TY - CONF TI - Completion assessment for multiple production system using Markov chain analysis C1 - Singapore, Singapore C3 - Proceedings of the 34th Annual Conference of the International Group for Lean Construction (IGLC 34) SP - 1737 EP - 1748 PY - 2026 DO - 10.24928/2026/0311 AU - Samaniego, Omar A. AD - Engr., Master, NEC-ECC PMA, VDC, PMP®, PMI-RMP®, PMO Solutions Director and Risk Management main consultant, author, and researcher at Pontificia Universidad Católica del Perú - Instituto para la Calidad, comercial@pmo-solutions.com, osamaniego@pucp.pe, orcid.org/0000-0003-4352-2610 ED - Hamzeh, Farook ED - Poshdar, Mani ED - Garcia-Lopez,, Nelly P. AB - This research introduces a novel method for predicting project completion in construction by simulating and analyzing historical progress performance data through Markov Chain Analysis (MCA). This approach diverges from conventional regression analysis and quantitative risk analysis (QRA) via Monte Carlo simulation, which primarily emphasize modeling activity durations. Instead, the study evaluates progress by focusing on deliverables rather than activities, defining completion states instead of durations. The mutually exclusive states utilized are not-started (NS), work-in-process (WIP), and complete (OK). The method enables the application of MCA to determine when all deliverables achieve the absorbing state of completion, integrating confidence intervals and data discrimination criteria, while exhibiting satisfactory consistency in forecasting completion ranges. KW - WIP KW - completion KW - Markov chain analysis KW - machine learning. PB - T2 - Proceedings of the 34th Annual Conference of the International Group for Lean Construction (IGLC 34) DA - 2026/06/22 CY - Singapore, Singapore L1 - http://iglc.net/Papers/Details/2587/pdf L2 - http://iglc.net/Papers/Details/2587 N1 - Export Date: 19 June 2026 DB - IGLC.net DP - IGLC LA - English ER -