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Numerical optimization for stator vane settings of multi-stage compressors based on neural networks and genetic algorithms

机译:基于神经网络和遗传算法的多级压缩机定子叶片设置数值优化

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This paper outlines the aerodynamic optimization of stator vane settings for multi-stage compressors via the combination of an artificial neural network (ANN) and a genetic algorithm (GA). The investigation is conducted on a newly developed 5-stage highly loaded axial flow compressor. A three-layer perceptron neural network is employed as surrogate model, replacing an in-house one-dimensional blade stacking computation code. The stagger angles of the four stator vanes serve as the input data of the ANN, and the compressor aerodynamic performances are the outputs of the network. The well-trained ANN is subsequently incorporated into the optimization framework, which is based on an improved real coded GA. Various advanced strategies, including the elitism operator, blend crossover, non-uniform mutation and self-adaption parameters, are introduced to the GA to promote the searching efficiency and solution globality. The optimization is conducted on the reference operating points under both design and part-speed conditions to achieve maximum adiabatic efficiency with restrictions on the pressure ratio. The results show that for the design speed, the original stator vane setting is good, and the room for growth in efficiency is limited based on the one-dimensional optimization. However, the optimized stator vane settings improve the adiabatic efficiency by more than 1 % under part-speed conditions, and the enhanced efficiency is achieved over the entire operating range. Regardless of the assumption of quasi-one-dimensional flow, the effectiveness of the optimization framework in dealing with the stage mismatching is demonstrated. Moreover, a new sensitivity analysis method using ANN is proposed to evaluate the relationships between the geometric parameters and aerodynamic performances of the compressor. (C) 2016 Elsevier Masson SAS. All rights reserved.
机译:本文概述了通过结合人工神经网络(ANN)和遗传算法(GA)进行多级压缩机定子叶片设置的空气动力学优化。该研究是在新开发的5级高负荷轴流压缩机上进行的。采用三层感知器神经网络作为代理模型,代替了内部一维叶片堆叠计算代码。四个定子叶片的交错角用作ANN的输入数据,而压缩机的空气动力学性能是网络的输出。训练有素的人工神经网络随后被合并到优化框架中,该优化框架基于改进的实际编码GA。 GA引入了各种高级策略,包括精英运算符,混合交叉,非均匀突变和自适应参数,以提高搜索效率和解决方案的全局性。在设计和部分速度条件下均对参考工作点进行了优化,以在限制压力比的情况下实现最大绝热效率。结果表明,在一维优化的基础上,对于设计速度,原始的定子叶片设置是好的,并且效率的增长空间受到限制。但是,优化的定子叶片设置在部分转速条件下将绝热效率提高了1%以上,并且在整个工作范围内均实现了更高的效率。无论拟一维流动的假设如何,都证明了优化框架在处理阶段不匹配方面的有效性。此外,提出了一种新的使用ANN的灵敏度分析方法,以评估压缩机的几何参数与空气动力性能之间的关系。 (C)2016 Elsevier Masson SAS。版权所有。

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