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Application Of Desirability Function Based On Neural Network For Optimizing Biohydrogen Production Process

机译:神经网络的期望函数在生物制氢工艺优化中的应用

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A fractional factorial design was carried out to investigate the effects of temperature, initial pH and glucose concentration on fermentative hydrogen production by mixed cultures in batch tests and then the experimental data of substrate degradation efficiency, hydrogen yield and average hydrogen production rate were described by a neural network, based on which the simultaneous optimization of the three responses was performed by the method of desirability function. The analysis showed that the neural network could successfully describe the effects of temperature, initial pH and glucose concentration on the substrate degradation efficiency, hydrogen yield and average hydrogen production rate of this study. The maximum substrate degradation efficiency of 95.3%, hydrogen yield of 305.3 mL/g glucose and average hydrogen production rate of 23.9 mL/h were all obtained at the optimal temperature of 39.0 ℃, initial pH of 7.0 and glucose concentration of 24.6 g/L identified by the method of desirability function based on a neural network. In sum, the method of desirability function based on a neural network was a useful tool to optimize several responses for fermentative hydrogen production processes simultaneously.
机译:分批设计进行了分批试验,研究了温度,初始pH值和葡萄糖浓度对混合培养发酵产氢的影响,并通过分子动力学方法描述了底物降解效率,产氢量和平均产氢速率的实验数据。神经网络,在此基础上,通过期望函数方法同时优化三个响应。分析表明,神经网络可以成功地描述温度,初始pH和葡萄糖浓度对本研究底物降解效率,氢产率和平均氢生产率的影响。在最佳温度39.0℃,初始pH值为7.0,葡萄糖浓度为24.6 g / L的条件下,最大底物降解效率为95.3%,葡萄糖的氢产量为305.3 mL / g,平均氢气产生速率为23.9 mL / h。通过基于神经网络的期望函数的方法进行识别。总之,基于神经网络的期望函数方法是一种有用的工具,可以同时优化发酵氢生产过程的多个响应。

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