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Application of soft-computing techniques for statistical modeling and optimization of

机译:软计算技术在统计建模和优化中的应用

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摘要

This research presents optimal factor evaluation for maximum Dyacrodes edulis seed oil (DESO) extraction by applying central composite design (CCD) based on Box-Behnken (BB) experimental design of response surface methodology (RSM) and Artificial neural network (ANN) on feed forward-back propagation (FFBP) of Levenberg Marquardt (LM) training algorithm. Polar solvents (ethanol and combination of methanol and chloroform (M/C)) and non-polar solvents (n-hexane) were used for the extraction. The RSM optimal predicted oil yields were 45.21%, 38.61% and 30.87% while experimental values were 46.01%, 40.71% and 32.45% for n-hexane, ethanol and M/C respectively. The RSM optimum conditions were particle size of 450.67, 451.19 and 450.22μm, extraction time of 55.57, 55.16 and 56.11min and solute/solvent ratio of 0.19, 0.16 and 0.18 g/ml for n-hexane, ethanol and M/C respectively. The ANN-GA optimized conditions showed 5.14, 5.81 and 2.12 % higher DESO yields at 1.10, 0.26 and 0.65% smaller particle sizes, 5.47, 0.30 and 0.62 % faster extraction rate, and 24, 11.11 and 10% more solute requirement, for n-hexane, ethanol and M/C solvents respectively. The particle size was found to be the most significant factor. ANN and RSM established good correlations with the experimental data but ANN showed higher predictive supremacy than RSM based on its higher values of R2 and lower error indices. Also, ANN-GA provided more economical optimal DESO extraction route. The physico-chemical characteristics, functional groups and fatty acid compositions of the seed oil compared with literature values and suggest high commercial values for DESO. Therefore, the obtained results present a viable method to harness the useful and highly potential seed oil from dyacrodes edulis for many industrial applications.
机译:本研究提出了通过基于Box-Behnken(BB)的响应表面方法(RSM)和人工神经网络(ANN)的Quan-Behnken(BB)实验设计,对最大染料Edulis See Oil(DESO)提取的最佳因子评估为响应表面方法(RSM)和人工神经网络(ANN)进行饲料Levenberg Marquardt(LM)训练算法的前后传播(FFBP)。极性溶剂(乙醇和甲醇和氯仿(M / C)的组合)和非极性溶剂(N-己烷)用于提取。 RSM最佳预测油产率为45.21%,38.61%和30.87%,而实验值分别为正己烷,乙醇和M / C的46.01%,40.71%和32.45%。 RSM最佳条件为450.67,451.19和450.22μm,提取时间为55.57,55.16和56.11min,并分别为正己烷,乙醇和m / c 0.19,0.16和0.18g / ml的溶质/溶剂比。 ANN-GA优化条件显示为5.14,5.81和2.12%的DESO产率为1.10,0.26和0.65%较小的粒度,5.47,0.30%和0.62%更快的提取率,以及24,11.11和10%的溶质要求,适用于n - 己烷,乙醇和M / C溶剂。发现粒度是最重要的因素。 ANN和RSM与实验数据建立了良好的相关性,但基于其较高的R2和较低的误差指数,ANN显示比RSM更高的预测性至高无上。此外,Ann-Ga提供更经济的最佳DESO提取路线。与文献值相比,种子油的物理化学特性,官能团和脂肪酸组成,并提出了对DEO的高商业价值。因此,所得结果提出了一种可行的方法,以利用来自Dyacrodes Edulis的有用和高潜在的种子油进行许多工业应用。

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