学习托盘在拉控作业中的应用

A. Mehrsai, B. Scholz-Reiter
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引用次数: 4

摘要

本文从自主性范式出发,研究了学习托盘的概念;在控制作业车间/开车间系统中。为了实现托盘的学习能力,可以采用几种优势和方法。其中包括Conwip系统中闭环的特权,以及进化智能在激励学习中的应用。具体来说,遗传算法(GA)是一种全局搜索方法,但它的一些特征可以用来在分散的方法中产生新的替代方案并避免局部陷阱。此外,利用模糊推理系统对实时信息的模糊性、处理顺序和时间的不确定性,区分各站点和整个系统的动态。这里显示,学习托盘(Lpallets)在某些标准方面呈现出更好的记录,例如,完工时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards learning pallets applied in pull control job-open shop problem
The current paper studies the concept of learning pallets following the autonomy paradigm; in a Conwip control job-shop/ open-shop system. To realize learning capability for pallets several advantages and methodologies can be employed. Among them are the privileges of closed-loops in Conwip system as well as application of evolutionary intelligence for inspiring learning. Specifically, some features of genetic algorithm (GA) can be used to produce new alternatives and avoid local traps in a decentralized approach, though the GA is a global search method. In addition, fuzzy inference system is employed to distinguish the dynamisms of each station as well as of the entire system, concerning vagueness in real time information, and uncertainty in processing sequence and times. It is shown here that learning pallets (Lpallets) are presenting better records in terms of some criteria, e.g., makespan.
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