Development of The Intelligent Oil Field With Management and Control using IIoT (Industrial Internet of Things)

In the past decade there is a huge development in artificial intelligence technologies for various applications. Credit goes to recent researches which have increased the computing capabilities manifold particularly of the workstation and microcontrollers it has opened the way to use these technologies in various fields of industry and led to the fourth industrial revolution in which we are living today. The recent addition to this is Internet of Things technology that has made way for the entry artificial intelligence all around us. The use of this technology in the process of oil and gas production will increase the efficiency of the product and reduce the cost of production because it will replace the current costly systems such as PLCs, DCS. etc. to build intelligent wireless system enables the application of intelligent management and control systems for oil and gas fields. This paper focuses on how to build a sophisticated industrial management and control system to manage oil and gas production based on the Internet things by exploiting the technologies currently available such as SCADA and LabVIEW on the workstations and microcontrollers connected to Wi-Fi networks on the equipments and the role of the OPC server to connect all the equipment to the single window system for the purposes of monitoring and control and the exploitation of large computing capabilities of workstations for the implementation of complex control algorithms such as Neural Networks and Fuzzy logic and even a Neuro-Fuzzy hybrid, while the microcontrollers in turn control the entire equipment on its own IoT Device The necessary parameters are obtained and updated continuously from the workstation via the wireless network to make the most of all the equipments and find the required harmony between them for smooth and continuous production and integration with ERP system modules such as SAP.

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