Methanolysis of African pear seed oil catalyzed with acid activated empty palm fruit bunch ash: Optimization and sensitivity analysis

Okwudili E. Umeagukwu , Dominic O. Onukwuli , Callistus N. Ude
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Abstract

This study investigated the catalytic effect of acid activated empty palm fruit bunch ash (AAEPFBA) on the transesterification reaction of Africa pear seed oil (APSO), optimization of the process and sensitivity analysis. The AAEPFBA was synthesized from waste palm fruit bunch, and modified. The activation was best achieved by adding H3PO4 acid in a ratio of 1:2 (g/ml). The modification of the catalyst increased the alkaline properties and surface area and decreased the particle size and adsorption energy. The biodiesel produced was characterized and compared with standard properties for its application Comparing the three models prediction using response surface methodology (RSM), rsm-genetic algorithm (RSM-GA) and artificial neural network (ANN), the RSM-GA model values of the process variables at temperature of 61.21°C, reaction time of 3.3 h, 10.3:1 methanol/oil molar ratio, 3.16wt% catalyst concentration, and agitation speed of 320.51 rpm gave an experimental optimal yield of biodiesel of 90.1 %. In addition, the RSM, RSM-GA and ANN statistical percentage errors (SPE) are 0.64, 0.06, and 0.29, respectively with RSM-GA having the best prediction of biodiesel yield. The novel model analysis of the process variables connection weight values of MATLAB R2015a shows that the catalyst has the highest percentage (40.7 %) of relative impact on the yield of biodiesel while the methanol/oil ratio has the least percentage contribution less than 5 %. The overall result shows that the catalyst EPFBA activated with phosphoric acid presently has high potential over other catalysts in converting APSO to biodiesel, and the application of RSM-GA tool predict the require values of the variables for maximum yield of biodiesel.

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用酸性活化空棕榈果束灰催化非洲梨籽油的甲醇分解:优化和敏感性分析
本研究探讨了酸活化空棕榈果束灰(AAEPFBA)对非洲梨籽油(APSO)酯交换反应的催化作用、工艺优化和灵敏度分析。AAEPFBA 由废弃棕榈果串合成,并经过改性。以 1:2 的比例(克/毫升)加入 H3PO4 酸,活化效果最佳。对催化剂的改性增加了其碱性和表面积,减小了粒径和吸附能。在温度为 61.21°C、反应时间为 3.3 小时、甲醇/油摩尔比为 10.3:1、催化剂浓度为 3.16wt%、搅拌速度为 320.51 rpm 的条件下,RSM-GA 模型的工艺变量值为 90.1%。此外,RSM、RSM-GA 和 ANN 的统计百分比误差(SPE)分别为 0.64、0.06 和 0.29,其中 RSM-GA 对生物柴油产量的预测效果最好。对 MATLAB R2015a 的过程变量连接权重值进行的新模型分析表明,催化剂对生物柴油产量的相对影响百分比最高(40.7%),而甲醇/油比率的影响百分比最低,小于 5%。总体结果表明,与其他催化剂相比,目前磷酸活化的催化剂 EPFBA 在将 APSO 转化为生物柴油方面具有很大的潜力,而且应用 RSM-GA 工具预测了生物柴油产量最大化所需的变量值。
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