AI Plant Expert
Reinventing Predictive Maintenance with AI - A Virtual Expert for Plant Operations
"AI Plant Expert" software is a “Virtual Expert in a Box”, bringing human-like intelligence at scale to minimise failures, inefficiency, and lost productivity in plant operations. With a unique combination of AI, 200+ years of domain knowledge, and self-learning workflows, the solution uses a patented system approach to monitor 100% of the existing equipment, sensor, user feedback, & maintenance data, to continuously learn best practices, predict problems, explain root-cause, and give a prescriptive diagnosis. Results are up to 20% increase in availability, 30% decrease in maintenance costs, 20% increase in productivity with up to 5-10x reduction in false alarms, manual effort, and time to act.
Specification Title | Specification Description |
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Accuracy
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2X-10x reduction in false-alarms, manual effort, and time to act
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Areas of Application
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Equipment Reliability | Performance | Efficiency
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Connectivity
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Integrates with historian, CMMS systems, and other 3rd party data lakes
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Cost
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Significant reduction of monitoring cost/tag so that 100% of the data can be monitored
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Deployment
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Fast deployment in 2-3 months with limited client time commitments
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Maintenance
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Up to 30% reduction in maintenance costs with accurate predictions about impending problems
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Monitoring
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100% plant coverage of rotating and static equipment monitoring with high ROI
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Return on Investment
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Fast ROI in 6 months with annual subscription pricing and low startup costs
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Services
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Dedicated customer advocate to support any questions and drive business value
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Reviews
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[8/9]
Relative Business Impact
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Last Deployment YearTotal DeploymentsComment