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Toward artificial intelligence-based modeling of vapor liquid equilibria of carbon dioxide and refrigerant binary systems

机译:基于人工智能的二氧化碳和制冷剂二元气液平衡模型

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The objective of this study is to design and validate a highly accurate approach based on an artificial neural network (ANN) to predict both bubble and dew point pressures of various CO2–refrigerant binary systems in the temperature range of 263.15–367.30 K and pressure of 0.18–9.09 MPa. 503 Experimental vapour–liquid equilibria (VLE) data of nine different CO2-refrigerant binary mixtures were used for preparation, validation and testing of ANN model. The developed ANN model correlates bubble and dew point pressure to reduced temperature, critical pressure, acentric factor of refrigerant, and distibution of CO2 between the vapour and liquid phases. Trial and error procedure reveals that a three-layer neural network with fourteen neurons in the hidden layer is able to predict the pressure with mean square error (MSE), average absolute relative deviation (AARD), root mean square error (RMSE), and correlation coefficient (R2) of 0.0133, 2.79 %, 0.1153 and 0.99836, respectively. The results confirmed that the ANN model can accurately apply for predicting the VLE data of different binary CO2–refrigerant systems.
机译:这项研究的目的是设计和验证一种基于人工神经网络(ANN)的高精度方法,以预测263.15–367.30 K温度范围内的各种CO2制冷剂二元系统的气泡和露点压力。 0.18–9.09 MPa。 503将9种不同的CO2制冷剂二元混合物的实验汽液平衡(VLE)数据用于ANN模型的制备,验证和测试。所开发的ANN模型将气泡和露点压力与降低的温度,临界压力,制冷剂的中心因数以及CO2在气相和液相之间的分配相关联。反复试验过程表明,在隐藏层中具有14个神经元的三层神经网络能够以均方误差(MSE),平均绝对相对偏差(AARD),均方根误差(RMSE)和相关系数(R2)分别为0.0133、2.79%,0.1153和0.99836。结果证实,ANN模型可以准确地应用于预测不同的二元CO2制冷剂系统的VLE数据。

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