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OPTIMAL DESIGN OF COMPACT HEAT EXCHANGERS BY AN ARTIFICIAL NEURAL NETWORK METHOD

机译:一种人工神经网络方法的紧凑型热交换器的优化设计

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The artificial neural network (ANN) methods are introduced (mainly for calculation of thermal and hydraulic coefficients) into a computer-aided design code of compact heat exchangers (CCHE). CCHE integrates the optimization, database, and process drawing into a software package. In the code, a strategy is developed for the optimization of compact heat exchangers (CHEs), which is a problem with changeable objective functions and constraints. However, the applicability and/or accuracy of all these methods are limited by the availability of reliable data sets of the heat transfer coefficients (j or Nu) and friction factors (f) for different finned geometries. In fact, due to expenses and difficulties in experiments, only a limited number of experiments has been carried out for some kinds of heat transfer surfaces. The information, therefore, is usually given by means of correlations. It is well known, however, that the errors in the predicted results by means of correlations are much larger than the measurement errors, being mainly due to the data reduction represented by them. This implies doubts on the optimal solutions. Fortunately, a well-trained network is capable of correlating the data with errors of the same order as the uncertainty of the measurements. This is the main reason for the present introduction of the ANN method to correlate the discrete experimental data sets into continuous formulas. In this study, the ANN method is used to formulate the complex relationship between the thermal and hydraulic coefficients and the other parameters, including the geometry and process data. A specific case on the optimal analysis of a plate-fin heat exchanger (PFH) is presented to show how the trained ANNs can be used for optimal design of heat exchangers. In addition, a case is presented to illustrate how an inverse heat transfer problem is solved by the optimization methodology developed in the present code.
机译:引入人工神经网络(ANN)方法(主要用于计算热和液压系数)到紧凑型热交换器(CCHE)的计算机辅助设计代码中。 CCHE将优化,数据库和进程绘制集成到软件包中。在代码中,开发了一种策略,用于优化紧凑型热交换器(Ches),这是具有可变的客观功能和约束的问题。然而,所有这些方法的适用性和/或准确性受到不同翅片几何形状的传​​热系数(J或Nu)和摩擦因子(F)的可靠数据集的可靠性数据集的限制。事实上,由于实验中的费用和困难,已经为某些类型的传热表面进行了有限数量的实验。因此,信息通常通过相关性给出。然而,众所周知,通过相关性的预测结果中的误差远大于测量误差,主要是由于它们表示的数据减少。这意味着对最佳解决方案的怀疑。幸运的是,训练有素的网络能够将数据与与测量的不确定性相同的误差相关联。这是本发明引入ANN方法的主要原因,将离散的实验数据集与连续公式相关联。在该研究中,ANN方法用于制定热和液压系数与其他参数之间的复杂关系,包括几何和处理数据。提出了关于板式换热器(PFH)的最佳分析的具体情况,以显示培训的ANN如何用于热交换器的最佳设计。另外,提出一种情况以说明如何通过本代码中开发的优化方法来解决逆传热问题。

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