Dingo Asset Wellness Network Maximizes Machine Productivity

May 13, 2021 | Company News, Insights

DINGO Asset Wellness Network Maximizes Machine Productivity

DINGO-D_2color_taglineDenver, CO 13 May 2021
This story originally ran on Plant Engineering Magazine’s website, June 20, 2013

DINGO Software—a player in heavy asset management software and services—announced the formation of what it calls the world’s first Global Asset Wellness™ network. “Customers will now be able to receive expert maintenance insights on a wide range of mining, oil and gas, rail and energy assets anywhere, anytime,” said Paul Higgins, CEO of DINGO. After developing this cloud-based approach, DINGO’s Asset Wellness™ network now protects over 70,000 major components daily, says the company, having received/processed millions of data samples from a range of sources, including oil analysis labs, vibrations systems, VIMS, Komatsu VHMS, Detroit DDEC, Cummins Cense, Equipment Management Systems, SAP, tire wear, CMMS work orders and more. Data entering the 24-7 network is transformed into work using DINGO’s Trakka® software, which first filters the information using rules and statistics, passing identified problems to teams of maintenance experts for decisions.

businessman

“Trakka allows our team to run a highly effective condition-based maintenances program that helps our mine operate at the lowest cost per hour.”

– Maintenance Manager at a leading North American coal mine

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