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Modeling and optimization of bioethanol production from breadfruit starch hydrolyzate vis-a-vis response surface methodology and artificial neural network

机译:面包果淀粉水解产物生物乙醇生产的建模和优化响应面方法和人工神经网络

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This study investigated the use of Breadfruit Starch Hydrolysate (BFSH) as the sole carbon source for bioethanol production and the optimization of the fermentation parameters. The results showed that the yeast was able to utilize the BFSH with and without nutrient supplements, with highest bioethanol yield of 3.96 and 3.60% volume fraction, respectively after 24 h of fermentation. A statistically significant quadratic regression model (p < 0.05) was obtained for bioethanol yield prediction. Response Surface Methodology (RSM) optimal condition values established for the bioethanol yield were BFSH concentration of 134.81 g L~(-1) time of 21.33 h and pH of 5.01 with predicted bioethanol yield of 3.95% volume fraction. Using Artificial Neural Network (ANN), multilayer normal feedforward incremental back propagation with hyperbolic tangent function gave the best performance as a predictive model for bioethanol yield. ANN optimal condition values were BFSH concentration of 120 g L~(-1), time of 24 h and pH of 4.5 with predicted bioethanol yield of 4.21% volume fraction. The predicted bioethanol yield was validated experimentally as 4.10% volume fraction and 4.22% volume fraction for RSM and ANN, respectively. Coefficient of Determination (R~2) and Absolute Average Deviation (AAD) were determined as 1 and 0.09% for ANN and 0.9882 and 1.67% for RSM, respectively. Thus, confirming ANN was better than RSM in both data fittings and estimation capabilities.
机译:这项研究调查了使用面包果淀粉水解产物(BFSH)作为生产生物乙醇和优化发酵参数的唯一碳源。结果表明,发酵24小时后,酵母能够利用含或不含营养补充剂的BFSH,最高生物乙醇产率分别为3.96和3.60%的体积分数。获得了具有统计学意义的二次回归模型(p <0.05),用于预测生物乙醇收率。建立的响应面方法学(RSM)最佳条件值为BFSH浓度为134.81 g L〜(-1)时间为21.33 h,pH为5.01,预计生物乙醇产率为3.95%。使用人工神经网络(ANN),具有双曲正切函数的多层正常前馈增量反向传播可提供最佳性能,作为生物乙醇收率的预测模型。 ANN的最佳条件值为BFSH浓度为120 g L〜(-1),时间为24 h,pH为4.5,预计生物乙醇产率为4.21%。预测的生物乙醇收率经实验验证分别为RSM和ANN的4.10%体积分数和4.22%体积分数。 ANN的测定系数(R〜2)和绝对平均偏差(AAD)分别为1和0.09%,RSM分别为0.9882和1.67%。因此,在数据拟合和估计能力方面,确认ANN均优于RSM。

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