Client: Sensatek Propulsion Technology, Inc.
Partners: Constellation Energy, Electric Power Research Institute (EPRI)
Project Title: Demonstration of Wind Turbine Blade Health Monitoring Technology
Sector: Renewable Energy – Wind Power
Duration: 36 Weeks
Technologies Used: VideoMagic™ (machine vision), deep learning, phase-based motion amplification, fractal dimension analysis
Wind turbine blade failures lead to catastrophic costs: unexpected downtime, expensive repairs, and lost generation. The challenge was to commercialize a non-invasive, scalable blade health monitoring solution capable of detecting structural anomalies—before they become problems—without interrupting turbine operations.
Sensatek deployed its proprietary VideoMagic™ platform, which integrates:
The system captured video and high-speed imagery from turbines across three wind farms. Using advanced image processing and AI algorithms, Sensatek detected, classified, and trended anomalies in both time and frequency domains—with no physical sensors required.
Including ML segmentation, frequency tracking, pulsation envelope analysis, and fractal damage detection.
Sensors were replaced by high-speed cameras (and later, smartphones), reducing complexity.
PBMA-derived modal coordinates were calibrated against legacy proximity probes, confirming equivalent accuracy.
Enabled rapid, low-cost inspections with iPhone cameras—perfect for utility operators seeking agility.
Subtle blade root fatigue, pitch misalignment, and leading-edge erosion detected before visual damage appeared.
EPRI and Constellation acknowledged the platform’s value in lowering inspection time and cost per turbine.
Adapted VideoMagic for wind industry use cases, including deep learning and edge-based computation
Built CNN models using a curated dataset of erosion, cracks, and delamination images
Performed displacement calibration vs proximity probes with strong correlation
Engineered for 4G/LTE/Satellite remote connectivity and real-time AWS dashboards
Built a handheld/mobile-friendly version to drive faster field adoption by O&M teams
If your utility or technology firm is seeking to pilot, deploy, or commercialize a scalable, AI-powered solution for equipment health monitoring—without wiring a single sensor—we can help. Let’s build your case study next.