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首页> 外文期刊>Journal of Fluids Engineering: Transactions of the ASME >Multi-Objective Shape Optimization on the Inlet Pipe of a Vertical Inline Pump
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Multi-Objective Shape Optimization on the Inlet Pipe of a Vertical Inline Pump

机译:垂直内联泵入口管的多目标形状优化

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Vertical inline pump is a single-stage single-suction centrifugal pump with a bent pipe before the impeller, which is usually used where installation space is a constraint. In this paper, with three objective functions of efficiencies at 0.5 Q(d,) 1.0 Q(d), and 1.5 Q(d), a multiobjective optimization on the inlet pipe of a vertical inline pump was proposed based on genetic algorithm with artificial neural network (ANN). In order to describe the shape of inlet pipe, the fifth-order and third-order Bezier curves were adopted to fit the mid curve and the trend of parameters of cross sections, respectively. Considering the real installation and computation complexity, 11 variables were finally used in this optimization. Latin hypercube sampling (LHS) was adopted to generate 149 sample cases, which were solved by CFD code ANSYS CFX 18.0. The calculation results and design variables were utilized to train ANNs, and these surrogate models were solved for the optimum design using multi-objective genetic algorithm (MOGA). The results showed the following: (1) There was a great agreement between numerical results and experimental results; (2) The ANNs could accurately fit the objective functions and variables. The maximum deviations of efficiencies at 0.5 Q(d), 1.0 Q(d), and 1.5 Q(d), between predicted values and computational values, were 1.94%, 2.35%, and 0.40%; (3) The shape of inlet pipe has great influence on the efficiency at part-load and design conditions while the influence is slight at overload condition; (4) Three optimized cases were selected and the maximum increase of the efficiency at 0.5 Q(d), 1.0 Q(d), and 1.5 Q(d) was 4.96%, 2.45, and 0.79%, respectively; and (5) The velocity distributions of outflow in the inlet pipe of the three optimized cases were more uniform than the original one.
机译:垂直的内联泵是单级单吸入离心泵,叶轮前弯管,通常使用安装空间是约束的情况下。在本文中,基于具有人工的遗传算法,提出了一种基于人工遗传算法的效率的三个目标效率的三个客观效率。神经网络(ANN)。为了描述入口管的形状,采用第五阶和三阶Bezier曲线分别拟合中曲线和横截面参数的趋势。考虑到实际安装和计算复杂性,最终在此优化中使用了11个变量。采用拉丁杂交类采样(LHS)生成149个样本案例,由CFD代码ANSYS CFX 18.0解决。计算结果和设计变量用于训练ANNS,并使用多目标遗传算法(MOGA)来解决这些替代模型的最佳设计。结果表明以下结果:(1)数值结果与实验结果之间存在巨大的一致性; (2)ANNS可以准确地符合目标函数和变量。效率在0.5 Q(d),1.0 q(d)和1.5 q(d)之间的最大偏差在预测值和计算值之间为1.94%,2.35%和0.40%; (3)入口管的形状对部件负荷和设计条件的效率产生了很大的影响,而影响力在过载条件下略有下降; (4)选择三种优化病例,分别为0.5 Q(d),1.0 q(d)和1.5 q(d)的最大效率增加,分别为4.96%,2.45和0.79%; (5)三个优化案例的入口管道流出的速度分布比原始壳体更均匀。

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