Aerodynamics is a key factor in time-trial cycling. Over the years, various aspects have been investigated, including positioning, clothing, bicycle design, and helmet shape. The present study focuses on the development of a methodology for the aerodynamic optimization of a time-trial helmet through the implementation of a reduced-order model, alongside advanced simulation techniques, such as computational fluid dynamics, radial basis functions, mesh morphing, and response surface methodology. The implementation of a reduced-order model enhances the understanding of aerodynamic interactions compared to traditional optimization workflows reported in sports-related research, facilitating the identification of an optimal helmet shape during the design phase. The study offers practical insights for refining helmet design. Starting with a baseline teardrop profile, several morphing configurations are systematically tested, resulting in a 10% reduction in the drag force acting on the helmet. The reduced-order model also facilitates the analysis of turbulent flow patterns on the cyclist’s body, providing a detailed understanding of aerodynamic interactions. By leveraging reduced-order models and advanced simulation techniques, this study contributes to ongoing efforts to reduce the aerodynamic resistance of time-trial helmets, ultimately supporting the goal of improved athlete performance.

Di Meo, E., Lopez, A., Groth, C., Biancolini, M.e., Valentini, P.p. (2024). Reduced-order model of a time-trial cyclist helmet for aerodynamic optimization through mesh morphing and enhanced with real-time interactive visualization. FLUIDS, 9(12) [10.3390/fluids9120300].

Reduced-order model of a time-trial cyclist helmet for aerodynamic optimization through mesh morphing and enhanced with real-time interactive visualization

Di Meo, E.;Lopez, A.;Groth, C.;Biancolini, M. E.
;
Valentini, P. P.
2024-01-01

Abstract

Aerodynamics is a key factor in time-trial cycling. Over the years, various aspects have been investigated, including positioning, clothing, bicycle design, and helmet shape. The present study focuses on the development of a methodology for the aerodynamic optimization of a time-trial helmet through the implementation of a reduced-order model, alongside advanced simulation techniques, such as computational fluid dynamics, radial basis functions, mesh morphing, and response surface methodology. The implementation of a reduced-order model enhances the understanding of aerodynamic interactions compared to traditional optimization workflows reported in sports-related research, facilitating the identification of an optimal helmet shape during the design phase. The study offers practical insights for refining helmet design. Starting with a baseline teardrop profile, several morphing configurations are systematically tested, resulting in a 10% reduction in the drag force acting on the helmet. The reduced-order model also facilitates the analysis of turbulent flow patterns on the cyclist’s body, providing a detailed understanding of aerodynamic interactions. By leveraging reduced-order models and advanced simulation techniques, this study contributes to ongoing efforts to reduce the aerodynamic resistance of time-trial helmets, ultimately supporting the goal of improved athlete performance.
2024
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore IIND-03/A - Progettazione meccanica e costruzione di macchine
Settore IIND-02/A - Meccanica applicata alle macchine
English
Aerodynamics
Cycling
Mesh morphing
Optimization
Reduced-order model
Di Meo, E., Lopez, A., Groth, C., Biancolini, M.e., Valentini, P.p. (2024). Reduced-order model of a time-trial cyclist helmet for aerodynamic optimization through mesh morphing and enhanced with real-time interactive visualization. FLUIDS, 9(12) [10.3390/fluids9120300].
Di Meo, E; Lopez, A; Groth, C; Biancolini, Me; Valentini, Pp
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/399083
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