Parallel machine scheduling with job family, release time, and mold availability constraints: model and two solution approaches

IF 3.3 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Xiang Lin, Yuning Chen, Junhua Xue, Boquan Zhang, Yingwu Chen, Cheng Chen
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Abstract

This paper investigates a new problem in an identical parallel machine environment called parallel machine scheduling with job family, release time, and mold availability constraints (PMS-JRM), which is highly challenging from the computational perspective as it extends the basic NP-hard problem \(P_m||\sum C_j\). The mold availability notion, first introduced in this paper, represents the availability relationship between jobs and machines. The PMS-JRM model originates from the imaging data collaborative processing in a low-earth-orbit satellite constellation under a time-varying communication network, and it can represent other multi-resource collaborative scheduling problems with discontinuous communication. An integer programming model was proposed to formulate the PMS-JRM. Due to its NP-hardness, two highly efficient heuristic solution approaches were proposed, namely a greedy algorithm with a hybrid first come first serve (HFCFS) dispatching rule (GA-HFCFS) and a Memetic Algorithm with Heterogeneous swap and Key job insertion operators (MA-HK). Extensive experiments were conducted on a set of test cases with various scales, and the results showed that GA-HFCFS outperforms three classical dispatching rules available in the literature. Taking the results of GA-HFCFS as initial solutions, MA-HK achieves optimal solutions for all small-scale cases while providing superior solutions within the same running time compared to two other competitors for large-scale cases. In particular, MA-HK yields better solutions in less running time than the state-of-the-art CPLEX solver. Additional experiments were conducted to highlight the critical ingredients of MA-HK.

Abstract Image

具有作业系列、脱模时间和模具可用性约束的并行机调度:模型和两种解决方法
本文研究了在相同并行机环境下的一个新问题,即带有作业系列、释放时间和模具可用性约束(PMS-JRM)的并行机调度问题,该问题扩展了基本的 NP-hard问题(P_m||\sum C_j\),因此从计算角度看具有很高的挑战性。本文首次引入的模具可用性概念表示作业和机器之间的可用性关系。PMS-JRM 模型源于低地轨道卫星星座在时变通信网络下的成像数据协同处理,它可以代表其他通信不连续的多资源协同调度问题。提出了一个整数编程模型来制定 PMS-JRM。由于该问题具有 NP 难度,因此提出了两种高效的启发式求解方法,即具有混合先到先得(HFCFS)调度规则的贪婪算法(GA-HFCFS)和具有异构交换和关键作业插入算子的记忆算法(MA-HK)。在一组不同规模的测试用例上进行了广泛的实验,结果表明 GA-HFCFS 优于文献中的三种经典调度规则。以 GA-HFCFS 的结果为初始解,MA-HK 在所有小规模案例中都获得了最优解,而在大规模案例中,与其他两个竞争者相比,MA-HK 在相同的运行时间内提供了更优解。特别是,与最先进的 CPLEX 求解器相比,MA-HK 能在更短的运行时间内获得更好的解决方案。为了突出 MA-HK 的关键要素,我们还进行了其他实验。
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来源期刊
Memetic Computing
Memetic Computing COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-OPERATIONS RESEARCH & MANAGEMENT SCIENCE
CiteScore
6.80
自引率
12.80%
发文量
31
期刊介绍: Memes have been defined as basic units of transferrable information that reside in the brain and are propagated across populations through the process of imitation. From an algorithmic point of view, memes have come to be regarded as building-blocks of prior knowledge, expressed in arbitrary computational representations (e.g., local search heuristics, fuzzy rules, neural models, etc.), that have been acquired through experience by a human or machine, and can be imitated (i.e., reused) across problems. The Memetic Computing journal welcomes papers incorporating the aforementioned socio-cultural notion of memes into artificial systems, with particular emphasis on enhancing the efficacy of computational and artificial intelligence techniques for search, optimization, and machine learning through explicit prior knowledge incorporation. The goal of the journal is to thus be an outlet for high quality theoretical and applied research on hybrid, knowledge-driven computational approaches that may be characterized under any of the following categories of memetics: Type 1: General-purpose algorithms integrated with human-crafted heuristics that capture some form of prior domain knowledge; e.g., traditional memetic algorithms hybridizing evolutionary global search with a problem-specific local search. Type 2: Algorithms with the ability to automatically select, adapt, and reuse the most appropriate heuristics from a diverse pool of available choices; e.g., learning a mapping between global search operators and multiple local search schemes, given an optimization problem at hand. Type 3: Algorithms that autonomously learn with experience, adaptively reusing data and/or machine learning models drawn from related problems as prior knowledge in new target tasks of interest; examples include, but are not limited to, transfer learning and optimization, multi-task learning and optimization, or any other multi-X evolutionary learning and optimization methodologies.
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