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Hybrid GA-ACO Algorithm for a model parameters identification problem

机译:模型参数识别问题的混合GA-ACO算法

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In this paper, a hybrid scheme, to solve optimization problems, using a Genetic Algorithm (GA) and an Ant Colony Optimization (ACO) is introduced. In the hybrid GA-ACO approach, the GA is used to find a feasible solutions to the considered optimization problem. Next, the ACO exploits the information gathered by the GA. This process obtains a solution, which is at least as good as—but usually better than—the best solution devised by the GA. To demonstrate the usefulness of the presented approach, the hybrid scheme is applied to the parameter identification problem in the E. coli MC4110 fed-batch fermentation process model. Moreover, a comparison with both the conventional GA and the stand-alone ACO is presented. The results show that the hybrid GA-ACO takes the advantages of both the GA and the ACO, thus enhancing the overall search ability and computational efficiency of the solution method.
机译:本文介绍了一种混合方案,使用遗传算法(GA)和蚁群优化(ACO)来解决优化问题。在混合GA-ACO方法中,GA用于为考虑的优化问题找到可行的解决方案。接下来,ACO利用GA收集的信息。此过程获得的解决方案至少与GA设计的最佳解决方案一样好,但通常更好。为了证明所提出方法的有效性,将混合方案应用于大肠杆菌MC4110分批补料发酵过程模型中的参数识别问题。此外,还介绍了与常规GA和独立ACO的比较。结果表明,混合遗传算法可以同时利用遗传算法和蚁群算法的优势,从而提高了整体求解能力和求解效率。

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