非现场施工项目生产周期时间的数据分析

Angat Pal Singh Bhatia, SangHyeok Han, O. Moselhi, Z. Lei, Claudio Raimondi
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引用次数: 3

摘要

非现场施工在建筑业中得到了广泛的应用。该过程提高了生产力,从而缩短了项目进度并降低了预算。几十年来,非现场建筑行业随着管理和技术的不断发展而不断发展。然而,非现场施工公司仍然面临各种挑战,例如准确获取生产率指标,这有助于制定生产计划。这些挑战是由于缺乏对工艺本身的理解,因为墙板设计规范的高度变化以及每个工作站的周期时间的高度变化。为了解决这个问题,需要在非现场施工的背景下收集生产力数据。本文以艾伯塔省一家非现场建筑工厂为研究对象,进行了时间研究。根据收集的数据和产品设计规范,建立了代表实际工位时间的多元线性回归模型。装配站实际采集工期与建模工期的对比表明,其精度在80% ~ 99%之间。在不久的将来,研究结果将用于模拟,以预测工厂生产和优化资源的利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Analytics of Production Cycle Time for Offsite Construction Projects
Offsite construction has been widely used in the construction industry. The process improves productivity that leads to shortened project schedule and lower budget. Over the decades, offsite construction industry has continuously evolved with the aspects of management and technology. However, offsite construction companies still have various challenges such as accurately obtaining productivity metrics, which helps in production planning. These challenges result from lack of understanding the process itself because of high variation of wall panel design specifications along with high variability of cycle time at each work station. To solve the problem, productivity data needs to be collected in context to offsite construction. In this paper, a time study was conducted in one of Alberta’s-based offsite construction factory. From the collected data and product design specifications, multiple linear regression models were developed to represent the actual work station time. The comparison between actual collected duration and modeled duration for assembly station demonstrate its accuracy that ranges from 80 -99%. In the near future, findings will be used for simulation to forecast factory production and optimize the utilization of the resources.
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