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首页> 外文期刊>Thermal science >MODELING THE COOLING PERFORMANCE OF VORTEX TUBE USING A GENETIC ALGORITHM-BASED ARTIFICIAL NEURAL NETWORK
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MODELING THE COOLING PERFORMANCE OF VORTEX TUBE USING A GENETIC ALGORITHM-BASED ARTIFICIAL NEURAL NETWORK

机译:基于遗传算法的人工神经网络对涡流管的冷却性能进行建模

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摘要

In this study, artificial neural networks (ANNs) have been used to model the effects of four important parameters consist of the ratio of the length to diameter(L/D), the ratio of the cold outlet diameter to the tube diameter(d/D), inlet pressure(P), and cold mass fraction (Y) on the cooling performance of counter flow vortex tube. In this approach, experimental data have been used to train and validate the neural network model with MATLAB software. Also, genetic algorithm (GA) has been used to find the optimal network architecture. In this model, temperature drop at the cold outlet has been considered as the cooling performance of the vortex tube. Based on experimental data, cooling performance of the vortex tube has been predicted by four inlet parameters (L/D, d/D, P, Y). The results of this study indicate that the genetic algorithm-based artificial neural network model is capable of predicting the cooling performance of vortex tube in a wide operating range and with satisfactory precision.
机译:在这项研究中,人工神经网络(ANN)已用于对四个重要参数的影响进行建模,这四个参数包括长度与直径之比(L / D),冷出口直径与管径之比(d / D),入口压力(P)和冷质量分数(Y)对逆流涡流管的冷却性能的影响。在这种方法中,实验数据已用于通过MATLAB软件训练和验证神经网络模型。同样,遗传算法(GA)已被用来寻找最佳的网络架构。在此模型中,冷出口处的温度下降已被视为涡流管的冷却性能。根据实验数据,已通过四个入口参数(L / D,d / D,P,Y)预测了涡流管的冷却性能。研究结果表明,基于遗传算法的人工神经网络模型能够在较宽的工作范围内并以令人满意的精度预测涡流管的冷却性能。

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