A secure multi-layer embedded framework for real-time fault detection in Industrial IoT power supply systems
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Abstract
Industrial power supplies are traditionally designed as passive components with limited diagnostic visibility and secure remote supervision. This thesis presents the design and experimental validation of a secure, multi-layer Industrial Internet of Things (IIoT)-enabled power-supply platform that integrates deterministic protection, embedded diagnostics, and authenticated remote monitoring within a unified architecture. The platform combines real-time hard-fault protection with quantized neural network (QNN)-based soft-fault diagnostics executed on a microcontroller-class device, enabling early detection of incipient degradation with bounded latency. Industrial interoperability is maintained through Modbus RTU communication, while secure access is provided via TLS-encrypted HTTPS and a web-based dashboard. Experimental results demonstrate stable electrical operation under sustained thermal stress, consistent communication timing with an average latency of 5.76 ms, and diagnostic performance exceeding 96%, with sub-millisecond inference latency. These results demonstrate that intelligence, connectivity, and cybersecurity can be co-designed while preserving bounded real-time behavior and operational reliability.
