Predictive Maintenance? It’s Here.

The importance of predictive maintenance has increased in oil and gas operations against the backdrop of aging infrastructure and volatile crude pricing, according to GlobalData, a leading data and analytics company.

The company’s latest thematic report, “Predictive Maintenance,” reveals that the adoption of predictive maintenance technologies is helping companies cut back on operational expenditure by optimizing maintenance scheduling and driving productivity.

Ravindra Puranik, Oil & Gas Analyst at GlobalData, comments: “The insights gained from predictive maintenance program enables decision makers to schedule maintenance activities without disrupting routine production operations. These insights can also be used to evaluate if any machinery or infrastructure requires a major overhaul on priority, and accordingly decide whether to use the available capital expenditure for new projects and expansion plans or divert it for the upgrading of existing facilities.”

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Predictive maintenance is a fairly mature concept and has been widely deployed in the oil and gas industry over the last 20 years. Predictive maintenance tools evaluate the condition of operational equipment and predict maintenance requirements in order to achieve optimum performance and prevent malfunction.

Predictive maintenance utilizes automated condition monitoring and advanced data analytics to gather vital equipment statistics – such as vibration, temperature, sound, and electric current – and compare them with historical records of similar equipment to detect signs of deterioration.

GlobalData’s thematic research identifies multinational oil and gas companies, such as Shell, ExxonMobil, Chevron, BP, Rosneft and Equinor as the leaders in the digital oilfield theme. The research also identifies oilfield service providers, such as GE-Baker Hughes, Schlumberger, Halliburton, Aker Solutions, Weatherford, and National Oilwell Varco among the leading players in this theme.


Source: ScienceSoft

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