首页> 外文会议>ASME Turbine Technical Conference and Exposition >LPC BLADE AND NON-AXISYMMETRIC HUB PROFILING OPTIMIZATION USING MULTI-FIDELITY NON-INTRUSIVE POD SURROGATES
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LPC BLADE AND NON-AXISYMMETRIC HUB PROFILING OPTIMIZATION USING MULTI-FIDELITY NON-INTRUSIVE POD SURROGATES

机译:LPC刀片和非轴对称集线器分析优化使用多保真非侵入式豆荚替代品

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摘要

The present contribution proposes a Reduced Order Model based multi-fidelity optimization methodology for the design of highly loaded blades in low pressure compressors. Environmental, as well as, economical limitations applied to engine manufacturers make the design of modern turbofans an extremely complex task. A smart compromise has to be found to guarantee both a high efficiency and a high average stage loading imposed for mass reduction constraints, while satisfying stability requirements. The design of compressor blades, usually involves at the same time a dedicated parametrization set-up in high-dimensional space and high-fidelity simulations capturing, at least, efficiency and stability as most impacting phenomena. Despite recent advances in the high-performance computing area, introducing high-fidelity simulations into automated optimization, or even surrogate assisted optimization, loops still stands as a endeavor for engineers. In this framework, the proposed methodology is based on multi-fidelity surrogate models capable of representing the physics at hand in reduced spaces inferred from both precise, albeit costly, high-fidelity simulations and abundant, yet less accurate lower-fidelity data. Finally, we investigate the coupling of the proposed hierarchised multi-fidelity non-intrusive Proper Orthogonal Decomposition based surrogates with an evolutionary algorithm to reduce the number of high-fidelity simulation calls towards the targeted optimum.
机译:本贡献提出了一种基于阶数模型的多保真优化方法,用于低压压缩机高负荷叶片的设计。环境,以及应用于发动机制造商的经济限制,使现代Theofans设计成为一个非常复杂的任务。必须发现智能妥协可以保证对质量减少限制施加的高效率和高平均级负载,同时满足稳定性要求。压缩机刀片的设计通常涉及在高维空间和高保真模拟中的专用参数化设置,至少,效率和稳定性是最影响的现象。尽管高性能计算区域最近进展,但将高保真模拟引入自动化优化,甚至代理辅助优化,循环仍然是工程师的努力。在本框架中,所提出的方法基于多保真代理模型,该模型能够以精确,昂贵,高保真仿真和丰富,但不太准确的低保真数据在从两者中推断出来的物理学。最后,我们研究了所提出的分层多保真度非侵入性正交分解基于代理的耦合,具有进化算法,以减少对目标最佳的高保真仿真呼叫的数量。

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