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Metaheuristics for the multi-task simultaneous supervision dual resource-constrained scheduling problem

机译:多任务同步监督双资源约束调度问题的综合学

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This comprehensive study develops advantageous optimization methods to solve a nascent problem, namely multi-task simultaneous supervision dual resource-constrained (MTSSDRC) scheduling. MTSSDRC is a complex problem that deals with machine assignment, job sequencing, operator allocation, and task sequencing. Setup and unloading must be scheduled to operators, and they are allowed to leave machines while processing jobs. Earlier research on MTSSDRC developed a permutation-based genetic algorithm (PGA) with a specific decoding scheme, namely DSE, to solve the problem. Many previous studies succeed in solving scheduling problems by modifying well-known metaheuristic techniques. Therefore, we are inspired by this to explore further modifications to particular metaheuristics. The first contribution of the present study lies in the development of new decoding schemes that can perform better than the existing option. Five new decoding schemes are considered. Two of those schemes, namely DS2 and DS4, perform significantly better than DSE, reaching 6% relative deviation. DS4 is superior in terms of solution quality, but DS2 can run eight times faster. Another contribution is the development of six modified metaheuristics that are implemented for the MTSSDRC problem: tabu search, simulated annealing, particle swarm optimization, bees algorithm (BA), artificial bee colony, and grey wolf optimization. The performance of these metaheuristics is compared with that of the PGA. The results show that the PGA and BA are consistently superior for medium- and large-sized problems. The BA is more promising in terms of solution quality, but the PGA is faster.
机译:这项综合研究开发了有利的优化方法来解决新生问题,即多任务同时监督双资源受限(MTSSDRC)调度。 MTSSDRC是一个复杂的问题,可以处理机器分配,作业排序,操作员分配和任务排序。必须计划设置和卸载到运营商,并且在处理作业时允许它们离开机器。早期关于MTSSDRC的研究开发了一种基于置换的遗传算法(PGA),具有特定的解码方案,即DSE,以解决问题。许多以前的研究通过改变众所周知的成逐技术来解决调度问题。因此,我们受到启发的启发,以探讨对特定核心学的进一步修改。本研究的第一个贡献在于开发新的解码方案,这些方案可以比现有选项更好。考虑了五种新的解码方案。这些方案中的两种,即DS2和DS4,比DSE显着更好,相对偏差达到6%。 DS4在解决方案质量方面优越,但DS2可以更快地运行八倍。另一种贡献是开发为MTSSDRC问题实施的六种修改的成分尿液:禁忌搜索,模拟退火,粒子群优化,蜜蜂算法(BA),人造蜂殖民地和灰狼优化。将这些成分训练的性能与PGA的性能进行比较。结果表明,PGA和BA始终如一地优于中型和大型问题。 BA在解决方案质量方面更有前景,但PGA更快。

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