Jiangang Wang, Lei Shi, Ding Feng, Jinli Liang, Lingxia Hou, Enming Miao
School of Mechanical Engineering, Yangtze University, Jingzhou, 434023, Hubei, China.
Hubei Engineering Research Center for Oil and Gas Drilling and Completion Tools, Jingzhou, 434023, Hubei, China.
Sci Rep. 2024 Oct 10;14(1):23711. doi: 10.1038/s41598-024-73954-z.
A comprehensive digital transformation has been undergone by the oil and gas industry, wherein digital twins are leveraged to enable real-time data analysis, providing predictive and diagnostic engineering insights. The potential for developing intelligent oil and gas fields is substantial with the implementation of digital twins. A digital twin framework for gear rack drilling rigs is proposed, built upon an understanding of the digital twin composition and characteristics of the gear rack drilling rig lifting system. The framework encompasses descriptions of digital twin characteristics specific to drilling rigs, the application environment, and behavioral rules. The modeling approach integrates mechanism modeling, real-time performance response, instantaneous data transmission, and data visualization. To illustrate this framework, exemplary case studies involving the transmission unit and support unit of the lifting system are presented. Mechanism models are constructed to analyze dynamic gear performance and support unit response. Real-time data transmission is facilitated through sensor-based monitoring, enhancing the prediction speed and accuracy of dynamic performance through a synergy of mechanism modeling, machine learning, and real-time data analysis. The digital twin of the lifting system is visualized utilizing the Unity3D platform. Furthermore, functionalities on data acquisition, processing, and visualization across diverse application scenarios are encapsulated into modular components, streamlining the creation of high-fidelity digital twins. The frameworks and modeling methodologies presented herein can serve as a foundational and methodological guide for the exploration and implementation of digital twin technology within the oil and gas industry, ultimately fostering its advancement in this sector.
石油和天然气行业已经历了全面的数字化转型,其中利用数字孪生实现实时数据分析,提供预测性和诊断性工程见解。随着数字孪生的实施,开发智能油气田的潜力巨大。基于对齿条式钻机提升系统数字孪生组成和特性的理解,提出了一种齿条式钻机的数字孪生框架。该框架涵盖了特定于钻机的数字孪生特性、应用环境和行为规则的描述。建模方法集成了机构建模、实时性能响应、瞬时数据传输和数据可视化。为了说明该框架,给出了涉及提升系统传动单元和支撑单元的示例性案例研究。构建机构模型以分析动态齿轮性能和支撑单元响应。通过基于传感器的监测促进实时数据传输,通过机构建模、机器学习和实时数据分析的协同作用提高动态性能的预测速度和准确性。利用Unity3D平台对提升系统的数字孪生进行可视化。此外,跨不同应用场景的数据采集、处理和可视化功能被封装到模块化组件中,简化了高保真数字孪生的创建。本文提出的框架和建模方法可以作为石油和天然气行业数字孪生技术探索和实施的基础和方法指南,最终促进该领域的发展。