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首页> 外文期刊>Case Studies in Thermal Engineering >Adaptive Neuro-Fuzzy Inference System of friction factor and heat transfer nanofluid turbulent flow in a heated tube
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Adaptive Neuro-Fuzzy Inference System of friction factor and heat transfer nanofluid turbulent flow in a heated tube

机译:加热管中摩擦系数和传热纳米流体湍流的自适应神经模糊推理系统

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摘要

In this paper, estimating of hydrodynamics and heat transfer nanofluid flow through heated tube has been conducted by using Adaptive Neuro-Fuzzy Inference System (ANFIS). The CFD data related to three types of nanofluids (Al2O3, SiO2 and TiO2) flow in horizontal tube with 19 mm diameter and 2000 mm length. Heat flux around tube is fixed at 5000W/m2, the range of Reynolds number is (3000–30,000) and volume concentrations are (1% and 2%). ANFIS model has three input data presented by Reynolds number, volume concentration of nanofluids and materials and two output presented predicting friction factor and Nusselt number in the tube. The simulation results of proposed algorithm have been compared with CFD simulator in which the mean relative errors (MRE) are 0.1232% and 0.1123 for friction factor and Nusselt number respectively. Finally, ANFIS models can predict hydrodynamics and heat transfer of the higher accuracy than the developed correlations.
机译:在本文中,使用自适应神经模糊推理系统(ANFIS)进行了流体动力学和传热纳米流体流经加热管的估算。与三种类型的纳米流体(Al2O3,SiO2和TiO2)有关的CFD数据在直径为19 mm,长度为2000 mm的水平管中流动。管子周围的热通量固定为5000W / m2,雷诺数范围为(3000–30,000),体积浓度为(1%和2%)。 ANFIS模型具有雷诺数,纳米流体和材料的体积浓度表示的三个输入数据,以及表示管中的摩擦系数和努塞尔数的两个输出。将该算法的仿真结果与CFD仿真器进行了比较,该仿真器的摩擦系数和努塞尔特数的平均相对误差(MRE)分别为0.1232%和0.1123。最后,与开发的相关性相比,ANFIS模型可以更高精度地预测流体动力学和传热。

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