EDGE-BASED VISION FOR INDUSTRIAL IOT: REAL-TIME QUALITY INSPECTION AND PREDICTIVE MAINTENANCE

Authors

  • Hayder Majid Sachit Al-Rikabi University of Wasit, College of Science, Iraq Author

Keywords:

Local AI, Industrial IoT, Computer Vision, Quality Assessment, Abnormality Detection, Predictive Maintenance, TinyML, IEC 62443, OPC UA.

Abstract

Industrial Internet of Things (IIoT) implementations increasingly move computer-vision analysis from the cloud to local hardware to satisfy strict latency, secrecy, and dependability prerequisites on manufacturing floors. Current progress indicates that small CNN/Transformer models and abnormality-detection workflows can attain instant visual examination on integrated platforms while maintaining production-line capacities. Practical examples and comparisons—notably concerning self-supervised abnormality detection (UAD) on collections like MVTec AD and the more recent MVTec AD-2—show dependable flaw pinpointing across varied materials and items, advancing the discipline toward workable in-line quality assurance. Local execution lessens backhaul and reaction durations, and when coupled with predictive-maintenance (PdM) schemes, permits sooner fault identification and enhanced Overall Equipment Effectiveness (OEE).

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Published

2026-02-28

Issue

Section

Articles

How to Cite

EDGE-BASED VISION FOR INDUSTRIAL IOT: REAL-TIME QUALITY INSPECTION AND PREDICTIVE MAINTENANCE. (2026). Modern American Journal of Engineering, Technology, and Innovation, 2(2), 36-61. https://usajournals.org/index.php/2/article/view/2035