Firefighter Stress Monitoring: Model Quality and Explainability.

Janik Buecher,Mischa Soujon, Nicolas Sierro,Jonas Weiss,Bruno Michel

Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)(2022)

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摘要
A cognitive and physical stress co-classification effort started with acquisition of a training dataset and generation of machine learning models from 17 heart rate variability parameters. Accuracy was improved with multilayer perceptron models and tested on 85 firefighters in a cage maze. A specific platform acquired a dataset with better label accuracy providing a second model. Feature importance and model performance were assessed using the cage maze data. A SHAP analysis provided the basis for the model comparison and feature important assessment. Conclusions were drawn on best time windows, feature selection, and model hyperparameters.
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关键词
Firefighters,Heart Rate,Humans,Machine Learning,Neural Networks, Computer,Physical Exertion
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