Measurement of operator quality performance has been challenging in the
construction fabrication industry. Among various causes, the learning effect is
a significant factor, which needs to be incorporated in achieving a reliable
operator quality performance analysis. This research aims to enhance a
previously developed operator quality performance measurement approach by
incorporating the learning effect (i.e., work experience). To achieve this
goal, the Plateau learning model is selected to quantitatively represent the
relationship between quality performance and work experience through a
beta-binomial regression approach. Based on this relationship, an informative
prior determination approach, which incorporates operator work experience
information, is developed to enhance the previous Bayesian-based operator
quality performance measurement. Academically, this research provides a
systematic approach to derive Bayesian informative priors through integrating
multi-source information. Practically, the proposed approach reliably measures
operator quality performance in fabrication quality control processes.Comment: 8 pages, 5 figures, 2 tables, i3CE 201