Predicting Fatigue-Associated Aberrant Driving Behaviors Using a Dynamic Weighted Moving Average Model With a Long Short-Term Memory Network Based on Heart Rate Variability

Objective This study proposed a moving average (MA) approach to dynamically process heart rate variability (HRV) and developed aberrant driving behavior (ADB) prediction models by using long short-term memory (LSTM) networks. Background Fatigue-associated ADBs have traffic safety implications. Numer...

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Veröffentlicht in:Human factors 2024-06, Vol.66 (6), p.1681-1702
Hauptverfasser: Tsai, Cheng-Yu, Cheong, He-in, Houghton, Robert, Hsu, Wen-Hua, Lee, Kang-Yun, Kang, Jiunn-Horng, Kuan, Yi-Chun, Lee, Hsin-Chien, Wu, Cheng-Jung, Li, Lok-Yee Joyce, Lin, Yin-Tzu, Lin, Shang-Yang, Manole, Iulia, Majumdar, Arnab, Liu, Wen-Te
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Sprache:eng
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Zusammenfassung:Objective This study proposed a moving average (MA) approach to dynamically process heart rate variability (HRV) and developed aberrant driving behavior (ADB) prediction models by using long short-term memory (LSTM) networks. Background Fatigue-associated ADBs have traffic safety implications. Numerous models to predict such acts based on physiological responses have been developed but are still in embryonic stages. Method This study recorded the data of 20 commercial bus drivers during their routine tasks on four consecutive days and subsequently asked them to complete questionnaires, including subjective sleep quality, driver behavior questionnaire and the Karolinska Sleepiness Scale. Driving behaviors and corresponding HRV were determined using a navigational mobile application and a wristwatch. The dynamic-weighted MA (DWMA) and exponential-weighted MA were used to process HRV in 5-min intervals. The data were independently separated for training and testing. Models were trained with 10-fold cross-validation strategy, their accuracies were evaluated, and Shapley additive explanation (SHAP) values were used to determine feature importance. Results Significant increases in the standard deviation of NN intervals (SDNN), root mean square of successive heartbeat interval differences (RMSSD), and normalized spectrum of high frequency (nHF) were observed in the pre-event stage. The DWMA-based model exhibited the highest accuracy for both driver types (urban: 84.41%; highway: 80.56%). The SDNN, RMSSD, and nHF demonstrated relatively high SHAP values. Conclusion HRV metrics can serve as indicators of mental fatigue. DWMA-based LSTM could predict the occurrence of the level of fatigue associated with ADBs. Application The established models can be used in realistic driving scenarios.
ISSN:0018-7208
1547-8181
1547-8181
DOI:10.1177/00187208231183874