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.

Abstract

Construction workers are highly vulnerable to heat stress, yet tools that translate real-time physiological data into actionable safety intelligence remain scarce. This study addresses this gap by developing and evaluating deep learning models, specifically a baseline Long Short-Term Memory (LSTM) network and an attention-based LSTM, to predict heat stress among 19 workers in Saudi Arabia. Using Garmin Vivosmart 5 smartwatches to monitor metrics such as heart rate, HRV, and oxygen saturation, the attention-based model outperformed the baseline, achieving 95.40% testing accuracy and significantly reducing false positives and negatives. With precision, recall, and F1 scores of 0.982, this approach not only improves predictive performance but also offers interpretable results suitable for integration into IoT-enabled safety systems and BIM dashboards, advancing proactive, informatics-driven safety management in the construction industry.