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Recent progress of efficient low-boom design and optimization methods

Zhonghua Han, Jianling Qiao, Liwen Zhang, Qing Chen, Yang Han, Yulin Ding, Kangyin Zhang, Wenping Song, Bifeng Song

2024Progress in Aerospace Sciences14 citationsDOIOpen Access PDF

Abstract

Reducing the sonic boom to a community-acceptable level is a fundamental challenge in the configuration design of the next-generation supersonic transport aircraft. This paper conducts a survey of recent progress in developing efficient low-boom design and optimization methods, and provides a perspective on the state-of-the-art and future directions. First, the low- and high-fidelity sonic boom prediction methods used in metric of low-boom design are briefly introduced. Second, efficient low-boom inverse design methods are reviewed, such as the classic Jones–Seebass–George–Darden (JSGD) method (and its variants), the high-fidelity near-field-overpressure-based method, and the mixed-fidelity method. Third, direct numerical optimization methods for low-boom designs, including the gradient-, surrogate-, and deep-learning-based optimization methods, are reviewed. Fourth, the applications of low-boom design and optimization methods to representative low-boom configurations are discussed, and the challenging demands for commercially viable supersonic transports are presented. In addition to providing a comprehensive summary of the existing research, the practicality and effectiveness of the developed methods are assessed. Finally, key challenges are identified, and further research directions such as full-carpet-low-boom-driven multidisciplinary design optimization considering mission requirements are recommended.

Topics & Concepts

BoomComputer scienceEngineeringEnvironmental engineeringComputational Fluid Dynamics and AerodynamicsWind and Air Flow StudiesWind Energy Research and Development
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