{"title":"随机剥皮过程的两阶段模式生成和生产计划程序","authors":"Tolga Kudret Karaca, Funda Samanlioglu, Ayca Altay","doi":"10.1155/2023/9918022","DOIUrl":null,"url":null,"abstract":"The stochastic skiving stock problem (SSP), a relatively new combinatorial optimization problem, is considered in this paper. The conventional SSP seeks to determine the optimum structure that skives small pieces of different sizes side by side to form as many large items (products) as possible that meet a desired width. This study studies a multiproduct case for the SSP under uncertain demand and waste rate, including products of different widths. This stochastic version of the SSP considers a random demand for each product and a random waste rate during production. A two-stage stochastic programming approach with a recourse action is implemented to study this stochastic <math xmlns=\"http://www.w3.org/1998/Math/MathML\" id=\"M1\"> <mi mathvariant=\"script\">N</mi> <mi mathvariant=\"script\">P</mi> </math> -hard problem on a large scale. Furthermore, the problem is solved in two phases. In the first phase, the dragonfly algorithm constructs minimal patterns that serve as an input for the next phase. The second phase performs sample-average approximation, solving the stochastic production problem. Results indicate that the two-phase heuristic approach is highly efficient regarding computational run time and provides robust solutions with an optimality gap of 0.3% for the worst-case scenario. In addition, we also compare the performance of the dragonfly algorithm (DA) to the particle swarm optimization (PSO) for pattern generation. 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引用次数: 0
摘要
本文研究了一类较新的组合优化问题——随机剥落库存问题。传统的SSP寻求确定最佳结构,将不同尺寸的小块并排剥离,形成尽可能多的大项目(产品),以满足所需的宽度。本文研究了需求和废品率不确定情况下SSP的多产品情况,包括不同宽度的产品。这个随机版本的SSP考虑了每个产品的随机需求和生产过程中的随机废品率。采用一种带追索作用的两阶段随机规划方法来研究这类大规模的随机N - P -难问题。此外,该问题的解决分为两个阶段。在第一阶段,蜻蜓算法构建最小的模式,作为下一阶段的输入。第二阶段进行样本平均近似,解决随机生产问题。结果表明,两阶段启发式方法在计算运行时间方面是高效的,并且在最坏情况下提供了具有0.3%最优性差距的鲁棒性解决方案。此外,我们还比较了蜻蜓算法(DA)和粒子群算法(PSO)在模式生成方面的性能。基准测试表明,随着问题的紧密性增加,数据分析产生了更健壮的最小模式集。
A Two-Phase Pattern Generation and Production Planning Procedure for the Stochastic Skiving Process
The stochastic skiving stock problem (SSP), a relatively new combinatorial optimization problem, is considered in this paper. The conventional SSP seeks to determine the optimum structure that skives small pieces of different sizes side by side to form as many large items (products) as possible that meet a desired width. This study studies a multiproduct case for the SSP under uncertain demand and waste rate, including products of different widths. This stochastic version of the SSP considers a random demand for each product and a random waste rate during production. A two-stage stochastic programming approach with a recourse action is implemented to study this stochastic -hard problem on a large scale. Furthermore, the problem is solved in two phases. In the first phase, the dragonfly algorithm constructs minimal patterns that serve as an input for the next phase. The second phase performs sample-average approximation, solving the stochastic production problem. Results indicate that the two-phase heuristic approach is highly efficient regarding computational run time and provides robust solutions with an optimality gap of 0.3% for the worst-case scenario. In addition, we also compare the performance of the dragonfly algorithm (DA) to the particle swarm optimization (PSO) for pattern generation. Benchmarks indicate that the DA produces more robust minimal pattern sets as the tightness of the problem increases.
期刊介绍:
Applied Computational Intelligence and Soft Computing will focus on the disciplines of computer science, engineering, and mathematics. The scope of the journal includes developing applications related to all aspects of natural and social sciences by employing the technologies of computational intelligence and soft computing. The new applications of using computational intelligence and soft computing are still in development. Although computational intelligence and soft computing are established fields, the new applications of using computational intelligence and soft computing can be regarded as an emerging field, which is the focus of this journal.