...
首页> 外文期刊>Journal of Oleo Science >Transesterification via Parametric Modelling and Optimization of Marula (Sclerocarya birrea) Seed Oil Methyl Ester Synthesis
【24h】

Transesterification via Parametric Modelling and Optimization of Marula (Sclerocarya birrea) Seed Oil Methyl Ester Synthesis

机译:通过参数建模和优化MARULA(Sclerocarya Birrea)种子油甲酯合成的酯交换

获取原文
获取原文并翻译 | 示例

摘要

This study investigates Marula (Sclerocarya birrea) seed oil (SBSO) as a novel feedstock for biodiesel production through the transesterification process catalysed by heterogeneous bio-alkali derived from banana (Musa acuminata) peels. Response surface methodology (RSM) and artificial neural network (ANN) tools were used for the modelling and optimization of the process variables. The reaction process parameters considered were methanol/SBSO molar ratio, catalyst loading levels, reaction time and temperature. Central composite design (CCD) was espoused to generate 30 experimental conditions which were deployed in investigating the individual and synergetic effect of the process input variables on Sclerocarya birrea oil methyl ester (SBOME) yield. Appropriate statistical indices were adopted to investigate the predictive aptitude of the two models. Analysis shows that ANN model obtained for the transesterification process has a higher coefficient of determination (R~2) of 0.9846 and lower absolute average deviation (AAD) of 0.07% compared to RSM model with R~2 of 0.9482 and AAD of 0.12%. The process modelling outcome also confirmed ANN performance to be more precise than RSM. At methanol/ SBSO ratio of 6:1, catalyst loading level of 2 wt%, process reaction time of 50 min and temperature of 55°C, the experimental maximum SBOME yield was observed to be 96.45 wt % following the ANN predicted yield of 96.45 wt % and RSM predicted yield of 96.65 wt % respectively. The analysed fuel properties of SBOME was found satisfactory within the biodiesel stipulated standard limit(s). The study establishes that SBSO is a good source for biodiesel production and its biodiesel methyl ester is a potential substitute for petroleum diesel and a bioenergy fuel.
机译:本研究调查MARULA(Sclerocarya Birrea)种子油(SBSO)作为生物柴油生产的新型原料,通过由香蕉(Musa Acuminata)剥离的异质生物碱催化剂催化剂催化剂。响应面方法(RSM)和人工神经网络(ANN)工具用于过程变量的建模和优化。认为反应过程参数是甲醇/ SBSO摩尔比,催化剂负载水平,反应时间和温度。表现出中央复合设计(CCD)以产生30种实验条件,该实验条件是在调查中,调查过程输入变量对硬菌菌Birrea油甲酯(SBOME)产率的个体和协同作用。采用适当的统计指标来调查两种模型的预测性能力。分析表明,对于酯交换过程获得的ANN模型具有0.9846的较高的测定系数(R〜2),与RSM模型相比,0.07%的绝对平均偏差(AAD)为0.9482的R〜2和AAD的0.12%。过程建模结果也证实了ANN性能比RSM更精确。在甲醇/ SBO比为6:1,催化剂负载量为2wt%,工艺反应时间为50分钟,温度55℃,实验最大SBOME产率为96.45wt%后,ann预测收益率为96.45 WT%和RSM预测产量分别为96.65重量%。在生物柴油规定的标准极限内发现SBOME的分析的燃料特性令人满意。该研究确定SBSO是生物柴油生产的良好来源,其生物柴油甲酯是石油柴油和生物能源燃料的潜在替代品。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号