Application of machine learning methods in designing combustion chambers of gas turbine engines
Автор: Borisov D.S., Simovin K.K., Yukina D.R., Blagov A.V., Chechet I.V., Matveev S.G.
Журнал: Онтология проектирования @ontology-of-designing
Рубрика: Прикладные онтологии проектирования
Статья в выпуске: 3 (57) т.15, 2025 года.
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The article considers the application of a recurrent neural network with long short-term memory (LSTM) and a gradient boosting algorithm for determining the key geometric dimensions of the diffuser of the combustion chamber of an aircraft gas turbine engine. Numerical modeling of physical processes in the diffuser is performed based on the finite element method, and total pressure losses are subsequently calculated. A database is compiled containing various geometric configurations of the diffuser model alongside the corresponding total pressure loss values. The configuration with the lowest total pressure loss is selected as the reference. The performance of the gradient boosting method is compared with that of the LSTM neural network, based on the total pressure loss data obtained from numerical modeling of the diffuser across a range of geometric configurations. The gradient boosting approach yielded an error of 1.64%, whereas the LSTM network demonstrated an error of 7.28%.This approach enables the creation of a design database for diffuser configurations, facilitates the use of simulation data to train neural networks, and allows for subsequent training on alternative designs. The results can be applied in the design and optimization of combustion chambers in aircraft engines.
Machine learning, gradient boosting, recurrent neural network, designing, combustion chamber diffuser, finite element method
Короткий адрес: https://sciup.org/170209532
IDR: 170209532 | DOI: 10.18287/2223-9537-2025-15-3-351-362