Enhancing Construction Worker Safety in Extreme Heat: A Machine Learning Approach Utilizing Wearable Technology for Predictive Health Analytics
arXiv cs.AI / 4/22/2026
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Key Points
- The study proposes a machine-learning system that uses real-time wearable sensor data to predict heat stress risk for construction workers.
- Researchers compared a baseline LSTM model with an attention-based LSTM, training and testing on data from 19 workers in Saudi Arabia.
- Wearable inputs from Garmin Vivosmart 5 smartwatches include heart rate, HRV, and oxygen saturation, enabling the models to detect heat-stress signals from physiological patterns.
- The attention-based LSTM achieved 95.40% testing accuracy and substantially improved false positives and negatives, with precision/recall/F1 scores around 0.982.
- The approach aims to deliver interpretable outputs that can be integrated into IoT-enabled safety systems and BIM dashboards for more proactive safety management.
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