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ABB delivers virtual flow meters powered by Arundo Analytics

ABB delivers virtual flow meters powered by Arundo Analytics

OSLO, NORWAY -- Arundo Analytics, a software company enabling advanced analytics in heavy industry, and ABB, a global supplier of control and automation technologies, have collaborated to create the first cloud-based virtual multiphase flow meters for the offshore oil and gas industry. This solution will be part of the fully integrated ABB Ability™ portfolio for the oil and gas industry.

“Our customers are demanding lower purchase, installation, and ongoing support costs in their operations. Using the scalable Arundo software to combine physical models with the latest in data science and machine learning, we are able to bring a number of innovative, cloud-based data-driven applications to the oil & gas industry,” said Espen Storkaas, ABB Group Vice President for Offshore Oil & Gas Digital.

For over fifty years, ABB has leveraged extensive physical modeling and simulation experience to deliver analytical insights into the offshore oil & gas industry- this includes modeling flows of individual phases of various intermingled fluids in a single stream. Typically, such flows are measured with expensive multiphase flow meters (MPFMs), which can be a significant amount of a facilities capital expense.

The cloud-to-cloud solution will provide connectivity between ABB Ability™ and Arundo’s Composer and Fabric software in order to offer a significantly more affordable and reliable option for oil & gas operators. This virtual flow meter provides analytics as a service to help facilities gain real-time data to understand the constituent properties of any given stream of produced fluids.

“Arundo’s software is purpose-built for taking desktop-based analytical models into live, online environments in just minutes. This collaboration will give the industry more transparency into their operations while also supporting with the need to find cost efficient, reliable solutions,” said Mogens Mathiesen, VP Business Development at Arundo.

From left, CEO and Founder of Arundo Analytics Tor Jakob Ramsøy, Global Head, Oil, Gas and Chemicals for ABB Per Erik Holsten, and Vice President, Oil, Gas and Chemicals for ABB Norway Borghild Lunde,shake hands after signing an MOU for collaboration on advanced analytics on Monday March 19, 2018. ABB and Arundo collaborated to develop the first cloud-based virtual multiphase flow meter for the oil & gas industry.

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