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AXIAL TURBINE BLADE AERODYNAMIC OPTIMIZATION USING A NOVEL MULTI-LEVEL GENETIC ALGORITHM

机译:新型多层次遗传算法的轴流叶片气动优化

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In this paper, a new multiploid genetic optimization method handling surrogate models of the CFD solutions is presented and applied for single objective turbine blade aerodynamic optimization problem. A fast, efficient, robust, and automated design method is developed to aerodynamically optimize 3D gas turbine blades. The design objectives are selected as maximizing the adiabatic efficiency and torque so as to reduce the weight, size and cost of the gas turbine engine. A 3-Dimensional steady Reynolds Averaged Navier Stokes solver is coupled with an automated unstructured grid generation tool. The solver is verified using two well known test cases. Blade geometry is modeled by 36 design variables plus the number of blades variable in a row. Fine and coarse grid solutions are respected as high and low fidelity models, respectively. One of the test cases is selected as the baseline and is modified by the design process. It was found that the multiploid genetic algorithm successfully accelerates the optimization at the initial generations for both optimization problems, while preventing converging to local optimums.
机译:本文提出了一种处理CFD解决方案替代模型的多倍体遗传优化方法,并将其应用于单目标涡轮叶片空气动力学优化问题。开发了一种快速,高效,强大且自动化的设计方法,以对3D燃气轮机叶片进行空气动力学优化。选择设计目标是为了最大化绝热效率和扭矩,从而减少燃气涡轮发动机的重量,尺寸和成本。 3维稳定的雷诺平均Navier Stokes求解器与自动非结构化网格生成工具结合使用。使用两个众所周知的测试用例对求解器进行了验证。叶片几何形状由36个设计变量加上连续的叶片数量建模。精细和粗糙网格解决方案分别被视为高保真模型和低保真模型。选择其中一个测试用例作为基准,并通过设计过程对其进行修改。发现多倍体遗传算法在两个优化问题的初始代成功地加速了优化,同时防止收敛到局部最优。

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    《ASME turbo expo》|2008年|2361-2374|共14页
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    Oezhan OEKSUEZ;

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