采用密度泛函理论研究了环戊基甲基醚萃取豆油的软计算模型

IF 5.9 3区 工程技术 Q1 CHEMISTRY, MULTIDISCIPLINARY
Henrique Gasparetto, Ana Carolina Ferreira Piazzi Fuhr, Nina Paula Gonçalves Salau
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引用次数: 5

摘要

本工作提出了一个热统计评估使用软计算模型来描述绿色大豆油提取环戊基甲基醚(CPME)。由于经验模型无法准确预测实验结果,实验数据采用实验析因设计,并采用人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)建模。ANFIS结构与最佳统计指标相关,而人工神经网络实现最佳热力学拟合。结果表明,温度越高,溶剂-固体质量比越低,产率越高。CPME可以显著降低萃取温度,达到与正己烷相同的收率。二阶模型最准确(SAE = 0.1266, MSE = 5.54·10-5,R2 = 0.9876),萃取速率常数为1.9782 min−1。注意到CPME的氧原子所带的小正诱导电荷有助于溶剂耗尽油基质的潜力,其熵与正己烷分子的熵相似。提取油在脂肪酸组成上呈现出典型的结构;游离脂肪酸、单、二、三酰基甘油含量;还有红外光谱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Forecasting soybean oil extraction using cyclopentyl methyl ether through soft computing models with a density functional theory study

Forecasting soybean oil extraction using cyclopentyl methyl ether through soft computing models with a density functional theory study

This work presents a thermo-statistical assessment using soft computing models to describe green soybean oil extraction by cyclopentyl methyl ether (CPME). Experimental data were collected based on an experimental factorial design and modeled by an Artificial Neural Network (ANN) and Adaptive Neuro-Fuzzy Inference System (ANFIS), as the empirical model was unable to accurately predict the experimental results. The ANFIS structure is related to the best statistical metrics, while the ANN achieves the best thermodynamic fit. The results suggest higher yields for higher temperatures and lower solvent-to-solid mass ratios. The extraction temperature can be significantly reduced with CPME to achieve the same yield as n-hexane. The second-order model was the most accurate (SAE = 0.1266, MSE = 5.54·10-5 and R2 = 0.9876) in representing the extraction kinetics, resulting in an extraction rate constant of 1.9782 min−1. It was noticed that small positive induced charges given by the oxygen atom of CPME could contribute to the potential of this solvent to deplete the oil matrix and that its entropy is similar to that of the n-hexane molecule. The extracted oil presented the typical constitution regarding fatty acids composition; free fatty acid, mono, di, and triacylglycerol contents; and infrared spectrum.

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来源期刊
CiteScore
10.40
自引率
6.60%
发文量
639
审稿时长
29 days
期刊介绍: Journal of Industrial and Engineering Chemistry is published monthly in English by the Korean Society of Industrial and Engineering Chemistry. JIEC brings together multidisciplinary interests in one journal and is to disseminate information on all aspects of research and development in industrial and engineering chemistry. Contributions in the form of research articles, short communications, notes and reviews are considered for publication. The editors welcome original contributions that have not been and are not to be published elsewhere. Instruction to authors and a manuscript submissions form are printed at the end of each issue. Bulk reprints of individual articles can be ordered. This publication is partially supported by Korea Research Foundation and the Korean Federation of Science and Technology Societies.
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