Using a Digital Twin in Predictive Maintenance

Author:

Rao Samvith Vasudeva1

Affiliation:

1. MathWorks

Abstract

The oil and gas industry is facing unprecedented and brutal market conditions. While the industry was already in the midst of digitalization, the oil price crash has instilled a fresh impetus on its adoption to cut costs through innovation and new technologies. One such technology is predictive maintenance. When equipment on a rig breaks down, the resulting problem often is not that of replacement but the forced downtime in production or drilling. Therefore, predicting when equipment or a system is going to fail and determining the root cause of failure unlocks significant value. Predictive maintenance has rapidly gained in popularity, spurred by well publicized advances in high-performing computing and Internet of Things (IoT) technologies. Some companies are experiencing the benefits of predictive maintenance firsthand. For example, engineers at Baker Hughes implemented predictive maintenance on the company’s fleet of fracturing trucks. They collected nearly a terabyte of data from pumps on these trucks and then used signal-processing techniques to identify the relevant sensors. Finally, they applied machine-learning techniques to distinguish a healthy pump from an unhealthy one and reduced overall costs by $10 million (MathWorks 2019). This success story and others like it have made pursuing predictive maintenance projects a priority among both oilfield operators and services firms.

Publisher

Society of Petroleum Engineers (SPE)

Subject

Strategy and Management,Energy Engineering and Power Technology,Industrial relations,Fuel Technology

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. A Review of Modern Approaches of Digitalization in Oil and Gas Industry;Upstream Oil and Gas Technology;2023-09

2. Digital twin for predictive maintenance;NDE 4.0, Predictive Maintenance, Communication, and Energy Systems: The Digital Transformation of NDE;2023-04-25

3. Digital twin for smart manufacturing, A review;Sustainable Manufacturing and Service Economics;2023-04

4. Perceptions of a Digital Twin Application Case in the Auto Industry;Lecture Notes in Mechanical Engineering;2023

5. Data Reduction of Digital Twin Simulation Experiments Using Different Optimisation Methods;Applied Sciences;2021-08-09

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