of machine learning was to train a model to classify classes of data. The database stores various sets of configuration variables and their classes. The proposed Gaussian kernel-based support vector machine model predicts the class of newly designed grains. The results verified that the model accurately predicted the class of the set of configuration variables and can be used to modify the set of configuration variables to satisfy the requirement. Thus, it was confirmed that machine learning is an appropriate approach to grain design; however, further research is needed to analyze its practicality.
The correlation between solid propellant grain configuration and burning surface area profile is a complicated nonlinear problem. Nonlinear optimization has been adopted to design grain configurations that satisfied the objective area profiles. However, as conventional design methods are impractical, with limited performance, it is necessary to investigate alternatives. Useful information for grain design can be obtained by analyzing the aforementioned correlation. However, this aspect has not been studied owing to the requirement of large amounts of data and analysis techniques. In this study, machine learning was used to develop a new design method. The objective of machine learning was to train a model to classify classes of data. The database stores various sets of configuration variables and their classes. The proposed Gaussian kernel-based support vector machine model predicts the class of newly designed grains. The results verified that the model accurately predicted the class of the set of configuration variables and can be used to modify the set of configuration variables to satisfy the requirement. Thus, it was confirmed that machine learning is an appropriate approach to grain design; however, further research is needed to analyze its practicality.
Record ID
Keywords
grain design, Machine Learning, solid rocket motor, support vector machine
Suggested Citation
Oh SH, Lee HJ, Roh TS. New Design Method of Solid Propellant Grain Using Machine Learning. (2023). LAPSE:2023.5642
Author Affiliations
Oh SH: Department of Aerospace Engineering, Inha University, 36 Gaetbeol-ro, Yeonsu-gu, Incheon 21999, Korea [ORCID]
Lee HJ: Department of Aerospace Engineering, Inha University, 36 Gaetbeol-ro, Yeonsu-gu, Incheon 21999, Korea [ORCID]
Roh TS: Department of Aerospace Engineering, Inha University, 36 Gaetbeol-ro, Yeonsu-gu, Incheon 21999, Korea
Lee HJ: Department of Aerospace Engineering, Inha University, 36 Gaetbeol-ro, Yeonsu-gu, Incheon 21999, Korea [ORCID]
Roh TS: Department of Aerospace Engineering, Inha University, 36 Gaetbeol-ro, Yeonsu-gu, Incheon 21999, Korea
Journal Name
Processes
Volume
9
Issue
6
First Page
910
Year
2021
Publication Date
2021-05-21
ISSN
2227-9717
Version Comments
Original Submission
Other Meta
PII: pr9060910, Publication Type: Journal Article
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LAPSE:2023.5642
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https://doi.org/10.3390/pr9060910
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Feb 23, 2023
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