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首页> 外文期刊>Applied Microbiology and Biotechnology >Optimization of process parameters for ethanol production from sugar cane molasses by Zymomonas mobilis using response surface methodology and genetic algorithm
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Optimization of process parameters for ethanol production from sugar cane molasses by Zymomonas mobilis using response surface methodology and genetic algorithm

机译:利用响应面法和遗传算法优化运动发酵单胞菌生产甘蔗糖蜜乙醇工艺参数

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摘要

Ethanol is a potential energy source and its production from renewable biomass has gained lot of popularity. There has been worldwide research to produce ethanol from regional inexpensive substrates. The present study deals with the optimization of process parameters (viz. temperature, pH, initial total reducing sugar (TRS) concentration in sugar cane molasses and fermentation time) for ethanol production from sugar cane molasses by Zymomonas mobilis using Box–Behnken experimental design and genetic algorithm (GA). An empirical model was developed through response surface methodology to analyze the effects of the process parameters on ethanol production. The data obtained after performing the experiments based on statistical design was utilized for regression analysis and analysis of variance studies. The regression equation obtained after regression analysis was used as a fitness function for the genetic algorithm. The GA optimization technique predicted a maximum ethanol yield of 59.59 g/L at temperature 31 °C, pH 5.13, initial TRS concentration 216 g/L and fermentation time 44 h. The maximum experimental ethanol yield obtained after applying GA was 58.4 g/L, which was in close agreement with the predicted value.
机译:乙醇是一种潜在的能源,由可再生生物质生产乙醇已广受欢迎。全球已有研究从区域廉价的底物生产乙醇。本研究利用Box–Behnken实验设计和工艺优化了运动发酵单胞菌从甘蔗糖蜜生产乙醇的工艺参数(即温度,pH,甘蔗糖蜜中的初始总还原糖(TRS)浓度和发酵时间)的优化。遗传算法(GA)。通过响应面方法建立了一个经验模型,以分析工艺参数对乙醇生产的影响。在执行基于统计设计的实验后获得的数据用于回归分析和方差研究分析。回归分析后获得的回归方程用作遗传算法的适应度函数。 GA优化技术预测在温度31°C,pH 5.13,初始TRS浓度216 g / L和发酵时间44 h时,最大乙醇产量为59.59 g / L。应用GA后获得的最大乙醇实验产量为58.4 g / L,与预测值非常吻合。

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