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2026, 02, v.52 191-199
考虑设备可用性的航天制造车间动态调度方法
基金项目(Foundation): 上海市启明星项目(22QB1404200); 国家自然科学基金项目(52375486)
邮箱(Email): lvyoulong@dhu.edu.cn;
DOI: 10.19886/j.cnki.dhdz.2025.0221
摘要:

航天产品研制具有多品种、变批量及研制与批产共线生产的特点,多任务、高负载的设备成为制约生产效率的关键因素。加工设备潜在的故障扰动严重影响车间生产效率。因此,本文提出了考虑设备可用性的航天制造车间动态调度方法。该方法借助统计预测开展设备可用性分析,获取相邻两次故障之间的平均工作时间等设备可用性信息,实现设备可用性约束的量化分析;同时,建立工序任务指派到设备、设备上工序任务排序的调度规则库,设计6种规则组合的调度动作,并结合深度强化学习的D3QN(deep double dueling Q-networks)算法,输出以最小化工件总加权完工时间为优化目标的车间动态调度方案。为验证所提动态调度方法的性能,将其与常见的组合式规则方法、DQN(deep Q-networks)、遗传算法进行对比试验,试验结果表明所提算法在五个算例上均能取得最好效果。

Abstract:

Aerospace product development is characterized by multiple varieties, variable batch sizes, and concurrent development and mass production on the same production line. This makes multi-task, high-load equipment a key constraint on production efficiency, while potential equipment failures significantly disrupt workshop productivity. To address these challenges, this paper proposes a dynamic scheduling method for aerospace manufacturing workshops considering equipment availability. The method uses statistical prediction-based analysis to quantify availability constraints, deriving metrics such as the mean operating time between consecutive failures. Meanwhile, it establishes a scheduling rule library for assigning process tasks to equipment and sequencing operations on each machine. By designing scheduling actions through rule combinations and integrating the deep double dueling Q-networks(D3QN) algorithm from deep reinforcement learning, the method generates dynamic workshop schedules aimed at minimizing the total weighted completion time of workpieces. To evaluate the performance of the proposed dynamic scheduling method, comparative experiments were conducted with common combinatorial rule-based methods, deep Q-networks(DQN), and genetic algorithms. Experimental results demonstrate that the proposed algorithm achieves the best performance across all five test cases.

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基本信息:

DOI:10.19886/j.cnki.dhdz.2025.0221

中图分类号:V468

引用信息:

[1]郭具涛,戴铮,吕佑龙,等.考虑设备可用性的航天制造车间动态调度方法[J].东华大学学报(自然科学版),2026,52(02):191-199.DOI:10.19886/j.cnki.dhdz.2025.0221.

基金信息:

上海市启明星项目(22QB1404200); 国家自然科学基金项目(52375486)

发布时间:

2026-02-03

出版时间:

2026-02-03

网络发布时间:

2026-02-03

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