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Predicting the Performance of Helico-Axial Multiphase Pump Using Neural Networks

机译:使用神经网络预测螺旋轴向多相泵的性能

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The main geometric structural parameters which affected the performance of the compression cell of the helico axial multiphase pump greatly were selected as the research object. The groups of impeller parameters were determined by the orthogonal experimental design method. Then the pressure rise and efficiency for each group which were obtained through numerical simulation according to CFD method were used as the training samples and testing samples in the artificial neural network forecasting process. Two neural network topology structures were determined based on the Back Propagation Neural Network and Radial Basis Function Neural Network respectively. The structure parameters got from the orthogonal design method were used as the input layer data, and the performance parameters from numerical simulation were used as output layer data. After a training progress, two performance prediction models for the helico axial multiphase pump were established based on the BP and RBF respectively. The testing results showed that the average relative errors for pressure rise and efficiency in the BP network prediction model and were 9.97% and 7.9% respectively, while those in the RBF network prediction model were 7.84% and 5.85% respectively.
机译:选择了主要影响螺旋轴向多相泵压缩室性能的主要几何结构参数作为研究对象。叶轮参数组通过正交实验设计方法确定。然后将根据CFD方法通过数值模拟获得的每组的压力上升和效率用作人工神经网络预测过程中的训练样本和测试样本。分别基于反向传播神经网络和径向基函数神经网络确定了两种神经网络拓扑结构。正交设计方法得到的结构参数用作输入层数据,数值模拟的性能参数用作输出层数据。经过培训,分别基于BP和RBF建立了两个螺旋轴向多相泵性能预测模型。测试结果表明,BP网络预测模型中压力上升和效率的平均相对误差分别为9.97%和7.9%,而RBF网络预测模型中的平均相对误差分别为7.84%和5.85%。

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