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ANN and RSM based modelling for optimization of cell dry mass of Bacillus sp. strain B67 and its antifungal activity against Botrytis cinerea

机译:基于ANN和RSM芽孢杆菌细胞干料优化的建模。菌株B67及其对Botrytis Cinerea的抗真菌活性

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摘要

The present study was conducted to present the comparative modelling, predictive and generalization abilities of response surface methodology (RSM) and artificial neural network (ANN) for optimization of fermenting medium. Cell dry mass and inhibition zone of strain B67 against Botrytis cinerea were used as response variables. The response variables were optimized and modelled as a function of five independent variables (pH, gelatine percentage, incubation period, agitation speed, and temperature) using response surface methodology and artificial neural network. The results of both approaches were compared for their modelling abilities in terms of root-mean-squared error (RMSE), mean absolute error (MAD), chi-square, and correlation coefficient, computed from experimental and predicted data. ANN models were proved to be superior to RSM with lower RMSE, MAD, and chi-square and higher values for correlation coefficient, coefficient of determination, and predictive coefficient of determination. The optimum fermenting conditions predicted were pH 6.65, gelatine 3.30%, incubation period 35 h, agitation speed 163 rpm, and incubation temperature 33.64 °C, with 15.00 g/L and 31.64 mm cell dry mass and inhibition zone, respectively. The predictive models were validated experimentally and were found in agreement with experimentally obtained values.
机译:本研究介绍了响应面法(RSM)和人工神经网络(ANN)的比较建模,预测和泛化能力,以优化发酵培养基。将菌株B67对阵Botrytis Cinerea的细胞干肿块和抑制区作为响应变量。使用响应面方法和人工神经网络,优化响应变量并以五个独立变量(pH,明胶百分比,孵化周期,搅拌速度和温度)的函数建模。在从实验和预测数据计算的根本平均误差(RMSE),Chi-Square和相关系数方面,将两种方法的结果与其建模能力进行比较。被证明,ANN模型优于RSM,RMSE,MAD和Chi-Square,相关系数,测定系数和预测系数的更高值。预测的最佳发酵条件是pH6.65,明胶3.30%,孵育时间35小时,搅拌速度163rpm和孵育温度33.64℃,分别具有15.00g / L和31.64mm的细胞干块和抑制区。预测模型是通过实验验证的,并与实验获得的值一致地发现。

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