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An approach to parameters estimation of a chromatography model using a clustering genetic algorithm based inverse model

机译:一种基于聚类遗传算法逆模型的色谱模型参数估计方法

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摘要

Genetic algorithms are tools for searching in complex spaces and they have been used successfully in the system identification solution that is an inverse problem. Chromatography models are represented by systems of partial differential equations with non-linear parameters which are, in general, difficult to estimate many times. In this work a genetic algorithm is used to solve the inverse problem of parameters estimation in a model of protein adsorption by batch chromatography process. Each population individual represents a supposed condition to the direct solution of the partial differential equation system, so the computation of the fitness can be time consuming if the population is large. To avoid this difficulty, the implemented genetic algorithm divides the population into clusters, whose representatives are evaluated, while the fitness of the remaining individuals is calculated in function of their distances from the representatives. Simulation and practical studies illustrate the computational time saving of the proposed genetic algorithm and show that it is an effective solution method for this type of application.
机译:遗传算法是用于在复杂空间中进行搜索的工具,它们已成功用于系统识别解决方案中,这是一个反问题。色谱模型由带有非线性参数的偏微分方程组表示,这些参数通常很难多次估计。在这项工作中,使用遗传算法解决了通过分批色谱法吸附蛋白质的模型中参数估计的反问题。每个人口个体代表偏微分方程组直接解的一个假定条件,因此,如果人口众多,适应度的计算可能会很耗时。为避免此困难,已实施的遗传算法将种群划分为集群,对群体进行评估,而其余个体的适应度则根据其与代表之间的距离来计算。仿真和实践研究表明了该遗传算法在计算上的节省时间,并表明该算法是此类应用的有效解决方案。

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