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首页> 外文期刊>Journal of Chemical Technology & Biotechnology >Performance evaluation of an ANN-GA aided experimental modeling and optimization procedure for enhanced synthesis of marine biosurfactant in a stirred tank reactor
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Performance evaluation of an ANN-GA aided experimental modeling and optimization procedure for enhanced synthesis of marine biosurfactant in a stirred tank reactor

机译:ANN-GA辅助实验建模和优化程序的性能评估,以增强搅拌釜反应器中海洋生物表面活性剂的合成

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BACKGROUND: An improved resilient back-propagation neural network modeling coupled with genetic algorithm aided optimization technique was employed for optimizing the process variables to maximize lipopeptide biosurfactant production by marine Bacillus circulans. RESULTS: An artificial neural network (ANN) was used to develop a non-linear model based on a 2~4 full factorial central composite design involving four independent parameters, agitation, aeration, temperature and pH with biosurfactant concentration as the process output. The polynomial model was optimized to maximize lipopeptide biosurfactants concentration using a genetic algorithm (GA). The ranges and levels of these critical process parameters were determined through single-factor-at-a-time experimental strategy. Improved ANN-GA modeling and optimization were performed using MATLAB v.7.6 and the experimental design was obtained using Design Expert v.7.0. The ANN model was developed using the advanced neural network architecture called resilient back-propagation algorithm. CONCLUSION: Process optimization for maximum production of marine microbial surfactant involving ANN-GA aided experimental modeling and optimization was successfully carried out as the predicted optimal conditions were well validated by performing actual fermentation experiments. Approximately 52% enhancement in biosurfactant concentration was achieved using the above-mentioned optimization strategy.
机译:背景:改进的弹性反向传播神经网络建模与遗传算法辅助的优化技术相结合,用于优化过程变量,以最大程度地利用海洋细菌芽孢杆菌产生脂肽生物表面活性剂。结果:使用人工神经网络(ANN)建立了基于2〜4个全因子中心复合设计的非线性模型,该设计包含四个独立参数,即搅拌,通气,温度和pH,以生物表面活性剂浓度作为过程输出。使用遗传算法(GA)优化了多项式模型以最大化脂肽生物表面活性剂的浓度。这些关键过程参数的范围和水平是通过一次单因素实验策略确定的。使用MATLAB v.7.6进行了改进的ANN-GA建模和优化,并使用Design Expert v.7.0获得了实验设计。 ANN模型是使用称为回弹反向传播算法的高级神经网络架构开发的。结论:通过进行实际的发酵实验很好地验证了预测的最佳条件,成功地进行了包括ANN-GA辅助实验建模在内的海洋微生物表面活性剂最大产量的工艺优化。使用上述优化策略,可以使生物表面活性剂浓度提高约52%。

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