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Context Adaptation of Fuzzy Inference System-Based Construction Labor Productivity Models

机译:基于模糊推理系统的建筑劳动生产率模型的情境自适应

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摘要

Construction labor productivity (CLP) is one of the most studied areas in the construction research field, and several context-specific predictive models have been developed. However, CLP model development remains a challenge, as the complex impact of multiple subjective and objective influencing variables have to be examined in various project contexts while dealing with limited data availability. On the other hand, lack of a framework for adapting existing or original models from one context to other contexts limits the possibility of reusing existing models. Such challenges are addressed in this paper through the development of a context adaptation framework. The framework is used to transfer the knowledge represented in fuzzy inference (FIS) based CLP models from one context to another, by using linear and nonlinear evolutionary based transformation of the membership functions combined with sensitivity analysis of fuzzy operators and defuzzification methods. Using four context-specific CLP models developed for concreting activity under industrial, warehouse, high-rise, and institutional building project contexts, the framework was implemented, and the prediction capability of the adapted models was evaluated based on their prediction similarity with the original models. The results showed that linearly adapted CLP models for industrial and institutional contexts and nonlinearly adapted CLP models for warehouse and high-rise contexts provide a similar prediction capability with the original models. The proposed context adaptation framework and findings from this paper address the limitations in past context adaptation research by examining a practical context-sensitive application problem and further examining the role of fuzzy operators and defuzzification methods. The findings assist researchers and industry practitioners to take full advantage of existing FIS-based models in the study of new contexts, for which data availability might be limited.
机译:建筑劳动生产率(CLP)是建筑研究领域中研究最多的领域之一,并且已经开发了几种特定于上下文的预测模型。但是,CLP模型开发仍然是一个挑战,因为必须在各种项目环境中检查多个主观和客观影响变量的复杂影响,同时处理有限的数据可用性。另一方面,缺乏将现有模型或原始模型从一个上下文适应到其他上下文的框架,限制了重用现有模型的可能性。本文通过开发上下文适应框架解决了这些挑战。通过使用基于线性和非线性演化的隶属函数变换,结合模糊算子的灵敏度分析和去模糊化方法,该框架可用于将基于模糊推理(FIS)的CLP模型中表示的知识从一个上下文转移到另一个上下文。使用为工业,仓库,高层和机构建筑项目环境下的具体活动开发的四个特定于上下文的CLP模型,实施了该框架,并根据与原始模型的预测相似性评估了适应模型的预测能力。结果表明,针对工业和机构环境的线性适应CLP模型以及针对仓库和高层环境的非线性适应CLP模型提供了与原始模型相似的预测能力。本文提出的上下文适应框架和研究结果通过检查实际的上下文相关应用问题,并进一步研究了模糊算子和去模糊方法的作用,解决了过去上下文适应研究的局限性。这些发现有助于研究人员和行业从业人员在新环境的研究中充分利用现有的基于FIS的模型,因为对于这种情况,数据的可用性可能会受到限制。

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