首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Axial flow compressor blade optimization through flexible shape tuning by means of cooperative co-evolution algorithm and adaptive surrogate model
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Axial flow compressor blade optimization through flexible shape tuning by means of cooperative co-evolution algorithm and adaptive surrogate model

机译:通过协同协同进化算法和自适应替代模型灵活调整形状来优化轴流压气机叶片

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The present study is to explore potential benefits of axial flow compressor blade optimization through a flexible tuning. Modifications of blade sectional profiles and their stacking line can control spanwise blade loading distribution, reduce shock losses, and extend operating flow range. Most previous studies focused on tuning either sectional profiles or stacking line, but little work was conducted by collaboratively varying both, which may be due to abrupt rise of optimization variables and complexity. An efficient optimization method is developed to handle highly nonlinear high-dimension blade optimization problem with simultaneous variation of both sectional profiles and stacking line. It incorporates an improved cooperative co-evolution algorithm optimizer and one-stage expected improvement based adaptive surrogate model. The former decomposes the high-dimension problem into low-dimension subproblems and they can be readily solved; the latter enables the optimizer to jump out of the local minima and conduct the aim-oriented optimal search toward global optimum. A coarse surrogate model is firstly constructed with some DOE samples but it is refined during optimization process with newly identified and evaluated samples. The model prediction accuracy is gradually improved, thus it captures the distinct features (especially global optimum) of optimization problem. Both blade sectional profiles and their spatial positions are simultaneously varied. Four sectional profiles of hub, 33% span, 67% span, and shroud are parameterized, and each is defined by a mean camber line and thickness distribution. Both of them are represented, respectively, by a third-order B-Spline curve. Spatial position of each profile varies in term of sweep and lean. Blade design optimization is conducted for Rotor67 at design flow on a single workstation of Dell 7500. Performance gains are significant: at design flow, overall efficiency and pressure ratio are increased, respectively, by 1.44 and 7.24%; off-design performances are also improved over the entire flow range.
机译:本研究旨在通过灵活调整来探索轴流压缩机叶片优化的潜在利益。叶片截面轮廓及其堆叠线的修改可以控制翼展方向叶片的载荷分布,减少冲击损失,并扩大工作流量范围。以前的大多数研究都集中在调整截面轮廓或堆垛线,但是通过共同改变两者来进行的工作很少,这可能是由于优化变量和复杂性的突然增加所致。开发了一种有效的优化方法来处理高度非线性的高维叶片优化问题,同时截面轮廓和堆垛线都发生变化。它结合了改进的协作式协同进化算法优化器和基于单阶段预期改进的自适应代理模型。前者将高维问题分解为低维子问题,并且可以轻松解决。后者使优化器可以跳出局部最小值,并朝着全局最优方向进行针对目标的最优搜索。首先使用一些DOE样本构建一个粗糙的替代模型,但是在优化过程中使用新识别和评估的样本对其进行完善。模型预测的准确性逐渐提高,从而捕获了优化问题的独特特征(尤其是全局最优)。叶片截面轮廓和它们的空间位置都同时变化。对轮毂,33%跨度,67%跨度和护罩的四个截面轮廓进行了参数设置,每个截面轮廓均由平均弧度线和厚度分布定义。它们都分别由三阶B样条曲线表示。每个轮廓的空间位置根据倾斜度和倾斜度而变化。在Dell 7500的单个工作站上的设计流程中,针对Rotor67进行了刀片设计优化。性能提升显着:在设计流程中,总体效率和压力比分别提高了1.44%和7.24%;在整个流量范围内,非设计性能也得到了改善。

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