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A heuristic algorithm for master production scheduling problem with controllable processing times and scenario-based demands

机译:具有可控处理时间和基于场景需求的主生产计划问题的启发式算法

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摘要

Master production scheduling (MPS) is widely used by manufacturing industries in order to handle the production scheduling decisions in the production planning hierarchy. The classical approach to MPS assumes infinite capacity, fixed (i.e. non-controllable) processing times and a single pre-determined scenario for the demand forecasts. However, the deterministic optimisation approaches are sometimes not suitable for addressing the real-world problems with high uncertainty and flexibility. Accordingly, in this paper, we propose a new practical model for designing an optimal MPS for the environments in which processing times may be controllable by allocating resources such as facilities, energy or manpower. Due to the NP-hardness of our model, an efficient heuristic algorithm using local search technique and theory of constraints is developed and analysed. The computational results especially for large-sized test problems show that the average optimality gap of proposed algorithm is four times lower than that of exact solution using GAMS while it consumes also significantly smaller run times. Also, the analysis of computational results confirms that considering the controllable processing times may improve the solution space and help to more efficiently utilise the available resources. According to the model structure and performance of the algorithm, it may be proposed for solving large and complex real-world problems particularly the machining and steel industries.
机译:主生产计划(MPS)被制造业广泛使用,以便处理生产计划层次结构中的生产计划决策。 MPS的经典方法假设容量无限,固定(即不可控制)的处理时间以及需求预测的单个预定方案。但是,确定性优化方法有时不适合解决具有高度不确定性和灵活性的现实问题。因此,在本文中,我们提出了一种新的实用模型,用于为可能通过分配资源(例如设施,能源或人力)来控制处理时间的环境设计最佳的MPS。由于我们模型的NP难点,使用局部搜索技术和约束理论开发并分析了一种有效的启发式算法。计算结果,特别是针对大型测试问题的计算结果表明,所提出算法的平均最优间隙比使用GAMS的精确解决方案的平均最优间隙低四倍,同时它消耗的运行时间也大大缩短。此外,对计算结果的分析还确认,考虑可控的处理时间可以改善解决方案空间,并有助于更有效地利用可用资源。根据算法的模型结构和性能,可以提出解决大型和复杂的现实世界问题的方法,尤其是机械和钢铁行业。

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