>In this article, max–min ant colony optimization algorithm is proposed to determine how to allocat'/> An integrated ant colony optimization algorithm to solve job allocating and tool scheduling problem
首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >An integrated ant colony optimization algorithm to solve job allocating and tool scheduling problem
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An integrated ant colony optimization algorithm to solve job allocating and tool scheduling problem

机译:一种解决作业分配和工具调度问题的集成蚁群优化算法

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>In this article, max–min ant colony optimization algorithm is proposed to determine how to allocate jobs and schedule tools with the objective of minimizing the makespan of processing plans in flexible manufacturing system. To expand the application range of max–min ant colony optimization algorithm, tool movement policy is selected as the running mode of flexible manufacturing system, which assumes that tools are shared among work centers and each operation is allowed to be machined by different kinds of tools. In the process of converting this scheduling problem into traveling salesman problem, disjunctive graph is modified to possess more than one path between each neighbor node. Besides providing practical methods of initializing pheromone, selecting node and calculating pheromone increment, max–min ant colony optimization algorithm employs the pheromone updating rule in max–min ant system to limit pheromone amount in a range, of which the upper and lower boundaries are updated after each iteration by formulations involving the current optimal makespan, the average number of optional tools and parameters. Finally, different sizes of processing plans are randomly generated, through which max–min ant colony optimization algorithm is proved effectively to tackle early stagnation and local convergence and thus obtains better solution than ant colony optimization algorithm and bidirectional convergence ant colony optimization algorithm.
机译: >在本文中,提出了MAX-MIN蚁群优化算法,以确定如何分配作业和调度工具,目的是最小化灵活的制造系统中的处理计划的MEPESPAN。为了扩展MAX-MIN蚁群优化算法的应用范围,将选择刀具移动策略作为灵活制造系统的运行模式,这假设工具在工作中心之间共享,并且每个操作都被允许通过不同类型的工具加工。在将该调度问题转换为旅行推销员问题的过程中,被修改为在每个邻居节点之间具有多于一个路径的分解图。除了提供初始化信息素的实用方法外,选择节点和计算信息素增量,MAX-MIN蚁群优化算法采用MAX-MIN ANT系统中的信息酮更新规则,以限制一个范围内的信息素量,其中较新的上边界和下边界通过涉及当前最佳Mapspan的配方进行每次迭代,可选工具和参数的平均数量。最后,随机生成了不同大小的处理计划,通过该处理计划通过该尺寸有效地证明了最高停滞和局部收敛,从而获得比蚁群优化算法和双向收敛蚁群优化算法获得更好的解决方案。

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