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Reference Class Forecasting and Machine Learning for Improved Offshore Oil and Gas Megaproject Planning: Methods and Application

Ananth Natarajan

2022Project Management Journal27 citationsDOI

Abstract

This article develops and describes rigorous oil and gas project forecasting methods. First, it builds a theoretical foundation by mapping megaproject performance literature to these projects. Second, it draws on heuristics and biases literature, using a questionnaire to demonstrate forecasting-related biases and principal-agent issues among industry project professionals. Third, it uses methodically collected project performance data to demonstrate that overrun distributions are non-normal and fat-tailed. Fourth, reference-class forecasting is demonstrated for cost and schedule uplifts. Finally, a predictive approach using machine learning (ML) considers project-specific factors to forecast the most likely cost and schedule overruns in a project.

Topics & Concepts

MegaprojectScheduleHeuristicsClass (philosophy)Operations researchPrincipal (computer security)Computer scienceProject planningProject managementEngineeringArtificial intelligenceSystems engineeringOperating systemReservoir Engineering and Simulation MethodsConstruction Project Management and PerformanceRisk and Safety Analysis
Reference Class Forecasting and Machine Learning for Improved Offshore Oil and Gas Megaproject Planning: Methods and Application | Litcius