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Feed-forward neural network modeling and optimization using genetic algorithm: Enzymatic hydrolysis of xylose production

机译:使用遗传算法的前馈神经网络建模和优化:木糖生产的酶促水解

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Demand on modeling an accurate process model as well as optimization of biochemical process has increased as it is vital for sustainable development in bioprocess industries. Therefore, this paper is concerned about the empirical modeling of enzymatic hydrolysis using xylanase for the production of xylose from rice straw. The parameters investigated in this research were temperature, agitation speed of incubator shaker and xylanase concentration, to obtain the production of xylose. Feed-forward neural network (FANN) was employed to describe the relationship of the input and output of the process. Then the genetic algorithm (GA) method was applied to optimize the process condition. The initial data is split into training and validation before re-sampling the data with bootstrap re-sampling method. The training data again was then split into training and testing data.The neural network model was developed with one hidden layer and 6 number of hidden nodes. The correlation coefficient of training and testing set was found to be 0.9970 and 0.9975 respectively, though the correlation coefficient of validation was obtained as 0.8501. The optimization of the parameters namely temperature, agitation speed and xylanase concentration of the xylose production using the GA method was found to be 50.3111°C, 153.5140 rpm and 1.6944 g/l with the optimum xylose production predicted is 0.1845 g/l.
机译:建立精确的过程模型以及优化生化过程的需求不断增加,因为这对于生物过程工业的可持续发展至关重要。因此,本文关注使用木聚糖酶从稻草生产木糖的酶促水解的经验模型。本研究研究的参数是温度,培养箱摇床的搅拌速度和木聚糖酶的浓度,以获得木糖的产量。前馈神经网络(FANN)用于描述过程的输入和输出之间的关系。然后应用遗传算法(GA)对工艺条件进行优化。在使用自举重采样方法对数据进行重采样之前,将初始数据分为训练和验证。然后将训练数据再次分为训练和测试数据。开发了具有一个隐藏层和6个隐藏节点的神经网络模型。训练和测试集的相关系数分别为0.9970和0.9975,尽管验证的相关系数为0.8501。发现使用GA方法对木糖生产的参数,即温度,搅拌速度和木聚糖酶浓度的优化为50.3111℃,153.5140rpm和1.6944g / l,预测的最佳木糖生产为0.1845g / l。

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