首页> 外文期刊>African Journal of Biotechnology >Estimation of biochemical variables using quantum-behaved particle swarm optimization (QPSO)-trained radius basis function neural network: A case study of fermentation process of L-glutamic acid
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Estimation of biochemical variables using quantum-behaved particle swarm optimization (QPSO)-trained radius basis function neural network: A case study of fermentation process of L-glutamic acid

机译:基于量子行为粒子群优化(QPSO)训练的半径基函数神经网络的生化变量估计:以L-谷氨酸发酵过程为例

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Due to the difficulties in the measurement of biochemical variables in fermentation process, soft-sensing model based on radius basis function neural network had been established for estimating the variables. To generate a more efficient neural network estimator, we employed the previously proposed quantum-behaved particle swarm optimization (QPSO) algorithm for neural network training. The experiment results of L-glutamic acid fermentation process showed that our established estimator could predict variables such as the concentrations of glucose, biomass and glutamic acid with higher accuracy than the estimator trained by the most widely used orthogonal least squares (OLS). According to its global convergence, QPSO generated a group of more proper network parameters than the most popular OLS. Thus, QPSO-RBF estimator was more favorable to the control and fault diagnosis of the fermentation process, and consequently, it increased the yield of fermentation.
机译:由于发酵过程中生化指标的测量困难,建立了基于半径基函数神经网络的软测量模型。为了生成更有效的神经网络估计器,我们采用了先前提出的量子行为粒子群优化(QPSO)算法进行神经网络训练。 L-谷氨酸发酵过程的实验结果表明,与由最广泛使用的正交最小二乘(OLS)训练的估计器相比,我们建立的估计器可以更准确地预测变量,例如葡萄糖,生物量和谷氨酸的浓度。根据其全球趋同,QPSO生成了一组比最流行的OLS更合适的网络参数。因此,QPSO-RBF估计器更有利于发酵过程的控制和故障诊断,因此,增加了发酵的产量。

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