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Modeling of Finned-Tube Evaporator Using Neural Network and Response Surface Methodology

机译:翅片管蒸发器的神经网络和响应面法建模

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摘要

A new response surface methodology (RSM) based neural network (NN) modeling method is proposed for finned-tube evaporator performance evaluation under dry and wet conditions. Two RSM designs, Box-Behnken design (BBD) and central composite design (CCD), are applied to collect a small but well-designed dataset for NN training, respectively. Compared with additional 7000 sets of test data, for all the evaporator performance including total cooling capacity, sensible heat ratio and pressure drops on both refrigerant and air sides, the standard deviation (SD) and coefficient of determination of trained NNs are less than 2% and higher than 0.998, respectively, under dry conditions while those are less than 4% and greater than 0.974, respectively, under wet conditions. Classic quadratic polynomial response surface models were also included for reference. By comparison, the proposed model achieves higher accuracy. Finally, parametric study based on the trained NNs is conducted. This new method can remarkably downsize the training dataset and mitigate the over-fitting risk of NN.
机译:提出了一种基于响应面方法(RSM)的神经网络建模方法,用于干,湿条件下翅片管蒸发器的性能评估。 Box-Behnken设计(BBD)和中央复合设计(CCD)这两种RSM设计分别用于收集小的但设计良好的数据集,用于NN训练。与其他7000套测试数据相比,对于所有蒸发器性能(包括总冷却能力,显热比和制冷剂和空气侧的压降),经训练的NN的标准偏差(SD)和测定系数均小于2%在干燥条件下分别高于和高于0.998,而在潮湿条件下分别低于4%和大于0.974。还包括经典的二次多项式响应面模型,以供参考。相比之下,所提出的模型实现了更高的精度。最后,基于训练后的神经网络进行参数研究。这种新方法可以显着缩小训练数据集的大小并减轻NN的过拟合风险。

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