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A collaborative optimization algorithm for energy-efficient multi-objective distributed no-idle flow-shop scheduling

机译:节能多目标分布式No-IDLE流店调度的协作优化算法

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Facing the energy crisis, manufacturers is paying much attention to the energy-efficient scheduling by taking both economic benefits and energy conservation into account. Meanwhile, with the economic globalization, it is significant to facilitate the advanced manufacturing and scheduling in the distributed way. This paper addresses the energy-efficient distributed no-idle permutation flow-shop scheduling problem (EEDNIPFSP) to minimize makespan and total energy consumption simultaneously. By analyzing the characteristics of the problem, several properties are derived. To solve the problem effectively, a collaborative optimization algorithm (COA) is proposed by using the properties and some collaborative mechanisms. First, two heuristics are collaboratively utilized for population initialization to guarantee certain quality and diversity. Second, multiple search operators collaborate in a competitive way to enhance the exploration adaptively. Third, different local intensification strategies are designed for the dominated and non-dominated individuals to enhance the exploitation. Fourth, a speed adjusting strategy for the non-critical operations is designed to improve total energy consumption. The effect of key parameters is investigated using the design-of-experiment with full factorial setting. Comparisons based on extensive numerical tests are carried out, which demonstrate the effectiveness of the proposed algorithm in solving the EEDNIPFSP.
机译:面对能源危机,制造商通过考虑经济效益和节能能源,制造商正在重视节能调度。同时,随着经济全球化,有助于以分布式方式促进先进的制造和调度是很重要的。本文涉及节能分布式无空闲排列流量 - 商店调度问题(EEDNIPFSP),以同时最小化Mapespan和总能耗。通过分析问题的特征,派生了几个属性。为了有效地解决问题,通过使用性质和一些协作机制提出了一种协同优化算法(COA)。首先,两个启发式机构用于人口初始化,以保证某些质量和多样性。其次,多个搜索运营商以竞争方式协作,以自适应地增强勘探。第三,不同的当地强化策略是为主导和非主导的个人设计的,以增强剥削。第四,非关键操作的速度调整策略旨在提高总能耗。使用具有完整因子设置的实验设计来研究关键参数的效果。进行了基于广泛数值测试的比较,这证明了所提出的算法在解决EEDNIPFSP时的有效性。

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