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Cascade Optimization of an Axial-Flow Hydraulic Turbine Type Propeller by a Genetic Algorithm

机译:谱算法级联优化轴流液压涡轮机型推进器

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This study proposes the use of the genetic algorithm (GA) method in hydraulic turbine optimization for renewable energy applications. The algorithm is used to optimize the performance of a two-dimensional hydrofoil cascade for an axial-flow hydraulic turbine. The potential flow around the cascade is analyzed using the surface vorticity panel method, with a modified coupling coefficient to deal with the turbine cascade. Each section of the guide vane and runner blade hydrofoil cascade is optimized to satisfy the shock-free criterion, which is the fluid dynamic ideal to achieve minimum profile losses. Comparison is also made between the direct and random switching methods for the GA crossover operator. The optimization results show that the random switching method outperforms the performance of the direct switching method in terms of the resulting solutions, as well as in terms of the computational time required to reach convergence. As an alternative to experimental trials, the performance of both turbine designs are predicted and analyzed using the three-dimensional computational fluid dynamics (CFD) approach under several operating conditions. The simulation results show that the optimized design, which is obtained by applying the shock-free criterion using the GA, successfully improves the performance of the initial turbine design.
机译:本研究提出了在可再生能源应用中使用遗传算法(GA)方法在液压涡轮机优化中的使用。该算法用于优化轴流液压涡轮机的二维水翼型级联的性能。使用表面涡度面板法分析级联周围的电位流动,具有修改的耦合系数来处理涡轮机级联。导向叶片和转轮刀片水型级联的每个部分经过优化,以满足无减震标准,这是实现最小型材损耗的流体动态理想。还在GA交叉运算符的直接和随机切换方法之间进行比较。优化结果表明,随机切换方法在所得到的解决方案方面优于直接切换方法的性能,以及达到收敛所需的计算时间。作为实验试验的替代方案,预测了涡轮机设计的性能并在若干操作条件下使用三维计算流体动力学(CFD)方法进行分析。仿真结果表明,通过使用GA应用无减震标准而获得的优化设计成功提高了初始涡轮设计的性能。

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