Assessing the effectiveness of static heuristics for scheduling lumber orders in the sawmilling production process

Francisco P Vergara, Cristian D. Palma, John D. Nelson
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Abstract

Although optimization models can be used to plan the production process, in most cases static heuristics, such as earliest due date (E), longest processing time (L), and shortest processing time (S), are used because of their simplicity. This study aims to analyze the production cost of the static heuristics and to determine how this cost relates to the size of the production orders in the sawmilling industry. We set a planning problem with different orders and due dates and solved it using two cost-minimization models to compare their solutions. The first was a planning model (PL) where orders were split up into products demand by period, and the second, a planning scheduling (PS) where the sequence of processing orders based on static heuristics was assumed as known. In the latter, the minimum production cost for each static heuristic was found. In both models, the same resource constraints were assumed. The costs showed no significant changes based on order sizes. However, 0,5 % of orders were delayed using PS-E, and 17 % of orders were delayed using PL. PL was an efficient solution method when changing the orders´ size and when looking for the best static heuristic to process the orders. However, PS-E showed the ability to reduce the backlog close to zero while the PL backlog ratio was 17 %. No penalties were applied to backlogs due to their subjective nature; however, when shortages occurred, the demand was unmet or backlogged with substantial costs. Thus, in case the proposed method is adopted using a conservative backlog cost, a sawmill producing under the cut-to-order environment that produces 300000 m3 /year would reduce backlogged orders by 51000 m3. If the holding lumber cost is 2 $/m3, annual savings would be $408000.
评估静态启发式方法在锯木生产过程中安排木材订单的有效性
虽然可以使用优化模型来规划生产流程,但在大多数情况下,静态启发式方法,如最早到期日 (E)、最长加工时间 (L) 和最短加工时间 (S) 等,因其简单易用而被使用。本研究旨在分析静态启发式方法的生产成本,并确定该成本与锯木行业生产订单规模的关系。我们设置了一个具有不同订单和到期日期的计划问题,并使用两种成本最小化模型进行求解,以比较它们的解决方案。第一种是计划模型 (PL),将订单按时期分割成产品需求;第二种是计划调度 (PS),假定已知基于静态启发式的订单处理顺序。在后者中,每种静态启发式都能找到最低生产成本。在这两个模型中,都假设了相同的资源限制。根据订单规模,成本没有明显变化。但是,使用 PS-E 时,0.5% 的订单被延迟,而使用 PL 时,17% 的订单被延迟。在改变订单规模和寻找最佳静态启发式来处理订单时,PL 是一种高效的解决方案。然而,PS-E 显示出了将积压减少到接近零的能力,而 PL 的积压率为 17%。由于积压订单的主观性,没有对积压订单进行惩罚;但是,当出现短缺时,需求无法满足或积压会产生大量成本。因此,如果采用所建议的方法,并使用保守的积压成本,年产量为 300000 立方米、按订单生产的锯木厂将减少 51000 立方米的积压订单。如果持有木材成本为 2 美元/立方米,则每年可节省 408000 美元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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