Oil & Gas Industry from The Perspective of The IOT

Publish Year: 1399
نوع سند: مقاله کنفرانسی
زبان: English
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شناسه ملی سند علمی:

EMESCONF01_017

تاریخ نمایه سازی: 19 فروردین 1400

Abstract:

Anomaly detection systems deployed for monitoring in oil and gas industries are mostly WSN based systems or SCADA systems which all suffer from noteworthy limitations. WSN based systems are not homogenous or incompatible systems. They lack coordinated communication and transparency among regions and processes. On the other hand, SCADA systems are expensive, inflexible, not scalable, and provide data with long delay. In this paper, a novel IoT based architecture is proposed for Oil and gas industries to make data collection from connected objects as simple, secure, robust, reliable and quick. Moreover, it is suggested that how this architecture can be applied to any of the three categories of operations, upstream, midstream and downstream. This can be achieved by deploying a set of IoT based smart objects (devices) and cloud based technologies in order to reduce complex configurations and device programming. Our proposed IoT architecture supports the functional and business requirements of upstream, midstream and downstream oil and gas value chain of geologists, drilling contractors, operators, and other oil field services. Using our proposed IoT architecture, inefficiencies and problems can be picked and sorted out sooner ultimately saving time and money and increasing business productivity.

Keywords:

Internet of Things (IoT) , Oil & Gas Industrial , IoT Technologies.

Authors

Mohammad Daneshi

Master of Drilling Engineering and Planning of the National Iranian Drilling Company

Kaveh Heidari

Expert of Drilling Engineering and Planning of the National Iranian Drilling Company

Reza Aghajari

Petroleum Engineering Expert and Instructor of Drilling Courses in NISOC