Title of article :
Estimation of Pressure Drop of Single-Phase Flow in Horizontal Long Pipes Using Artificial Neural Network
Author/Authors :
Gharekhani ، Fahime Department of Chemical Engineering - Islamic Azad University, Science and Research Branch , Ardjmand ، Mehdi Department of Chemical Engineering - Islamic Azad University, South Tehran Branch , Vaziri ، Ali Department of Chemical Engineering - Islamic Azad University, Science and Research Branch
Abstract :
Large-pressure drops and drag along the pipe route are 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 to reduce 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 concentration, 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 a flow rate of 1441.1L/h was 59.83% at 12.7-mm diameter.
Keywords :
Drag reduction , Pipeline , Carboxymethylcellulose , Neural network , single phase
Journal title :
Iranian Journal of Chemistry and Chemical Engineering (IJCCE)
Journal title :
Iranian Journal of Chemistry and Chemical Engineering (IJCCE)