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Automating fabrication sequencing for industrial construction

机译:自动化工业建筑的制造测序

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Purpose Industrial construction projects are heavily dependent on pre-fabrication of piping components. Unlike traditional manufacturing, many pipe spools have a unique design and need to be custom fabricated due to the one-of-a-kind characteristic of each industrial project. This is reflected in the fact that fabrication sequences vary greatly among pipe spools. Planning these sequences has considerable impact on the fabrication performance. However, it is currently mostly done in the form of human manual input. Personal experience and judgment are the major grounds on which sequencing decisions are based. Given the enormous number of pipe spools and the fast-tracking nature of industrial projects, the efficiency and quality of such decisions cannot be guaranteed. Automating this decision-making process has the potential for overall performance enhancement, but has not yet been sufficiently investigated. Method We explore two different problem solving techniques, mainly artificial intelligence (AI) planning and dynamic programming (DP). A number of experiments have been conducted to evaluate their effectiveness. Results & Discussion: The results show that AI-planning-a sophisticate planning technique- has difficulty parsing fabrication logic that is prerequisite for AI-planners to result in a solution. DP, on the other hand, shows greater flexibility in incorporating this logic and a higher efficiency of discovering the optimal sequence. Future research will be aimed at incorporating the DP-algorithm with a discrete event simulation model so that fabrication sequences can be dynamically generated and adjusted to address changing project conditions.
机译:目的的工业建筑项目严重依赖于管道部件的预制作。与传统制造不同,许多管道线轴具有独特的设计,并且由于每个工业项目的唯一特征,因此需要定制。这反映在使制造序列在管道轴之间变化很大的事实中。规划这些序列对制造性能具有相当大的影响。但是,它目前主要以人工手动输入的形式完成。个人经验和判断是排序决策的主要原因。鉴于巨大数量的管道线轴和工业项目的快速跟踪性质,不能保证这种决策的效率和质量。自动化该决策过程具有整体性能增强的潜力,但尚未充分调查。方法我们探讨了两个不同的问题解决技术,主要是人工智能(AI)规划和动态编程(DP)。已经进行了许多实验以评估其有效性。结果与讨论:结果表明,AI规划 - 复杂规划技术 - 难以解析制造逻辑,这是AI策规范的前提条件,以导致解决方案。另一方面,DP在结合这种逻辑和发现最佳序列的更高效率方面表现出更大的灵活性。未来的研究旨在利用离散事件仿真模型掺入DP算法,以便可以动态地生成和调整制造序列以解决更改的项目条件。

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