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基于人工神经网络-遗传算法的樟芝发酵培养基优化
引用本文:陆震鸣,何喆,许泓瑜,史劲松,许正宏.基于人工神经网络-遗传算法的樟芝发酵培养基优化[J].生物工程学报,2011,27(12):1773-1779.
作者姓名:陆震鸣  何喆  许泓瑜  史劲松  许正宏
作者单位:1. 江南大学医药学院制药工程研究室,无锡,214122
2. 江南大学医药学院生物活性制品加工工程研究室,无锡,214122
基金项目:江苏省自然科学基金 (No. BK2010142),国家高技术研究发展计划 (863计划) (No. 2007AA021506),教育部新世纪人才支持计划 (No. NCET-07-0380)资助。
摘    要:采用优化模型对药用丝状真菌樟芝的复杂发酵过程进行建模,并获得最优发酵培养基组成.对樟芝发酵过程中的形态变化过程进行了观察,并分别采用人工神经网络(ANN)和响应面法(RSM)对樟芝发酵过程进行建模,同时采用遗传算法(GA)优化了发酵培养基组成.结果表明,ANN模型比RSM模型具有更好的实验数据拟合能力和预测能力,GA计算得到樟芝生物量理论最大值为6.2 g/L,并获得发酵最佳接种量及培养基组成:孢子浓度1.76× 105个/mL,葡萄糖29.1 g/L,蛋白胨9.4 g/L,黄豆粉2.8 g/L.在最佳培养条件下,樟芝生物量为(6.1±0.2)g/L.基于ANN-GA的优化方法可用于优化其他丝状真菌的复杂发酵过程,从而获得生物量或活性代谢产物.

关 键 词:樟芝  人工神经网络  响应面法  遗传算法
收稿时间:2011/5/20 0:00:00

Medium optimization for mycelia production of Antrodia camphorata based on artificial neural network-genetic algorithm
Zhenming Lu,Zhe He,Hongyu Xu,Jinsong Shi and Zhenghong Xu.Medium optimization for mycelia production of Antrodia camphorata based on artificial neural network-genetic algorithm[J].Chinese Journal of Biotechnology,2011,27(12):1773-1779.
Authors:Zhenming Lu  Zhe He  Hongyu Xu  Jinsong Shi and Zhenghong Xu
Institution:Laboratory of Pharmaceutical Engineering, School of Medicine and Pharmaceutics, Jiangnan University, Wuxi 214122, China;Laboratory of Pharmaceutical Engineering, School of Medicine and Pharmaceutics, Jiangnan University, Wuxi 214122, China;Laboratory of Pharmaceutical Engineering, School of Medicine and Pharmaceutics, Jiangnan University, Wuxi 214122, China;Laboratory of Bioactive Products Process Engineering, School of Medicine and Pharmaceutics, Jiangnan University, Wuxi 214122, China;Laboratory of Pharmaceutical Engineering, School of Medicine and Pharmaceutics, Jiangnan University, Wuxi 214122, China
Abstract:To illustrate the complex fermentation process of submerged culture of Antrodia camphorata ATCC 200183, we observed the morphology change of this filamentous fungus. Then we used two optimization models namely response surface methodology (RSM) and artificial neural network (ANN) to model the fermentation process of Antrodia camphorata. By genetic algorithm (GA), we optimized the inoculum size and medium components for Antrodia camphorata production. The results show that fitness and prediction accuracy of ANN model was higher when compared to those of RSM model. Using GA, we optimized the input space of ANN model, and obtained maximum biomass of 6.2 g/L at the GA-optimized concentrations of spore (1.76×105 /mL) and medium components (glucose, 29.1 g/L; peptone, 9.3 g/L; and soybean flour, 2.8 g/L). The biomass obtained using the ANN-GA designed medium was (6.1±0.2) g/L which was in good agreement with the predicted value. The same optimization process may be used to improve the production of mycelia and bioactive metabolites from potent medicinal fungi by changing the fermentation parameters.
Keywords:Antrodia camphorata  artificial neural network  response surface methodology  genetic algorithm
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