亚硝酸盐
氧化剂
遗传算法
人工神经网络
发酵
生物系统
算法
化学
材料科学
计算机科学
机器学习
生物
生物化学
有机化学
硝酸盐
作者
Jianfei Luo,Weitie Lin,Xiaolong Cai,Jing Li
标识
DOI:10.1016/s1004-9541(12)60423-6
摘要
Abstract Two artificial intelligence techniques, artificial neural network and genetic algorithm, were applied to optimize the fermentation medium for improving the nitrite oxidization rate of nitrite oxidizing bacteria. Experiments were conducted with the composition of medium components obtained by genetic algorithm, and the experimental data were used to build a BP (back propagation) neural network model. The concentrations of six medium components were used as input vectors, and the nitrite oxidization rate was used as output vector of the model. The BP neural network model was used as the objective function of genetic algorithm to find the optimum medium composition for the maximum nitrite oxidization rate. The maximum nitrite oxidization rate was 0.952 g NO 2 − -N·(g MLSS) −1 ·d −1 , obtained at the genetic algorithm optimized concentration of medium components (g·L −1 ): NaCl 0.58, MgSO 4 ·7H 2 O 0.14, FeSO 4 ·7H 2 O 0.141, KH 2 PO 4 0.8485, NaNO 2 2.52, and NaHCO 3 3.613. Validation experiments suggest that the experimental results are consistent with the best result predicted by the model. A scale-up experiment shows that the nitrite degraded completely after 34 h when cultured in the optimum medium, which is 10 h less than that cultured in the initial medium.
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