Department of Biotechnology, Indian Institute of Technology Kharagpur, West Bengal-721302, India.
Bioresour Technol. 2010 Apr;101(8):2884-7. doi: 10.1016/j.biortech.2009.09.093. Epub 2009 Nov 14.
A nonlinear model describing the relationship between the biosurfactant concentration as a process output and the critical medium components as the independent variables was developed by artificial neural network modeling. The model was optimized for the maximum biosurfactant production by using genetic algorithm. Based on a single-factor-at-a-time optimization strategy, the critical medium components were found to be glucose, urea, SrCl(2) and MgSO(4). The experimental results obtained from a statistical experimental design were used for the modeling and optimization by linking an artificial neural network (ANN) model with genetic algorithm (GA) in MATLAB. Using the optimized concentration of critical elements, the biosurfactant yield showed close agreement with the model prediction. An enhancement in biosurfactant production by approximately 70% was achieved by this optimization procedure.
通过人工神经网络建模,开发了一个非线性模型来描述生物表面活性剂浓度作为过程输出与临界介质成分作为独立变量之间的关系。通过遗传算法对模型进行了优化,以获得最大的生物表面活性剂产量。基于单因素优化策略,发现临界介质成分是葡萄糖、尿素、SrCl(2)和 MgSO(4)。通过在 MATLAB 中将人工神经网络 (ANN) 模型与遗传算法 (GA) 相连接,使用统计实验设计获得的实验结果进行建模和优化。使用优化的关键元素浓度,生物表面活性剂产率与模型预测非常吻合。通过这种优化过程,生物表面活性剂的产量提高了约 70%。