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Neural network analysis of head-flow curves in deep well pumps

机译:深井泵扬程曲线的神经网络分析

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In impellers with splitter blades, the difficulty in calculation of the flow area of the impeller is because of the unknown flow rate occurring in the two separate areas when the splitter blades are added. Experimental studies were made to investigate the effects of splitter blade length on deep well pump performance for different numbers of blades. Head-flow curves of deep well pump impellers with splitter blades were investigated using artificial neural networks (ANNs). Gradient descent (GD), Gradient descent with momentum (GDM) and Levenberg-Marquardt (LM) learning algorithms were used in the networks. Experimental studies were completed to obtain training and test data. Blade number (z), non-dimensional splitter blade length (L) and flow rate (Q) were used as the input layer, while the output is head (H_m). For the testing data, the root mean squared error (RMSE), fraction of variance (R~2) and mean absolute percentage error (MAPE) were found to be 0.1285, 0.9999 and 1.6821%, respectively. With these results, we believe that the ANN can be used for prediction of head-flow curves as an appropriate method in deep well pump impellers with splitter blades.
机译:在具有分离器叶片的叶轮中,计算叶轮的流动面积的困难是由于当添加分离器叶片时在两个分开的区域中发生未知的流量。进行了实验研究,以研究不同数量叶片的分流叶片长度对深井泵性能的影响。使用人工神经网络(ANN)研究了带有分流叶片的深井泵叶轮的水流曲线。网络中使用了梯度下降(GD),带动量的梯度下降(GDM)和Levenberg-Marquardt(LM)学习算法。完成了实验研究以获得训练和测试数据。叶片数(z),无量纲分流叶片长度(L)和流率(Q)用作输入层,而输出为机头(H_m)。对于测试数据,发现均方根误差(RMSE),方差分数(R〜2)和平均绝对百分比误差(MAPE)分别为0.1285%,0.9999和1.6821%。有了这些结果,我们相信ANN可以作为带有分流叶片的深井泵叶轮的一种合适方法来预测水头流量曲线。

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