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Rescheduling and optimization of logistic processes using GA and ACO

机译:使用GA和ACO重新安排和优化物流流程

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This paper presents a comparative study of genetic algorithms (GA) and ant colony optimization (ACO) applied the online re-optimization of a logistic scheduling problem. This study starts with a literature review of the GA and ACO performance for different benchmark problems. Then, the algorithms are compared on two simulation scenarios: a static and a dynamic environment, where orders are canceled during the scheduling process. In a static optimization environment, both methods perform equally well, but the GA are faster. However, in a dynamic optimization environment, the GA cannot cope with the disturbances unless they re-optimize the whole problem again. On the contrary, the ant colonies are able to find new optimization solutions without re-optimizing the problem, through the inspection of the pheromone matrix. Thus, it can be concluded that the extra time required by the ACO during the optimization process provides information that can be useful to deal with disturbances.
机译:本文介绍了遗传算法(GA)和蚁群优化(ACO)应用在线重新优化Logistic调度问题的比较研究。本研究首先针对不同基准问题的GA和ACO绩效进行文献综述。然后,在两种模拟场景下对算法进行比较:静态和动态环境,在计划过程中取消订单。在静态优化环境中,两种方法的性能均相同,但GA速度更快。但是,在动态优化环境中,GA无法应对干扰,除非它们再次重新优化了整个问题。相反,通过检查信息素矩阵,蚁群能够找到新的优化解决方案,而无需重新优化问题。因此,可以得出结论,ACO在优化过程中所需的额外时间提供了可用于处理干扰的信息。

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