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Contractor Process Improvement for Enhancing Construction Productivity

机译:改善承包商流程以提高建筑生产率

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This paper presents a regression model that relates job site productivity to process improvement initiatives (PIIs) executed both before and during construction. Applied during early project stages, this model helps industry practitioners to predict the expected value of labor productivity based on certain inputs related to preconstruction planning and construction execution. The model demonstrates the strong relationship of project performance to a variety of PIIs including design completeness, definition of a project vision statement, testing oversight, and project manager experience and dedication. The correlational research methodology targeted 75 projects representing approximately $274.53 million in civil construction. The data collection effort considered 45 PIIs (independent variables) using quantitative and qualitative measures. The modeling technique involved the use of multiple linear regression, a method that exploits available data from multiple, independent sources to focus on specific outcomes. The model was developed directly from contractor specific information and subjected to rigorous statistical analysis. The model provides project managers as front line industry practitioners with a deliberate yet practical approach to project management and productivity enhancement. The modeling results include verification analysis and a discussion of the model's usefulness and limitations.
机译:本文提出了一种回归模型,该模型将作业现场的生产率与施工前和施工中执行的过程改进计划(PII)相关联。在项目的早期阶段应用此模型,该模型可帮助行业从业人员根据与施工前规划和施工执行有关的某些输入来预测劳动生产率的期望值。该模型展示了项目绩效与各种PII的紧密关系,包括设计完整性,项目愿景声明的定义,测试监督以及项目经理的经验和奉献精神。相关研究方法以75个项目为目标,这些项目的土建费用约为2.7453亿美元。数据收集工作使用定量和定性方法考虑了45个PII(独立变量)。建模技术涉及使用多元线性回归,该方法利用来自多个独立来源的可用数据来关注特定结果。该模型是直接从承包商的特定信息中开发的,并经过了严格的统计分析。该模型为作为前线行业从业人员的项目经理提供了一种刻意而实用的方法来进行项目管理和提高生产率。建模结果包括验证分析以及对模型的有用性和局限性的讨论。

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