建筑改造项目的建模工期

Haruna Sa'idu Lawal, H. Ahmadu, M. Abdullahi, M. A. Yamusa, Mustapha Abdulrazaq
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引用次数: 0

摘要

目的本研究旨在建立一个包含范围因素和非范围因素的建筑翻新工期预测模型。设计/方法/方法该研究使用问卷来获得与已确定的项目范围因素有关的基本信息,以及与非范围因素对建筑翻新项目工期的影响有关的信息。该研究从建筑公司检索了121份关于高等教育信托基金(TETFund)建筑翻新项目的完整问卷。然后使用人工神经网络使用90%的数据来开发模型,而使用剩余10%的数据来验证模型的平均绝对百分比误差。发现建立了两个人工神经网络模型——多层感知器(MLP)和径向基函数(RBF)模型。模型的准确率分别为86%和80%。所开发的模型的预测与实际持续时间估计没有统计学差异,误差幅度小于20%。此外,研究发现MLP模型比RBF模型更准确。研究局限性/含义所开发的模型仅适用于适合用于开发模型的数据的特征和性质的项目。因此,模型只能预测建筑翻新项目的持续时间。实际含义开发的模型有望成为现实估计建筑翻新项目工期的工具,从而帮助建筑项目经理有效规划和管理。社会含义开发的模式有望成为现实评估建筑翻新项目持续时间的工具,因此,帮助建设项目经理对其进行有效的规划和管理;它还帮助客户有效地衡量项目工期,帮助承包商在投标阶段准确估计工期。独创性/价值该研究提出了将范围和非范围因素结合起来预测建筑翻新项目持续时间的模型,以确保更现实的预测。
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Modeling duration of building renovation projects
Purpose This study aims to develop a building renovation duration prediction model incorporating both scope and non-scope factors. Design/methodology/approach The study used a questionnaire to obtain basic information relating to identified project scope factors as well as information relating to the impact of the non-scope factors on the duration of building renovation projects. The study retrieved 121 completed questionnaires from construction firms on tertiary education trust fund (TETFund) building renovation projects. Artificial neural network was then used to develop the model using 90% of the data, while mean absolute percentage error was used to validate the model using the remaining 10% of the data. Findings Two artificial neural network models were developed – a multilayer perceptron (MLP) and a radial basis function (RBF) model. The accuracy of the models was 86% and 80%, respectively. The developed models’ predictions were not statistically different from those of actual duration estimates with less than 20% error margin. Also, the study found that MLP models are more accurate than RBF models. Research limitations/implications The developed models are only applicable to projects that suit the characteristics and nature of the data used to develop the models. Hence, models can only predict the duration of building renovation projects. Practical implications The developed models are expected to serve as a tool for realistic estimation of the duration of building renovation projects and thus, help construction project managers to effectively plan and manage it. Social implications The developed models are expected to serve as a tool for realistic estimation of the duration of building renovation projects and thus, help construction project managers to effectively plan and manage it; it also helps clients to effectively benchmark projects duration and contractors to accurately estimate duration at tendering stage. Originality/value The study presents models that combine both scope and non-scope factors in predicting the duration of building renovation projects so as to ensure more realistic predictions.
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来源期刊
CiteScore
3.70
自引率
0.00%
发文量
17
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