Green scheduling optimization for flexible job shops considering multiple states of machines

Liuya Xu, Zhengchao Liu, Chunrong Pan
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Abstract

With the development of green production and industrial upgrading, the traditional production method of heavy manufacturing industry is in urgent need to change. Against the background that the energy structure cannot be changed in a short time, reasonable scheduling optimization is an effective solution to improve the production efficiency and energy utilization efficiency of enterprises. In the actual processing environment of the surveyed enterprises, the machines can have many different states during operation. These different states greatly increase the flexibility and complexity of the manufacturing shop, and the previous optimization methods are not suitable for this kind of manufacturing environment. For this reason, a multi-objective optimization model of flexible job shop scheduling considering multiple states of machines is proposed. Then, a two-stage optimization method is proposed for optimization. In the first stage, an improved genetic algorithm is proposed to solve the model. In the second stage, the green scheduling heuristic strategy is adopted to optimize the machine states. Finally, the feasibility of the model and the effectiveness of the solution method of this paper are verified by the optimization of practical cases.
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考虑机器多状态的柔性作业车间绿色调度优化
随着绿色生产和产业升级的发展,重型制造业的传统生产方式急需改变。在能源结构无法在短时间内改变的背景下,合理的调度优化是提高企业生产效率和能源利用效率的有效解决方案。在被调查企业的实际加工环境中,机器在运行过程中可以有许多不同的状态。这些不同的状态大大增加了制造车间的灵活性和复杂性,以往的优化方法不适合这种制造环境。为此,提出了考虑机器多状态的柔性作业车间调度多目标优化模型。然后,提出了一种两阶段优化方法。在第一阶段,提出了一种改进的遗传算法来求解模型。第二阶段,采用绿色调度启发式策略对机器状态进行优化。最后,通过实例优化验证了模型的可行性和本文求解方法的有效性。
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