Computational approach using machine learning modelling for optimization of transesterification process for linseed biodiesel production

IF 1 Q4 ENGINEERING, BIOMEDICAL
Sunil Gautam, Sangeeta Kanakraj, Azriel Henry
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引用次数: 2

Abstract

In this research work, various machine learning models such as linear regression (LR), KNN and MLP were created to predict the optimized synthesis of biodiesel from pre-treated and non-treated Linseed oil in base transesterification reaction mode. Three input parameters were included for modelling, reaction time, catalyst concentrated ion, and methanol/oil-molar ratio. In biodiesel transesterification reaction 180 samples run with non-Pre-treated Linseed Methyl Ester (NPLME), Water Pre-treated Linseed Methyl Ester (WPLME) and Enzymatic Pre-treated Linseed Methyl Ester (EPLME) oil as feed stocks and optimized parameters are find out for maximum biodiesel yield to be 8:1 molar ratio, 0.4% weight catalyst, 60 °C reaction temperature.To test the technique, R2 and MAPE parameters were used. The average R2 values for linear regression, KNN, and MLP are 0.7030, 0.8554 and 0.7864 respectively. Moreover, the average MAPE values for these models are 11.1886, 6.0873 and 8.0669 respectively. Hence, it is observed that the KNN model outperforms other models with higher accuracy and low MAPE score.
利用机器学习建模优化亚麻籽生物柴油酯交换过程的计算方法
在本研究中,建立了线性回归(LR)、KNN和MLP等多种机器学习模型来预测预处理和未处理亚麻籽油在碱酯交换反应模式下合成生物柴油的优化过程。三个输入参数包括建模,反应时间,催化剂浓度离子和甲醇/油摩尔比。以未预处理亚麻仁甲酯(NPLME)、水预处理亚麻仁甲酯(WPLME)和酶预处理亚麻仁甲酯(EPLME)油为原料,进行180个样品的生物柴油酯交换反应,优化了生物柴油收率为8:1摩尔比、催化剂重量0.4%、反应温度60℃的最佳参数。为了验证该技术,采用R2和MAPE参数。线性回归、KNN和MLP的平均R2值分别为0.7030、0.8554和0.7864。平均MAPE值分别为11.1886、6.0873和8.0669。因此,观察到KNN模型优于其他具有更高精度和低MAPE分数的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
AIMS Bioengineering
AIMS Bioengineering ENGINEERING, BIOMEDICAL-
自引率
0.00%
发文量
17
审稿时长
4 weeks
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