首页> 外文期刊>Brazilian journal of chemical engineering >LIQUID-LIQUID EQUILIBRIA FOR SYSTEMS CONTAINING FATTY ACID ETHYL ESTERS, ETHANOL AND GLYCEROL AT 333.15 AND 343.15 K: EXPERIMENTAL DATA, THERMODYNAMIC AND ARTIFICIAL NEURAL NETWORK MODELING
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LIQUID-LIQUID EQUILIBRIA FOR SYSTEMS CONTAINING FATTY ACID ETHYL ESTERS, ETHANOL AND GLYCEROL AT 333.15 AND 343.15 K: EXPERIMENTAL DATA, THERMODYNAMIC AND ARTIFICIAL NEURAL NETWORK MODELING

机译:含脂肪酸乙基酯,乙醇和甘油的体系在333.15和343.15 K时的液体-液体平衡:实验数据,热力学和人工神经网络建模

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In this study, the liquid-liquid equilibrium (LLE) data of systems containing ethyl linoleate/oleate/palmitate/laurate, ethanol and glycerol at temperatures ranging from 323.15 to 353.15 K were used to evaluate the performance of the NRTL, UNIFAC, Cubic-Plus-Association Equation of State (CPA EoS), and artificial neural network (ANN) models. The systems evaluated correspond to the most important components formed at the end of the ethanolysis reaction of soybean, palm and coconut oils. The temperature range selected is very important for heterogeneous catalysts, especially for high-pressure systems. The accuracy of the models was evaluated by average global deviation. UNIFAC, UNIFAC-LLE and CPA EoS models showed lower accuracy with deviations of 10.1, 8.01 and 5.95%, respectively. In spite of this predictive limitation, these models show high extrapolation capability for the description of LLE behavior when few experimental data are available in the literature. The ANN model shows the best agreement between experimental and predicted data with an average deviation of 1.12%. In this regard, ANN is offered in this work as an alternative to equations of state and activity coefficient models to be used in a more reliable and less cumbersome way for process simulators of biodiesel production and separation equipment design.
机译:在这项研究中,使用温度范围为323.15至353.15 K的包含亚油酸乙酯/油酸酯/棕榈酸酯/月桂酸酯,乙醇和甘油的系统的液-液平衡(LLE)数据来评估NRTL,UNIFAC,Cubic-正状态关联方程(CPA EoS)和人工神经网络(ANN)模型。所评估的系统对应于大豆油,棕榈油和椰子油乙醇分解反应结束时形成的最重要的成分。选择的温度范围对于非均相催化剂非常重要,特别是对于高压系统。通过平均总体偏差评估模型的准确性。 UNIFAC,UNIFAC-LLE和CPA EoS模型显示的准确性较低,偏差分别为10.1、8.01和5.95%。尽管存在这种预测性限制,但在文献中几乎没有实验数据的情况下,这些模型仍具有较高的外推能力来描述LLE行为。 ANN模型显示实验数据与预测数据之间的最佳一致性,平均偏差为1.12%。在这方面,在这项工作中提供了人工神经网络,以替代状态方程和活度系数模型,以更可靠,更省力的方式用于生物柴油生产和分离设备设计的过程模拟器。

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