Estimation of pressure drop of single-phase flow in horizontal long pipes using artificial neural network

IF 1 4区 工程技术 Q4 CHEMISTRY, MULTIDISCIPLINARY Iranian Journal of Chemistry & Chemical Engineering-international English Edition Pub Date : 2021-06-22 DOI:10.30492/IJCCE.2021.141676.4450
Fahime Gharekhania, M. Ardjmand, A. Vaziria
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Abstract

Large- pressure drop and drag along the pipe route is one of the problems with fluid transfer lines. For many years, various methods have been employed to reduce the drag in fluid transmission lines. One of the best ways for this purpose is reducing friction coefficients by utilizing drag lowering materials. Experimentally by adding minimal amounts of this material at the ppm scale to the lines and reducing the drag of the flow, fluid can be pumped without the need to change the size of the pipe. In this study, the effect of carboxymethylcellulose biopolymer on the water flow reduction in a 12.7- and 25.4-mm galvanized pipe was investigated. In order to have a comprehensive analysis of process conditions, experiments were carried out with three different levels of concentrations, flow rate and temperature. Also, as a new innovation in this investigation, the outputs of the experimental data were evaluated and analyzed using the Taguchi method and neural network system, and optimized through a genetic algorithm. In this study, the highest rate of drag reduction will be achieved at 39 ° C and at a concentration of 991.6 ppm and flow rate of 1441.1L/h was 59.83% at 12.7-mm diameter.
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基于人工神经网络的水平长管单相流压降估算
沿管道的压降和阻力大是流体输送管道的问题之一。多年来,人们采用了各种方法来减小流体输送管线的阻力。达到这一目的的最佳方法之一是利用降阻材料来降低摩擦系数。通过实验,在管道中加入微量的百万分之一级的这种材料,减少流体的阻力,就可以在不改变管道尺寸的情况下泵送流体。在本研究中,研究了羧甲基纤维素生物聚合物对12.7和25.4 mm镀锌管中水流减少的影响。为了对工艺条件进行综合分析,在三种不同的浓度、流速和温度下进行了实验。此外,作为本研究的一个创新点,采用田口法和神经网络系统对实验数据的输出进行了评估和分析,并通过遗传算法进行了优化。在本研究中,当直径为12.7 mm时,在39°C、浓度为991.6 ppm、流速为1441.1L/h时,减阻率最高,为59.83%。
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来源期刊
CiteScore
2.80
自引率
22.20%
发文量
0
审稿时长
6-12 weeks
期刊介绍: The aim of the Iranian Journal of Chemistry and Chemical Engineering is to foster the growth of educational, scientific and Industrial Research activities among chemists and chemical engineers and to provide a medium for mutual communication and relations between Iranian academia and the industry on the one hand, and the world the scientific community on the other.
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