使用回归机器学习方法的建筑项目工期和资源限制预测模型

IF 3.6 2区 工程技术 Q1 ENGINEERING, CIVIL Engineering, Construction and Architectural Management Pub Date : 2024-06-25 DOI:10.1108/ecam-06-2023-0582
Gopinath Selvam, Mohan Kamalanandhini, Muthuvel Velpandian, Sheema Shah
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引用次数: 0

摘要

目的 建筑项目极易受到不确定因素的影响,导致时间和成本超支。要使建筑项目达到预期目标,就必须对劳动力和工期进行切合实际的估算。本研究旨在考虑实际的不确定性因素,为建筑项目提供准确的劳动力和工期估算。记录了建筑活动的实际不确定性和暴露条件。数据根据标准准则进行了验证,以去除异常值。预测模型是利用机器学习(ML)方法中的支持向量回归(SVR)建立的。使用广泛采用的回归指标对其性能进行了评估。此外,还利用残差和预测误差的可视化、目标分布转化后的脊回归以及高斯直觉贝叶斯(NB)回归器进行了交叉验证。残差图表明,使用 SVR 建立预测模型是恰当的。工期(DC)和资源限制(RC)预测模型的准确率分别为 80% 和 82%。此外,与高斯 NB 回归器相比,所开发的模型在训练和测试得分方面获得了更好的准确性。研究限制/意义研究人员将利用研究成果估算不确定条件下的工期和劳动力需求,并进一步改进建筑项目管理实践。社会影响通过实施研究成果,建筑项目的延误将会减少,这将极大地确保资源的有效利用和其他经济效益的实现。政策制定者将制定指导方针,开发数据库以收集建设项目的不确定性,并相对估算资源需求。原创性/价值这是首个考虑建设项目的实际不确定性以开发 RC 和 DC 预测模型的研究。所开发的预测模型能以最少的计算时间准确估算工期和劳动力需求。行业从业人员将能够利用所开发的模型准确估算工期和劳动力需求。
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Duration and resource constraint prediction models for construction projects using regression machine learning method

Purpose

The construction projects are highly subjected to uncertainties, which result in overruns in time and cost. Realistic estimates of workforce and duration are imperative for construction projects to attain their intended objectives. The aim of this study is to provide accurate labor and duration estimates for the construction projects, considering actual uncertainties.

Design/methodology/approach

The dataset was formulated from the information collected from 186 construction projects through direct interviews, group discussions and questionnaire methods. The actual uncertainties and exposure conditions of construction activities were recorded. The data were verified with the standard guideline to remove the outliers. The prediction model was developed using support vector regression (SVR), a machine learning (ML) method. The performance was evaluated using the widely adopted regression metrics. Further, the cross validation was made with the visualization of residuals and predicted errors, ridge regression with transformed target distribution and a Gaussian Naive Bayes (NB) regressor.

Findings

The prediction models predicted the duration and labor requirements with the consideration of actual uncertainties. The residual plot indicated the appropriate use of SVR to develop the prediction model. The duration (DC) and resource constraint (RC) prediction models obtained 80 and 82% accuracy, respectively. Besides, the developed model obtained better accuracy for the training and test scores than the Gaussian NB regressor. Further, the range of the explained variance score and R2 was from 0.95 to 0.97, indicating better efficiency compared with other prediction models.

Research limitations/implications

The researchers will utilize the research findings to estimate the duration and labor requirements under uncertain conditions and further improve the construction project management practices.

Practical implications

The research findings will enable industry practitioners to accurately estimate the duration and labor requirements, considering historical uncertain conditions. A precise estimation of resources will ensure the attainment of the intended project outcomes.

Social implications

Delays in construction projects will be reduced by implementing the research findings, which significantly ensures the effective utilization of resources and attainment of other economic benefits. The policymakers will develop a guideline to develop a database to collect the uncertainties of the construction projects and relatively estimate the resource requirements.

Originality/value

This is the first study to consider the actual uncertainties of construction projects to develop RC and DC prediction models. The developed prediction models accurately estimate the duration and labor requirements with minimal computational time. The industry practitioners will be able to accurately estimate the duration and labor requirements using the developed models.

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来源期刊
Engineering, Construction and Architectural Management
Engineering, Construction and Architectural Management Business, Management and Accounting-General Business,Management and Accounting
CiteScore
8.10
自引率
19.50%
发文量
226
期刊介绍: ECAM publishes original peer-reviewed research papers, case studies, technical notes, book reviews, features, discussions and other contemporary articles that advance research and practice in engineering, construction and architectural management. In particular, ECAM seeks to advance integrated design and construction practices, project lifecycle management, and sustainable construction. The journal’s scope covers all aspects of architectural design, design management, construction/project management, engineering management of major infrastructure projects, and the operation and management of constructed facilities. ECAM also addresses the technological, process, economic/business, environmental/sustainability, political, and social/human developments that influence the construction project delivery process. ECAM strives to establish strong theoretical and empirical debates in the above areas of engineering, architecture, and construction research. Papers should be heavily integrated with the existing and current body of knowledge within the field and develop explicit and novel contributions. Acknowledging the global character of the field, we welcome papers on regional studies but encourage authors to position the work within the broader international context by reviewing and comparing findings from their regional study with studies conducted in other regions or countries whenever possible.
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