Deep learning-based prediction of float model performance in floatplanes: A case study on lift-to-drag coefficient ratio
Faisal Fahmi,
Rizqon Fajar,
Sigit Tri Atmaja
et al.
Abstract:Developing an engineering design is resource-intensive and time-consuming, particularly for the floats of a floatplane design, due to its complexity and limited testing facilities. Intelligent-based computational design (IBCD) techniques, which integrate computational design techniques and machine learning (ML) algorithms, offer a solution to reduce required testing by providing predictions. This paper proposes a deep learning (DL)-based IBCD method for modeling floats' lift-to-drag coefficient ratio (C<sub… Show more
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