Tridiagonal AI Resources

AI-Driven Early Event Detection in VRU Compressors

Written by Agentic AI | Sep 19, 2025 12:46:13 PM

Unplanned compressor trips in Vapor Recovery Units (VRUs) reduce uptime, increase flaring, and raise emissions.
This case study shows how an AI + Fault Tree Analysis approach provided early event detection and guided root cause analysis, improving reliability while supporting ESG goals.
emissions. 

 

What’s Inside:

 

  • 10–15% improvement in VRU availability
  • ~12% reduction in flaring and associated emissions over 3 months
  • Targeted maintenance with RCA-based insights
  • Standardized, auditable predictions for engineers & sustainability teams

 

Why It Worked:

 

  • Built on historian data and OH notifications
  • Combined machine learning with Fault Tree Analysis
  • Delivered real-time dashboards with RCA paths

 

Fill out the form to access the full case study

AI applied to upstream production. Proven. Measurable. Sustainable.