截止日期、机会成本和资源约束下的数字印刷工作流程优化

Mukesh Agrawal, Q. Duan, K. Chakrabarty, Jun Zeng, I-Jong Lin, G. Dispoto, Yuan-Shin Lee
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引用次数: 6

摘要

按需数字印刷是新兴的个性化制造服务的一个例子。它为自动化打印过程、提高生产力以及更好地利用设备、服务器和It基础设施等资源提供了独特的机会。在这项工作中,我们提出了一种统一的解决方法来解决数字印刷中的一个重要优化问题,即打印作业的组件任务同时映射到时间步骤(调度),为这些任务选择资源,以及任务到资源的映射(绑定)。我们根据顺序图对打印作业、它们之间的关系以及作业中任务之间的依赖关系进行建模。然后将这种形式化表示用于调度和资源绑定。优化目标是实现准时制造,也就是说,最小化作业订单的空闲时间(交货截止日期和订单完成时间之间的持续时间)和机会成本。该方法利用遗传算法系统地搜索可行解空间。遗传算法的适应度函数被精心设计以匹配优化目标。描述了一个整数线性规划(ILP)模型,通过推导小问题实例的最优解来评估遗传启发式。使用来自商业印刷服务提供商的打印订单进一步评估优化技术,并将其与工业环境中通常实现的基线方法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital print workflow optimization under due-dates, opportunity cost and resource constraints
On-demand digital printing is an example of emerging personalized manufacturing services. It provides unique opportunities to automate the printing process, enhance productivity, and better utilize resources such as equipment, servers and IT infrastructure. In this work, we present a unified solution approach to solve an important optimization problem in digital printing, viz., simultaneous mapping of component tasks of a print job to time steps (scheduling), selection of resources for these tasks, and mapping of tasks to resources (binding). We model print jobs, the relationships between them, and dependencies between tasks within a job, in terms of sequencing graphs. This formal representation is then used for scheduling and resource binding. The optimization objective is to enable justin-time manufacturing, that is, to minimize both the slack time (the duration between the delivery deadline and the completion time of the order) and the opportunity cost for job orders. The proposed approach uses genetic algorithms (GA) to systematically search the space of feasible solutions. The fitness function of the GA is carefully crafted to match the optimization objective. An integer linear programming (ILP) model is described to evaluate the GA heuristic by deriving optimal solutions for small problem instances. The optimization technique is further evaluated using print orders from a commercial print service provider and compared to baseline methods commonly implemented in the industrial settings.
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