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首页> 外文期刊>Biochemical Engineering Journal >Optimization of the hydrolysis of lignocellulosic residues by using radial basis functions modeling and particle swarm optimization
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Optimization of the hydrolysis of lignocellulosic residues by using radial basis functions modeling and particle swarm optimization

机译:利用径向基函数建模和粒子群算法优化木质纤维素残留物的水解

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摘要

The concentrations of glucose and total reducing sugars obtained by chemical hydrolysis of three different lignocellulosic feedstocks were maximized. Two response surface methodologies were applied to model the amount of sugars produced: (1) classical quadratic least-squares fit (QLS), and (2) artificial neural networks based on radial basis functions (RBF). The results obtained by applying RBF were more reliable and better statistical parameters were obtained. Depending on the type of biomass, different results were obtained. Improvements in fit between 35% and 55% were obtained when comparing the coefficients of determination (R~2) computed for both QLS and RBF methods. Coupling the obtained RBF models with particle swarm optimization to calculate the global desirability function, allowed to perform multiple response optimization. The predicted optimal conditions were confirmed by carrying out independent experiments.
机译:通过化学水解三种不同的木质纤维素原料获得的葡萄糖和总还原糖的浓度最大。应用了两种响应面方法对糖的产生量进行建模:(1)经典二次最小二乘拟合(QLS),以及(2)基于径向基函数(RBF)的人工神经网络。应用RBF获得的结果更加可靠,并且获得了更好的统计参数。根据生物质的类型,获得不同的结果。当比较为QLS和RBF方法计算的测定系数(R〜2)时,拟合度可提高35%至55%。将获得的RBF模型与粒子群优化相结合,以计算全局合意函数,从而可以执行多重响应优化。通过进行独立实验确认了预测的最佳条件。

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