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The APPEA Journal The APPEA Journal Society
Journal of Australian Energy Producers
RESEARCH ARTICLE (Non peer reviewed)

Achieving data-driven efficiencies with integrated planning analytics

Elizeu Boto
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Accenture.

The APPEA Journal 56(2) 583-583 https://doi.org/10.1071/AJ15089
Published: 2016

Abstract

The logistical challenges of drilling in the Surat and Bowen basins, and the high operational costs allied to an oil price downturn, is forcing the CSG to LNG players in Queensland to reinvent their delivery models.

The concept of a drilling factory has been the holy grail of the oil and gas industry for many years, and many local operators have turned their attention to the lessons learned by the North American shale players. These companies, with virtually no increase in capital costs, were able to improve time to drill, wells per rig and total distance drilled by 50–150% in fewer than five years. This revolution has been achieved not only with the advent of improved drilling technology but also the use of data-driven productivity and automation.

Leveraging the experiences of North American companies, local operators are embracing the use of analytics to boost operational efficiencies and improve the safety of their operations.

APLNG, for example, has used analytics to integrate multiple aspects of planning and operations to optimise field development for future phases of the project. As the volume of wells continues to increase, more supply chain related issues will require mitigation.

Analytics solutions can assist not only in the isolation of wellbore-related non-productive time issues and reduce drilling cycle times for individual wells, but also to use the best tools and techniques in only the best parts of the field.

Elizeu Boto is a Senior Manager in Accenture Technology Consulting. In this role he supports business development opportunities and leads delivery of complex programs for energy clients in Australia in areas such as integrated planning, production forecasting and economics. Elizeu is certified as a PMP (project management professional) and PMI-RMP (risk management professional). He has a master’s degree in management from UFBA (Universidade Federal da Bahia), a MBA from FGV (Fundação Getulio Vargas), and a bachelor’s degree in information systems from UCSal, all renowned schools in Brazil.


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