首页> 外文会议>ASME biennial conference on engineering systems design and analysis;ESDA2010 >SECOND LAW ANALYSIS OF FULLY DEVELOPED CONVECTION IN A HELICAL COILED TUBE UNDER CONSTANT WALL TEMPERATURE USING A CFD-ANN APPROACH
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SECOND LAW ANALYSIS OF FULLY DEVELOPED CONVECTION IN A HELICAL COILED TUBE UNDER CONSTANT WALL TEMPERATURE USING A CFD-ANN APPROACH

机译:基于CFD-ANN方法的恒定壁温度下螺旋管内完全发展对流的第二定律分析

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The present paper analyses the second law of thermodynamics in a fully developed forced convection in the horizontal helical coiled tube under constant wall temperature. The influence of non-dimensional parameters such as Reynolds number (Re), coil-to-tube ratio (δ) and coil pitch (λ.) are inspected on the entropy generation. According to the literature, the coil pitch has a minor effect on the entropy generation compared with Re and 8. Using a CFD tool is a common classical method to find the optimal Reynolds Number and coil-to-tube ratio (δ) based on the entropy generation minimization principal. This approach requires lots of time and resources while the innovative implementation of an Artificial Neural Network (ANN) reduces the simulation time considerably. The data pool generated by the CFD tool is used to train the ANN. As less data is needed to train the ANN in comparison to classical CFD based method, the performance of ANN-CFD optimization approach enhances. As entropy generation minimization principal is applied during the optimization, Nusselt number and friction factor are required to evaluate the entropy generation; these parameters are obtained through a numerical simulation and then are used to train the ANN. The ANN can predict these parameters as a function of different Re numbers and coil-to-tube ratios during optimization.Several different architectures of ANNs were evaluated and parametric studies were performed to optimize network design for the best prediction of the variables.The results obtained from the ANN are compared with the available experimental data to show the network reasonable accuracy.
机译:本文分析了在恒定壁温下水平螺旋盘管内完全展开的强制对流中的热力学第二定律。检查熵产生的无量纲参数(例如雷诺数(Re),线圈与管之比(δ)和线圈螺距(λ。))的影响。根据文献,与Re和8相比,线圈螺距对熵产生的影响较小。使用CFD工具是一种常见的经典方法,基于该方法可以找到最佳的雷诺数和线圈与管的比率(δ)。熵产生最小化原理。这种方法需要大量的时间和资源,而人工神经网络(ANN)的创新实现大大减少了仿真时间。 CFD工具生成的数据池用于训练ANN。与传统的基于CFD的方法相比,由于需要较少的数据来训练ANN,因此ANN-CFD优化方法的性能得到了提高。由于在优化过程中采用了熵产生最小化原理,因此需要Nusselt数和摩擦系数来评估熵的产生。这些参数是通过数值模拟获得的,然后用于训练ANN。在优化过程中,ANN可以根据不同的Re数和线圈与管的比率来预测这些参数。 对ANN的几种不同架构进行了评估,并进行了参数研究以优化网络设计,以最佳地预测变量。 从人工神经网络获得的结果与可用的实验数据进行比较,以显示网络合理的准确性。

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