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Emmitt, S, Pasquire, C and Mertia, B (2012) Is good enough "making do"?: An investigation of inappropriate processing in a small design and build company. Construction Innovation, 12(03), 369-83.

Hughes, D, Williams, T and Ren, Z (2012) Differing perspectives on collaboration in construction. Construction Innovation, 12(03), 355-68.

Jin, X-H, Zhang, G and Yang, R J (2012) Factor analysis of partners' commitment to risk management in public-private partnership projects. Construction Innovation, 12(03), 297-316.

Moselhi, O and Khan, Z (2012) Significance ranking of parameters impacting construction labour productivity. Construction Innovation, 12(03), 272-96.

  • Type: Journal Article
  • Keywords: fuzzy logic; labour productivity; neural network; regression; variable selection
  • ISBN/ISSN: 1471-4175
  • URL: https://doi.org/10.1108/14714171211244541
  • Abstract:
    Purpose - Construction labour productivity is often influenced by variations in work conditions and management effectiveness. It is substantially important to understand the nature and extent to which individual parameters affect productivity. The purpose of this paper is to focus on providing insight on parameters that affect daily job-site labour productivity by investigating their relative significance and influence on work output. Design/methodology/approach - The methodology is based on the illustration and use of three different data analysis techniques to rank parameters that affect a certain process. These techniques include Fuzzy Subtractive Clustering, Neural Network Modelling and Stepwise Variable Selection Procedure. The first one belongs to inferential statistics, while the other two are artificial intelligence based techniques. The collection of field information, spanning over a time period of ten months, comprised of daily real time observations of job-site operations, work progress information collected from project managers and supervisors by using customized forms, and daily weather condition recorded through internet sources. Nine parameters are considered in the study presented in this paper. The data on these parameters is examined and their relative influence and contribution in productivity estimates are assessed. The approach was to consider a limited set of parameters relating to daily job-site productivity. The methodology presented in this paper provides insight on the relative impact of parameters, affecting labour productivity on short term or daily basis. The results based on each of the three methods are analyzed and transformed into a final ranking of parameters. Findings - The three most important parameters are identified in the same order by the fuzzy logic and neural networks methods. Regression analysis, however, provided somewhat different results. Originality/value - This research investigates the contribution of a set of parameters towards the variations in daily job-site labour productivity. For practitioners such as site engineers, this is of practical importance for making daily work plans. On the other hand, the structured approach presented to perform significance ranking of parameters relevant to an engineering process, may also be of interest to other researchers and practitioners.

Park, J, Park, J, Kim, J and Kim, J (2012) Building information modelling based energy performance assessment system: An assessment of the Energy Performance Index in Korea. Construction Innovation, 12(03), 335-54.

Renukappa, S, Egbu, C, Akintoye, A and Goulding, J (2012) A critical reflection on sustainability within the UK industrial sectors. Construction Innovation, 12(03), 317-34.

Shen, G Q and Yu, A T W (2012) Value management: recent developments and way forward. Construction Innovation, 12(03), 264-71.