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CFD-based blade shape optimization of MGT-70(3) axial flow compressor

机译:基于CFD的刀片形状优化MGT-70(3)轴流压缩机

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Purpose - This study aims at enhancing the performance of a 16-stage axial compressor and improving the operating stability. The adopted approaches for upgrading the compressor are artificial neural network, optimization algorithms and computational fluid dynamics. Design/methodology/approach - The process starts with developing several data sets for certain 2D sections by means of training several artificial neural networks (ANNs) as surrogate models. Afterward, the trained ANNs are applied to the 3D shape optimization along with parametrization of the blade stacking line. Specifying the significant design parameters, a wide range of geometrical variations are considered by implementation of appropriate number of design variables. The optimized shapes are analyzed by applying computational fluid dynamic to obtain the best geometry. Findings 3D optimal results show improvements, especially in the case of decreasing or elimination of near walls corner separations. In addition, in comparison with the base geometry, numerical optimization shows an increase of 1.15 per cent in total isentropic efficiency in the first four stages, which results in 0.6 per cent improvement for the whole compressor, even while keeping the rest of the stages unchanged. To evaluate the numerical results, experimental data are compared with obtained data from simulation. Based on the results, the highest absolute relative deviation between experimental and numerical static pressure is approximately 7.5 per cent. Originality/value - The blades geometry of an axial compressor used in a heavy-duty gas turbine is optimized by applying artificial neural network, and the results are compared with the base geometry numerically and experimentally.
机译:目的 - 本研究旨在提高16级轴流压缩机的性能,提高操作稳定性。采用的升级方法升级压缩机是人工神经网络,优化算法和计算流体动力学。设计/方法/方法 - 通过培训几个人工神经网络(ANNS)作为代理模型来开发某些2D部分的几个数据集。之后,培训的ANN被应用于3D形优化以及刀片堆叠线的参数化。指定重要的设计参数,通过实施适当数量的设计变量来考虑各种几何变化。通过施加计算流体动力来分析优化的形状以获得最佳几何形状。调查结果3D最佳结果表明改进,特别是在减少或消除靠近墙壁角分离的情况下。另外,与基础几何形状相比,数值优化在前四个阶段中的总熵效率增加了1.15%,这导致整个压缩机的改善0.6%,即使在保持其余阶段不变的情况下。为了评估数值结果,将实验数据与从模拟中获得的数据进行比较。基于结果,实验和数值静压之间的最高绝对相对偏差约为7.5%。原创性/值 - 通过施加人工神经网络优化了重型燃气轮机中使用的轴向压缩机的叶片几何形状,并将结果与​​基本几何形状进行了数值和实验。

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