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Home
About Us
Solutions
AI & Data Management Solutions
Digital Integration & Smart City Solutions
Asset Performance Management Solutions
Industrial Digital Solutions
Drones & Robotics Solutions
Industries
Oil & Gas
Chemicals
Manufacturing
Power & Utilities
Government & Public
Mining & Minerals
Smart City
Supply Chain & Logistics
Careers
Case Studies
Contact
Home
About Us
Solutions
AI & Data Management Solutions
Digital Integration & Smart City Solutions
Asset Performance Management Solutions
Industrial Digital Solutions
Drones & Robotics Solutions
Industries
Oil & Gas
Chemicals
Manufacturing
Power & Utilities
Government & Public
Mining & Minerals
Smart City
Supply Chain & Logistics
Careers
Case Studies
Contact
Drones for MV-OHL Powerline Project – Khurais, Saudi Aramco (2025)
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Case Studies
Drones for MV-OHL Powerline Project – Khurais, Saudi Aramco (2025)
Challenge
Large-scale MV overhead line network with 1000+ towers and poles spread across remote terrain
Manual inspections were slow, risk-heavy, and inconsistent
Limited visibility into early defects without thermal, UV, or 3D data
Need to build in-house capability alongside project delivery
AIGC Solution
Deployed end-to-end drone inspection and asset digitization program
Captured visual, thermal, LiDAR, and UV data for all MV-OHL assets
Created a digital asset baseline for towers and poles
Delivered full training program covering operational drone workflows , emergency response procedures and on-the-Job Training (OJT) for Aramco teams
Realized Value
Enabled faster, safer inspections without line shutdowns or climbing
Early identification of hotspots, corona discharge, structural issues
Established a scalable digital foundation for predictive maintenance
Reduced dependency on external inspections through trained internal teams