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Shape optimization of impingement and film cooling holes on a flat plate using a feedforward ANN and GA

机译:使用前馈ANN和GA优化平板上的撞击和薄膜冷却孔的形状

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Numerical simulations of a three-dimensional model of impingement and film cooling on a flat plate are presented and validated with the available experimental data. Four different turbulence models were utilized for simulation, in which SST had the highest precision, resulting in less than 4% maximum error in temperature estimation. A simplified geometry with periodic boundary conditions is designed, based on the main geometry, and is used for the optimization procedure. Six geometrical parameters related to impingement and film holes are selected as design variables. To further reduce the time required for optimization, a feedforward neural network is implemented for the function estimation, and 584 CFD observations were performed for randomly generated design points. The data from CFD simulations were fed to network for training and test operations, and the results with good consistency were extracted from the network. The objective of the optimization is to minimize the coolant mass flow rate, subject to maximum temperature and maximum temperature gradient in solid domain being equal to or lower than their values in base design. A genetic algorithm (GA) with 100 population and 50 iterations, coupled with an artificial neural network (ANN), was used for optimization. Finally, the optimum design is simulated numerically to find the exact values of the output parameters. The CFD results for optimum design shows 44% less coolant mass flow rate while both optimization constraints are satisfied. Such a reduction in the coolant flow rate has a huge impact on the overall performance of a typical gas turbine, which is discussed in this paper.
机译:提出了在平板上进行冲击和薄膜冷却的三维模型的数值模拟,并通过可用的实验数据进行了验证。四个不同的湍流模型用于仿真,其中SST的精度最高,导致温度估算的最大误差小于4%。基于主要几何形状,设计了具有周期性边界条件的简化几何形状,并将其用于优化过程。选择与冲击和膜孔有关的六个几何参​​数作为设计变量。为了进一步减少优化所需的时间,对功能估计实施前馈神经网络,并对随机生成的设计点执行了584个CFD观测。 CFD仿真的数据被馈送到网络进行培训和测试操作,并从网络中提取出具有良好一致性的结果。优化的目的是使冷却剂的质量流量最小化,条件是固态域中的最高温度和最大温度梯度等于或低于基础设计中的值。使用具有100个总体和50次迭代的遗传算法(GA)以及人工神经网络(ANN),进行了优化。最后,对最佳设计进行数值模拟,以找到输出参数的准确值。最佳设计的CFD结果显示,在满足两个优化约束的情况下,冷却剂质量流量减少了44%。冷却剂流速的这种降低对典型燃气轮机的整体性能具有巨大影响,本文将对此进行讨论。

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