Case Study 2: Industrial Predictive Maintenance Gateway – Edge AI at Scale

Futuristic AI Processor on Neon Circuit Board

Edge-Based Anomaly Detection for Industrial Equipment

Challenge

A manufacturing equipment company required an edge-based anomaly detection system capable of
handling 50+ sensor streams, performing TinyML inference in real-time, and
scaling across thousands of installations without relying on cloud latency.

Solution

  • Real-time FreeRTOS task scheduler managing concurrent sensor acquisition, AI inference, and communication
  • Optimized TinyML pipeline running on Arm Cortex-A with hardware accelerators
  • Hierarchical logging with local data buffering and intelligent cloud synchronization
  • Mesh networking firmware enabling multi-gateway coordination
  • Robust OTA (Over-the-Air) infrastructure for deploying anomaly detection models without factory visits

Outcome

  • Inference Latency: <50ms per anomaly detection cycle, meeting hard real-time requirements
  • ROI Impact: Equipment downtime reduced by 40%, maintenance costs reduced by 35%
  • Deployment: 5,000+ gateways deployed across North America
  • Scalability: Zero firmware bottlenecks even with 10x device growth
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