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Estimation of vapor pressures, compressed liquid, and supercritical densities for sulfur dioxide using artificial neural networks

机译:使用人工神经网络估算二氧化硫的蒸气压,压缩液体和超临界密度

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BackgroundArtificial neural networks (ANNs) as a solution for semi-structural or non-structural problems have widespread applications in engineering and science with acceptable results. In this research, the ability of multilayer perceptron artificial neural networks based on back-propagation algorithm was investigated to estimate sulfur dioxide densities.ResultsThe best network configuration for this case was determined as a three-layer network including 15, 10, and 1 neurons in its layers, respectively, using Levenberg-Marquardt training algorithm. The uncertainties in the presented network for prediction of unseen data including PρT and saturated liquid densities are less than 0.5% and 1%, respectively. Another network for estimation of vapor pressure has trained with uncertainty less than 0.67%. Comparisons among the artificial neural network predictions, several equations of state, and experimental data sets show that the ANN results are in good agreement with the experimental data better than the equations of states.ConclusionArtificial neural network can be a successful tool to represent thermophysical properties effectively, if developed efficiently.
机译:背景技术人工神经网络(ANN)作为半结构或非结构问题的解决方案已在工程和科学中得到了广泛应用,并取得了令人满意的结果。在这项研究中,研究了基于反向传播算法的多层感知器人工神经网络估计二氧化硫密度的能力。结果确定此案例的最佳网络配置为包含15、10和1个神经元的三层网络其层分别使用Levenberg-Marquardt训练算法。所提出的网络中用于预测看不见的数据(包括PρT和饱和液体密度)的不确定度分别小于0.5%和1%。另一个估计蒸气压的网络的不确定度小于0.67%。人工神经网络预测,几种状态方程和实验数据集之间的比较表明,人工神经网络的结果与实验数据相比,状态方程与状态数据的一致性更好。结论人工神经网络可以有效地表示热物理性质,如果开发有效。

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