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Modelling and optimization of fermentation factors for enhancement of alkaline protease production by isolated Bacillus circulans using feed-forward neural network and genetic algorithm

机译:利用前馈神经网络和遗传算法建模和优化发酵因子以提高分离的环状芽孢杆菌产生碱性蛋白酶的能力

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Aim: Modelling and optimization of fermentation factors and evaluation for enhanced alkaline protease production by Bacillus circulans. Methods and Results: A hybrid system of feed-forward neural network (FFNN) and genetic algorithm (GA) was used to optimize the fermentation conditions to enhance the alkaline protease production by B. circulans. Different microbial metabolism regulating fermentation factors (incubation temperature, medium pH, inoculum level, medium volume, carbon and nitrogen sources) were used to construct a '6-13-1' topology of the FFNN for identifying the nonlinear relationship between fermentation factors and enzyme yield. FFNN predicted values were further optimized for alkaline protease production using GA. The overall mean absolute predictive error and the mean square errors were observed to be 0.0048, 27.9, 0.001128 and 22.45 U ml(-1) for training and testing, respectively. The goodness of the neural network prediction (coefficient of R-2) was found to be 0.9993. Conclusions: Four different optimum fermentation conditions revealed maximum enzyme production out of 500 simulated data. Concentration-dependent carbon and nitrogen sources, showed major impact on bacterial metabolism mediated alkaline protease production. Improved enzyme yield could be achieved by this microbial strain in wide nutrient concentration range and each selected factor concentration depends on rest of the factors concentration. The usage of FFNN-GA hybrid methodology has resulted in a significant improvement (> 2.5-fold) in the alkaline protease yield. Significance and Impact of the Study: The present study helps to optimize enzyme production and its regulation pattern by combinatorial influence of different fermentation factors. Further, the information obtained in this study signifies its importance during scale-up studies.
机译:目的:对发酵因子进行建模和优化,并评估环状芽孢杆菌增强碱性蛋白酶产生的能力。方法和结果:使用前馈神经网络(FFNN)和遗传算法(GA)的混合系统优化发酵条件,以提高圆环芽孢杆菌的碱性蛋白酶产量。使用不同的微生物代谢调控发酵因子(孵育温度,培养基pH,接种物水平,培养基体积,碳和氮源)来构建FFNN的“ 6-13-1”拓扑,以识别发酵因子与酶之间的非线性关系。让。 FFNN预测值针对使用GA的碱性蛋白酶生产进一步优化。总体平均绝对预测误差和均方误差分别为0.0048、27.9、0.001128和22.45 U ml(-1),用于训练和测试。发现神经网络预测(R-2的系数)为0.9993。结论:在500个模拟数据中,四种不同的最佳发酵条件显示出最大的酶产生。浓度依赖的碳和氮源,对细菌代谢介导的碱性蛋白酶生产产生重大影响。通过在较宽的养分浓度范围内,此微生物菌株可以提高酶的产量,每种选择的因子浓度取决于其余因子浓度。 FFNN-GA杂交方法的使用已使碱性蛋白酶产量显着提高(> 2.5倍)。研究的意义和影响:本研究通过不同发酵因子的组合影响,有助于优化酶的产生及其调控模式。此外,在这项研究中获得的信息表明了其在规模研究中的重要性。

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