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A prediction-based online soft scheduling algorithm for the real-world steelmaking-continuous casting production

机译:基于预测的在线炼钢-连铸生产在线软调度算法

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Optimal scheduling of steelmaking production contributes to boosting productivity, reducing costs and achieving sustainable manufacturing for an integrated steel company. However, the optimal schedule is always difficult to implement in the real-world production system, because its optimality and feasibility are affected by various uncertain factors. In this paper, we study an uncertain scheduling problem arising from the steelmaking-continuous casting (SCC) production process which considers the cost and penalty objectives. To solve this problem, we propose a prediction-based online soft scheduling (OLSS) algorithm which belongs to predictive-reactive approach. In the proposed algorithm, a surrogate model named Gaussian process regression (GPR) is used to predict the characteristic index, slack ratio, which is able to trade off the objectives between the cost and the penalty of cast-breaks. When new batches are released to the shop floor, the soft schedule including critical decisions and characteristic indexes is determined by a dynamic optimization algorithm based on the predicted value. In the reactive phase, a heuristic method is presented to determine other non-critical decisions. Finally, the computational results show that the OLSS outperforms other algorithms in penalty objective, and obtains approximate effects in cost objective. (C) 2016 Elsevier B.V. All rights reserved.
机译:炼钢生产的最佳计划有助于提高生产率,降低成本并为一家综合钢铁公司实现可持续制造。然而,由于在各种不确定性因素的影响下,最优时间表在现实世界的生产系统中始终难以实现。在本文中,我们研究了考虑成本和惩罚目标的炼钢连铸(SCC)生产过程中产生的不确定调度问题。为了解决这个问题,我们提出了一种基于预测的在线软调度(OLSS)算法,属于预测-反应方法。在所提出的算法中,使用了一个称为高斯过程回归(GPR)的替代模型来预测特征指标松弛率,该模型能够在成本和铸件破坏惩罚之间权衡目标。当新批次发布到车间时,基于关键值的动态优化算法将确定包括关键决策和特征指标在内的软计划。在反应阶段,提出了一种启发式方法来确定其他非关键性决策。最后,计算结果表明,OLSS在惩罚目标上优于其他算法,并在成本目标上获得了近似的效果。 (C)2016 Elsevier B.V.保留所有权利。

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