Enhancing Drilling Operations and Management Through Digital Ecosystem

Author:

Zhang Jing1,He Xusheng2,Dai Yong3,Wang Jinlu4,Zhu Jun4

Affiliation:

1. Sichuan Changning Natural Gas Development Co.,Ltd, Chengdu, China

2. PetroChina Southwest Oil & Gas Exploration, Chengdu, China

3. Engineering Technology Research Institution, Xinjiang, China

4. Vertechs Group, Chengdu, China

Abstract

Abstract The digitalization of the drilling process has revolutionized the oil and gas industry by incorporating digital technologies and data analytics into drilling operations. This transformative shift aims to optimize operational efficiency, enhance safety measures, and enable prompt decision-making. In this paper, we will look into the various benefits of creating a digital ecosystem for drilling, focusing on improved operational efficiency, potential risk identification, advancements and application in smart equipment, enhanced communication and collaboration, and the reduction of operational expenses. We will also discuss a practical case study that demonstrates the effectiveness of digital ecosystem in reducing costs, minimizing downtime, and enhancing overall drilling performance. Furthermore, the integration of VR simulation with digital twin models in the digital ecosystem for drilling holds immense potential for operators. By providing a realistic and immersive training experience, operators can optimize their drilling operations, minimize risks, and ultimately save costs. Through this exploration, we aim to highlight the transformative power of digitalization in the drilling industry and showcase the benefits that can be achieved by embracing this technology-driven approach.

Publisher

SPE

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