Hybrid fuzzy Monte Carlo agent-based modeling of workforce motivation and performance in construction

Mohammad Raoufi, A. Fayek
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引用次数: 1

Abstract

Purpose This paper aims to cover the development of a methodology for hybrid fuzzy Monte Carlo agent-based simulation (FMCABS) and its implementation on a parametric study of construction crew performance. Design/methodology/approach The developed methodology uses fuzzy logic, Monte Carlo simulation and agent-based modeling to simulate the behavior of construction crews and predict their performance. Both random and subjective uncertainties are considered in model variables. Findings The developed methodology was implemented on a real case involving the parametric study of construction crew performance to assess its applicability and suitability for this context. Research limitations/implications This parametric study demonstrates a practical application for the hybrid FMCABS methodology. Though findings from this study are limited to the context of construction crew motivation and performance, the applicability of the developed methodology extends beyond the construction domain. Practical implications This paper will help construction practitioners to predict and improve crew performance by taking into account both random and subjective uncertainties. Social implications This paper will advance construction modeling by allowing for the assessment of social interactions among crews and their effects on crew performance. Originality/value The developed hybrid FMCABS methodology represents an original contribution, as it allows agent-based models to simultaneously process all types of variables (i.e. deterministic, random and subjective) in the same simulation experiment while accounting for interactions among different agents. In addition, the developed methodology is implemented in a novel and extensive parametric study of construction crew performance.
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建筑业劳动力激励与绩效的混合模糊蒙特卡罗模型
本文旨在介绍一种基于混合模糊蒙特卡罗agent的仿真(FMCABS)方法的发展及其在施工人员绩效参数化研究中的实现。设计/方法/方法开发的方法使用模糊逻辑、蒙特卡罗模拟和基于主体的建模来模拟施工人员的行为并预测他们的表现。在模型变量中考虑了随机不确定性和主观不确定性。开发的方法是在一个真实案例中实施的,该案例涉及施工人员绩效的参数化研究,以评估其在此背景下的适用性和适用性。本参数化研究展示了混合FMCABS方法的实际应用。虽然本研究的发现仅限于施工人员的动机和绩效,但所开发的方法的适用性超出了施工领域。本文将帮助建筑从业者通过考虑随机和主观不确定性来预测和提高船员的绩效。社会意义本文将通过允许评估船员之间的社会互动及其对船员绩效的影响来推进建筑建模。开发的混合FMCABS方法代表了一项原创贡献,因为它允许基于代理的模型在同一模拟实验中同时处理所有类型的变量(即确定性,随机和主观),同时考虑不同代理之间的相互作用。此外,开发的方法在施工人员绩效的新颖和广泛的参数研究中得到了实施。
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