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Duke Energy Takes Advantage of IIoT for Predictive Maintenance Applications

April 4, 2018

Duke Energy implemented an end-to-end solution for plant-wide condition monitoring across 30 facilities.

Read more in this case study from IHS Markit, which covers:

  • Manual data collection replacement
  • Technology investment and operation
  • Implementation challenges
  • Solution payback from avoided costs
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