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Investigation on Effective Sampling Strategy for Multi-objective Design Optimization of RBCC Propulsion Systems via Surrogate-assisted Evolutionary Algorithms

机译:通过代理辅助进化算法对RBCC推进系统多目标设计优化有效采样策略的研究

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Rocket-based combined cycle (RBCC) engines are an airbreathing propulsion technology that offers considerable potential for efficient access-to-space. Successful design of RBCC-powered space transport systems requires reliable databases for both vehicle and engine performance, calling for an effective sampling method to accurately resolve non-linear characteristics in vast design space. This paper presents an optimal sampling strategy based on the function gradients to realize efficient database construction based on evolutionary algorithms and assesses its effectiveness by applying the methodology to various test functions with multiple objectives as well as surrogate models representing scramjet intake characteristics for validation.
机译:基于Rocket的组合循环(RBCC)发动机是一种借气推进技术,可提供有效的高效访问空间潜力。 RBCC动力空间传输系统的成功设计需要车辆和发动机性能的可靠数据库,呼吁有效的采样方法,以准确地解决广大设计空间中的非线性特性。本文介绍了基于功能梯度的最佳采样策略,以实现基于进化算法的有效数据库结构,并通过将方法应用于各种测试函数来评估其具有多个目标的各种测试功能以及代表模板的扰动器进气特性进行验证。

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