Neighbourhood search for energy minimisation in flexible job shops under fuzziness

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Natural Computing Pub Date : 2023-10-18 DOI:10.1007/s11047-023-09967-w
Pablo García Gómez, Camino R. Vela, Inés González-Rodríguez
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Abstract

Abstract Uncertainty pervades real life and supposes a challenge for all industrial processes as it makes it difficult to predict the outcome of otherwise risk-free activities. In particular, time deviation from projected objectives is one of the main sources of economic losses in manufacturing, not only for the delay in production but also for the energy consumed by the equipment during the additional unexpected time they have to work to complete their labour. In this work we deal with uncertainty in the flexible job shop, one of the foremost scheduling problems due to its practical applications. We show the importance of a good model to avoid introducing unwanted imprecision and producing artificially pessimistic solutions. In our model, the total energy is decomposed into the energy required by resources when they are actively processing an operation and the energy consumed by these resources simply for being switched on. We propose a set of metrics and carry out an extensive experimental analysis that compares our proposal with the more straightforward alternative that directly translates the deterministic model. We also define a local search neighbourhood and prove that it can reach an optimal solution starting from any other solution. Results show the superiority of the new model and the good performance of the new neighbourhood.

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模糊条件下弹性工作间的邻里能量最小化搜索
不确定性在现实生活中无处不在,对所有工业过程都是一个挑战,因为它使人们难以预测原本无风险活动的结果。特别是,与预期目标的时间偏差是制造业经济损失的主要来源之一,这不仅是因为生产延误,而且是因为设备在完成其工作所需的额外意外时间内所消耗的能量。本文研究了柔性作业车间的不确定性问题,这是柔性作业车间在实际应用中最重要的调度问题之一。我们展示了一个好的模型的重要性,以避免引入不必要的不精确和产生人为的悲观解决方案。在我们的模型中,总能量被分解为资源在主动处理操作时所需的能量和这些资源仅仅被打开时所消耗的能量。我们提出了一组度量标准,并进行了广泛的实验分析,将我们的建议与直接转换确定性模型的更直接的替代方案进行比较。我们还定义了一个局部搜索邻域,并证明了它可以从任何其他解出发得到一个最优解。结果表明,新模型的优越性和新小区的良好性能。
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来源期刊
Natural Computing
Natural Computing Computer Science-Computer Science Applications
CiteScore
4.40
自引率
4.80%
发文量
49
审稿时长
3 months
期刊介绍: The journal is soliciting papers on all aspects of natural computing. Because of the interdisciplinary character of the journal a special effort will be made to solicit survey, review, and tutorial papers which would make research trends in a given subarea more accessible to the broad audience of the journal.
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