基于瓶颈调度算法的启发式高级计划调度系统

T. Chua, F. Y. Wang, T. Cai, X. Yin
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引用次数: 8

摘要

提出了一种采用瓶颈调度算法的启发式高级规划调度系统。它是为解决离散制造行业的生产调度问题而设计的。提出的APS系统可以通过其前向、后向和瓶颈调度算法,配置为部署在不同的生产环境中,包括按库存生产、按订单生产、瓶颈驱动车间。它允许用户在每个操作中根据操作的调度策略指定启发式规则。嵌入式调度技术有助于在资源利用率最大化、在制品(work-in- work, WIP)最小化和周期时间缩短这三个相互冲突的生产目标之间实现可行和实用的调度。此外,系统可以很容易地重新配置,以满足生产环境的物理和操作约束所施加的各种需求。APS系统在调度引擎中部署了两层相互交织的启发式算法。启发式算法的两层是作业优先级规则和机器选择规则。JP启发式规则设计用于对每个操作的订单进行优先级排序,而机器选择(MS)算法选择最适合的机器和其他可选资源来生成调度列表。在调度引擎的设计和开发中采用的模块化和可配置方法允许针对不同行业特定的需求重新配置基本核心JP和MS模块。所提出的APS系统已成功应用于几家半导体后端组装公司的日常生产调度需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Heuristics-based Advanced Planning and Scheduling System with Bottleneck Scheduling Algorithm
This paper presents a heuristics-based advanced planning and scheduling (APS) system with bottleneck scheduling algorithm. It has been designed to solve production scheduling problems in discrete manufacturing industry. The proposed APS system can be configured to be deployed in different production environments, including make-to-stock, make-to-order, bottleneck-driven shop floor, through its forward, backward and bottleneck scheduling algorithms. It allows users to specify heuristic rules at each operation based on the scheduling policy of the operation. The embedded scheduling techniques facilitates the generation of feasible and practical schedule to achieve a fine balance among the conflicting production goals of maximizing resource utilization, minimizing work-in-process (WIP), and reduction of cycle time. In addition, the system can be easily reconfigured to address them various requirements imposed by the physical and operational constraints of the production environment. The APS system deploys two layers of heuristic algorithms intertwined within the scheduling engine. The two layers of heuristic algorithms are job prioritization (JP) rules and machine selection (MS) rules. JP heuristics rules are designed to prioritize orders at each operation, while machine selection (MS) algorithm selects the best-fit machines and other optional resources to generate the dispatching list. The modular and configurable approach adopted in the design and development of the scheduling engine allows the reconfiguration of basic core JP and MS modules for different industry-specific requirements. The proposed APS system has been successfully implemented to fulfil the daily production scheduling needs of a few semiconductor backend assembly companies.
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