Discuss pipeline integrity challenges with SLB experts at PTC 2026

Explore how operators are predicting failures and reducing risk with AI-driven integrity workflows BOOK AN APPOINTMENT šŸ‘‰šŸ¼

Predict pipeline failures before they happen

Integrated workflows combining monitoring, inspection, and predictive modelling for proactive pipeline integrity management

Meet an expert at PTC

Why pipeline integrity strategies are failing today

Heading 1

Heading 2

Heading 3

Aging infrastructure increasing failure exposure Fragmented workflows across monitoring and inspection Reactive decision-making instead of predictive insights Regulatory pressure in high-consequence environments
Subtitle 1
Subtitle 2
Subtitle 3

Built for operators managing complex, aging pipeline networks across high-risk environments

Monitoring + inspection + modelling in one platform AI-driven predictive analytics Risk-based prioritisation Real-time + historical data integration

Monitoring

  • Leak detection (fiber optic, vibroacoustic)
  • Corrosion monitoring

Inspection

  • ILI data ingestion + alignment
  • Automated anomaly detection

Modelling

  • Digital twin
  • Corrosion modelling

80% faster leak detection

with real-time monitoring and predictive analytics

$20M production loss avoided (1 week)

through early failure detection and MAOP optimisation

15-20% throughput improvement

through MAOP optimisation and continuous monitoring

How operators are preventing failures before they occur

Real-world applications Detect subsidence events up to 14 days in advance Increase MAOP safely through continuous monitoring Integrate inspection and operational data for risk-based decision-making

Pipeline Integrity Insights

Please note that it might take a few seconds before the content loads.

Your Pipeline Integrity Expert

Speak directly with our specialist to explore how digital solutions can improve performance, reliability, and decision-making across your assets

Alejandro Primera

Asset Performance Solutions Domain Champion
Specialising ...