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The scheduling of manufacturing systems using Artificial Intelligence (AI) techniques in order to find optimal/near-optimal solutions.

机译:使用人工智能(AI)技术对制造系统进行调度,以找到最佳/接近最佳的解决方案。

摘要

This thesis aims to review and analyze the scheduling problem in general and Job Shop Scheduling Problem (JSSP) in particular and the solution techniques applied to these problems. The JSSP is the most general and popular hard combinational optimization problem in manufacturing systems. For the past sixty years, an enormous amount of research has been carried out to solve these problems. The literature review showed the inherent shortcomings of solutions to scheduling problems. This has directed researchers to develop hybrid approaches, as no single technique for scheduling has yet been successful in providing optimal solutions to these difficult problems, with much potential for improvements in the existing techniques.udThe hybrid approach complements and compensates for the limitations of each individual solution technique for better performance and improves results in solving both static and dynamic production scheduling environments. Over the past years, hybrid approaches have generally outperformed simple Genetic Algorithms (GAs). Therefore, two novel priority heuristic rules are developed: Index Based Heuristic and Hybrid Heuristic. These rules are applied to benchmark JSSP and compared with popular traditional rules. The results show that these new heuristic rules have outperformed the traditional heuristic rules over a wide range of benchmark JSSPs. Furthermore, a hybrid GA is developed as an alternate scheduling approach. The hybrid GA uses the novel heuristic rules in its key steps. The hybrid GA is applied to benchmark JSSPs. The hybrid GA is also tested on benchmark flow shop scheduling problems and industrial case studies. The hybrid GA successfully found solutions to JSSPs and is not problem dependent. The hybrid GA performance across the case studies has proved that the developed scheduling model can be applied to any real-world scheduling problem for achieving optimal or near-optimal solutions. This shows the effectiveness of the hybrid GA in real-world scheduling problems.udIn conclusion, all the research objectives are achieved. Finaly, the future work for the developed heuristic rules and the hybrid GA are discussed and recommendations are made on the basis of the results.
机译:本文旨在回顾和分析一般的调度问题,特别是作业车间调度问题(JSSP),以及解决这些问题的解决方法。 JSSP是制造系统中最普遍,最流行的硬组合优化问题。在过去的六十年中,为解决这些问题进行了大量的研究。文献综述显示了解决计划问题的内在缺陷。这已指导研究人员开发混合方法,因为还没有一种调度技术能够成功地为这些难题提供最佳解决方案,并且在改进现有技术方面具有很大的潜力。 ud混合方法补充并弥补了每种方法的局限性单独的解决方案技术可提高性能,并改善解决静态和动态生产计划环境的结果。在过去的几年中,混合方法通常优于简单的遗传算法(GA)。因此,开发了两种新颖的优先级启发式规则:基于索引的启发式和混合启发式。这些规则适用于基准JSSP,并与流行的传统规则进行了比较。结果表明,在各种基准JSSP上,这些新的启发式规则已经优于传统的启发式规则。此外,混合GA被开发为替代调度方法。混合GA在其关键步骤中使用了新颖的启发式规则。混合GA应用于基准JSSP。混合遗传算法还经过基准流水车间调度问题和工业案例研究的测试。混合GA成功找到了JSSP的解决方案,并且与问题无关。案例研究中的混合遗传算法性能证明,所开发的调度模型可以应用于任何实际调度问题,以实现最佳或接近最佳的解决方案。这说明了混合遗传算法在实际调度问题中的有效性。 ud最后,所有研究目标得以实现。最后,讨论了已开发的启发式规则和混合GA的未来工作,并根据结果提出了建议。

著录项

  • 作者

    Maqsood Shahid;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类
  • 入库时间 2022-08-20 20:21:47

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