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Performance analysis of CO2/NH3 cascade refrigeration system using artificial neural networks

机译:基于人工神经网络的CO2 / NH3级联制冷系统性能分析

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In this study, artificial neural networks (ANNs) have been used for performance analysis of a CO 2 /NH 3 cascade refrigeration system. Energy and exergy analysis of the system is firstly investigated using a computer code implemented in EES. It is well known that four main variables, including condensing temperature of ammonia, evaporating temperature of carbon dioxide, condensing temperature of carbon dioxide and temperature difference in cascade condenser affect the coefficient of performance (COP) and the exergetic efficiency. In this study, these two parameters in addition to certain useful values such as mass flow rate of high and low temperature circuits, power consumption of each compressor and also total exergy destruction are estimated in terms of the above temperatures. Feed-forward backpropagation learning algorithm was used in the network. A set of calculated data obtained from EES was used as training and test data. The computer program has been performed under MATLAB environment using neural network toolbox. New formulation obtained from ANN for this couple of refrigerants is presented for the calculation of abovementioned target values. The R value obtained when unknown data were used to the networks was 0.999992 which is very satisfactory. As an alternative method, it can be easily implemented in all programming languages with the aims of simulation or optimization. It can also be used where a very accurate and fast estimation of the system performance is of interest to engineers.
机译:在这项研究中,人工神经网络(ANN)已用于CO 2 / NH 3级联制冷系统的性能分析。首先使用在EES中实现的计算机代码来研究系统的能量和火用分析。众所周知,氨的冷凝温度,二氧化碳的蒸发温度,二氧化碳的冷凝温度和级联冷凝器中的温差这四个主要变量影响性能系数(COP)和能量效率。在这项研究中,根据上述温度,除了某些有用的值(例如高温和低温回路的质量流量,每个压缩机的功耗以及总的火用破坏),还估算了这两个参数。网络中使用了前馈反向传播学习算法。从EES获得的一组计算数据用作训练和测试数据。该计算机程序已在MATLAB环境下使用神经网络工具箱执行。提出了从ANN获得的用于这对制冷剂的新配方,用于计算上述目标值。将未知数据用于网络时获得的R值为0.999992,非常令人满意。作为一种替代方法,可以以模拟或优化为目的,轻松地在所有编程语言中实现该方法。如果工程师需要非常准确,快速地估计系统性能,也可以使用它。

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