Measuring and Modeling Labor Productivity Using Historical Data |
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Authors: | Lingguang Song Simaan M. AbouRizk |
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Affiliation: | 1Assistant Professor, Dept. of Engineering Technology, Univ. of Houston, Houston, TX 77204. E-mail: lsong5@uh.edu 2Professor, Dept. of Civil and Environmental Engineering, Univ. of Alberta, Edmonton Alta., Canada T6G 2W2. E-mail: abourizk@ualberta.ca
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Abstract: | Labor productivity is a fundamental piece of information for estimating and scheduling a construction project. The current practice of labor productivity estimation relies primarily on either published productivity data or an individual’s experience. There is a lack of a systematic approach to measuring and estimating labor productivity. Although historical project data hold important predictive productivity information, the lack of a consistent productivity measurement system and the low quality of historical data may prevent a meaningful analysis of labor productivity. In response to these problems, this paper presents an approach to measuring productivity, collecting historical data, and developing productivity models using historical data. This methodology is applied to model steel drafting and fabrication productivities. First, a consistent labor productivity measurement system was defined for steel drafting and shop fabrication activities. Second, a data acquisition system was developed to collect labor productivity data from past and current projects. Finally, the collected productivity data were used to develop labor productivity models using such techniques as artificial neural network and discrete-event simulation. These productivity models were developed and validated using actual data collected from a steel fabrication company. |
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Keywords: | Productivity Measurement Data collection Simulation Neural networks Construction management |
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