Tureis: Transformer-based Unified Resilience for IoT Devices in Smart Homes
Alireza Borhani, Vafa Andalibi, Bahar Asgari

TL;DR
Tureis is a self-supervised Transformer-based method that detects and localizes sensor failures in smart home IoT systems, handling multiple failures and residents efficiently on edge devices.
Contribution
It introduces a novel self-supervised, context-aware Transformer approach for failure detection and localization in multi-resident smart home IoT environments, overcoming prior limitations.
Findings
Improves single-failure localization F1 by up to 25%.
Enhances multi-failure localization F1 by up to 35%.
Operates efficiently on edge devices with minimal resource usage.
Abstract
Smart-home IoT systems rely on heterogeneous sensor networks whose correctness shapes application behavior and the physical environment. However, these low-cost, resource-constrained sensors are highly prone to failure under real-world stressors. Prior methods often assume single-failure, single-resident settings, offer only failure detection rather than sensor-level localization, cover limited fault types and sensor modalities, require labels and human intervention, or impose overheads hindering edge deployment. To overcome these limitations, we propose Tureis, a self-supervised, context-aware method for failure detection and faulty-sensor localization in smart homes, designed for multi-failure, multi-resident edge settings. Tureis encodes heterogeneous binary and numeric sensor streams into compact bit-level features. It then trains a lightweight BERT-style Transformer with…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · IoT and Edge/Fog Computing · Software System Performance and Reliability
