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Implementation of Process-Based and Data-Driven Models for Early Prediction of Construction Time

机译:实现基于过程的基于流程和数据驱动模型,用于提前预测施工时间

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摘要

The need of respecting the construction time as one of the construction contract elements points out that early prediction of construction time is of crucial importance for the construction project participants' business. Thus, having a model for early prediction of construction time is useful not only for the participants involved in the construction contracting process, but also for other participants in the construction project realization. Regarding that, this paper aims to present a hybrid method for predicting construction time in the early project phase, which is a combination of process-based and data-driven models. Five hybrid models have been developed, and the most accurate one was the BTC-GRNN model, which uses Bromilow's time-cost (BTC) model as a process-based model and the general regression neural network (GRNN) as a data-driven model. For evaluating the quality of the models, the 10-fold cross-validation method has been used. The mean absolute percentage error (MAPE) of the BTC-GRNN is 3.34% and the coefficient of determination R-2, which reflects the global fit of the model, is 93.17%. These results show a drastic improvement of the accuracy in comparison to the model when only data-driven model (GRNN) has been used, where MAPE was 31.8% and R-2 was 75.64%. This model can be useful to the investors, the contractors, the project managers, and other project participants for construction time prediction in the early project phases, especially in the phases of bidding and contracting, when many factors, that can determine the construction project realization, are unknown.
机译:作为施工时间之一的施工时间的需要指出,建筑时间的早期预测对建设项目参与者的业务至关重要。因此,具有用于早期预测施工时间的模型,不仅适用于涉及建筑承包过程的参与者,而且对建筑项目实现的其他参与者来说是有用的。关于此,本文旨在提出一种用于预测早期项目阶段的施工时间的混合方法,这是基于过程和数据驱动模型的组合。已经开发了五种混合模型,最准确的是BTC-GRNN模型,它使用BROMILOW的时间 - 成本(BTC)模型作为基于过程的模型和作为数据驱动模型的一般回归神经网络(GRNN) 。为了评估模型的质量,已经使用了10倍的交叉验证方法。 BTC-GRNN的平均绝对百分比误差(MAPE)为3.34%,而且测定系数R-2,反映了该模型的全球拟合,是93.17%。这些结果表明,与仅使用数据驱动模型(GRNN)的模型相比,这些结果的精度急剧提高,其中MAPE为31.8%,R-2为75.64%。该模型对投资者,承包商,项目经理和其他项目参与者对早期项目阶段的施工时间预测有用,特别是在竞标和承包的阶段,当许多因素中,可以确定建设项目实现,不明。

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  • 来源
    《Advances in civil engineering》 |2019年第2期|7405863.1-7405863.12|共12页
  • 作者单位

    Ss Cyril & Methodius Univ Fac Civil Engn Partizanski Odredi 24 Skopje 1000 Macedonia;

    Ss Cyril & Methodius Univ Fac Civil Engn Partizanski Odredi 24 Skopje 1000 Macedonia;

    Univ Rijeka Fac Civil Engn Radmile Matejcic 3 Rijeka 51000 Croatia;

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