First Complete Digital Drilling Package Deployment For Risks Reduction And Performance Optimization: Africa Case History

Author:

Ferrara Paolo1,Dal Forno Luca1,Magni Gianluca1,Santoro Domenico1,Sanasi Carla1,Mutidieri Luigi1

Affiliation:

1. Eni

Abstract

Abstract In an era of reduced profit margin and high market uncertainty, more than ever it is important to meet operational excellence as a key factor for business sustainability. This is common to most technical applications, but it is particularly true for the drilling operations, where considerable investments and associated risks are involved. During last years, as part of its digital transformation process, the operator has equipped itself with several digital tools for the diagnosis and the monitoring of drilling and completion operations. Goals and reached benefits can be summarized in risk reduction, operational efficiency and performance optimization. Based on an already wide case history started in 2019, a Digital Drilling Package was developed for operations support, from the design to the construction phase. Three main tools are now available to be applied to the most complex wells, either stand-alone or in parallel, covering Non-Productive Time (NPT) prediction, performance advanced analytics and drilling operations real time simulations. This last simulation tool has been deployed for the first time in 2021 on some wells in Africa and is now being included in the engineering and operation workflows. Attacking operational NPT and invisible lost time with the aim to increase safety and to reach the technical limit is not only a matter of processing tools. It requires a deep integration among headquarters, geographical units and field locations, with the definition of a strong data management infrastructure. This paper describes operator’s experience both on-site and in office, showing how the portability and integration of big data systems, suitable data lake architectures and human factor synergies can create effectiveness at all levels. An Africa field case history will be reported to show how predictive and data analytics modelling and tools interact. In addition, the way in which these tools have been managed to support optimum decision-making processes will be also highlighted. Next development steps will target an even higher level of integration of all available digital tools in order to have a single diagnostic approach based on univocal dashboards and in-house data server infrastructures.

Publisher

SPE

Reference5 articles.

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