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Genetic Algorithms for a Parameter Estimation of a Fermentation Process Model: A Comparison

机译:发酵过程模型参数估计的遗传算法:比较

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In this paper the problem of a parameter estimation using genetic algorithms is examined. A case study considering the estimation of 6 parameters of a nonlinear dynamic model of E. coli fermentation is presented as a test problem. The parameter estimation problem is stated as a nonlinear programming problem subject to nonlinear differential-algebraic constraints. This problem is known to be frequently ill-conditioned and multimodal. Thus, traditional (gradient-based) local optimization methods fail to arrive satisfied solutions. To overcome their limitations, the use of different genetic algorithms as stochastic global optimization methods is explored. These algorithms are proved to be very suitable for the optimization of highly non-linear problems with many variables. Genetic algorithms can guarantee global optimality and robustness. These facts make them advantageous in use for parameter identification of fermentation models. A comparison between simple, modified and multi-population genetic algorithms is presented. The best result is obtained using the modified genetic algorithm. The considered algorithms converged very closely to the cost value but the modified algorithm is in times faster than other two
机译:在本文中,研究了使用遗传算法进行参数估计的问题。提出了一个考虑大肠杆菌发酵非线性动力学模型的6个参数估计的案例研究作为测试问题。参数估计问题被陈述为受非线性微分代数约束的非线性规划问题。已知该问题经常是病态的和多峰的。因此,传统的(基于梯度的)局部优化方法无法获得满意的解决方案。为了克服它们的局限性,探索了使用不同的遗传算法作为随机全局优化方法。实践证明,这些算法非常适用于具有多个变量的高度非线性问题的优化。遗传算法可以保证全局最优性和鲁棒性。这些事实使它们有利于用于发酵模型的参数识别。介绍了简单,修改和多种群遗传算法之间的比较。使用改进的遗传算法可获得最佳结果。所考虑的算法非常接近于成本值,但是经过改进的算法比其他两种算法快几倍

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