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Correlating heat transfer and friction in helically-finned tubes using artificial neural networks

机译:使用人工神经网络关联螺旋翅片管中的传热和摩擦

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An artificial neural network (ANN) approach was used to correlate experimentally determined Colburny'-factors and Fanning friction factors for flow of liquid water in straight tubes with internal helical fins. Experimental data came from eight enhanced tubes with helix angles between 25° and 48°, number of fin starts between 10 and 45, fin height-to-diameter ratios between 0.0199 and 0.0327, and Reynolds numbers ranging from 12,000 to 60,000. The performance of the neural networks was found to be superior compared to the corresponding power-law regressions. The ANNs were subsequently used to predict data of other researchers but the results were less accurate. The ANN training database was therefore expanded to include experimental data from two independent investigations. The ANNs trained with the combined database showed satisfactory results, and were superior to algebraic power-law correlations developed with the combined database.
机译:人工神经网络(ANN)方法用于关联实验确定的Colburny因子和Fanning摩擦因子,以测定带有内螺旋翅片的直管中液态水的流动。实验数据来自八支增强管,其螺旋角在25°至48°之间,鳍片起始数量在10到45之间,鳍片高度与直径之比在0.0199和0.0327之间,雷诺数在12,000到60,000之间。发现神经网络的性能优于相应的幂律回归。随后将人工神经网络用于预测其他研究人员的数据,但结果准确性较差。因此,ANN培训数据库得到了扩展,以包括来自两次独立调查的实验数据。用组合数据库训练的人工神经网络显示出令人满意的结果,并且优于用组合数据库开发的代数幂律相关性。

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