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Imperative role of neural networks coupled genetic algorithm on optimization of biohydrogen yield

机译:神经网络耦合遗传算法在生物氢产量优化中的重要作用

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Neural networks coupled genetic algorithm was applied to optimize the four key fermentation parameters (medium pH, glucose to xylose ratio, inoculum age and its concentration) for biohydrogen yield using mixed anaerobic microbial consortia. L16 orthogonal array (OA) was used for wet lab experimentation. The biohydrogen yield values differed with experimental conditions. The data was analyzed initially using neural network for finding out the effectiveness of experimental data. A 4-10-1 network topology was found to be effective indicating 10 neurons in the hidden layer. The observed R~2 value was 0.9999 indicating good approximation of prediction capability of employed neural network. The input and output training data revealed overall MAE of 3.38 x 10~(-8), MAPE of 2.81 x 10~(-10) and MSE of 9.1 x 10~(-8) indicating accuracy of the experimental and predicted values. Optimum conditions were determined by using genetic algorithm after evaluation of data for 300 generations and four best possible conditions were selected and validated the same. Overall, the biohydrogen yield was improved from 325 to 379 ml g~(-1) substrate.
机译:应用神经网络耦合遗传算法,通过混合厌氧微生物联盟优化了四个关键发酵参数(中等pH,葡萄糖与木糖的比例,接种物的年龄及其浓度),以提高生物氢产率。 L16正交阵列(OA)用于湿实验室实验。生物氢产率值随实验条件而不同。最初使用神经网络对数据进行分析,以找出实验数据的有效性。发现4-10-1网络拓扑有效,表明隐藏层中有10个神经元。 R〜2的观测值为0.9999,表明所用神经网络的预测能力具有良好的近似性。输入和输出训练数据显示,总体MAE为3.38 x 10〜(-8),MAPE为2.81 x 10〜(-10),MSE为9.1 x 10〜(-8),表明实验值和预测值的准确性。在评估了300代数据后,使用遗传算法确定了最佳条件,并选择了四个最佳条件并进行了验证。总体而言,生物氢产率从325 ml g〜(-1)底物提高到379 ml g〜(-1)。

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