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Dangerous Driving Prediction Model based on Long Short-term Memory Network with Dynamic Weighted Moving Average of Heart-Rate Variability

机译:基于长短期记忆网络的危险驾驶预测模型,心率变异性动态加权移动平均值

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Dangerous driving behaviours contribute significantly to road accidents. Researchers have developed numerous models for predicting dangerous behaviours. However, these models have remained at the development stage. This paper proposes using a dynamic weight moving average (DWMA) method for processing heart rate variability (HRV) indices and establishing prediction models using long short-term memory (LSTM) networks. The changes in HRV indices between baseline and pre-event stages were also investigated. Thirty-three Taiwanese commercial drivers, which were 19 urban drives and 14 highway drivers, were recruited (between September 2019 and June 2020). Their driving behaviours and physiological signals during tasks were obtained by navigation software and an HRV watch. The DWMA and exponential moving average were applied to process the physiological signals. The derived data set was split into training and testing sets (ratio: 80% to 20%). To establish the models, the LSTM networks were trained using the training set and K-fold cross-validation (K = 10). Prediction performance was evaluated by sensitivity, specificity, and accuracy. For the urban drivers, the significantly raised values in the normalized low-frequency spectrum and the sympathovagal balance index were found. The significantly elevated values in the standard deviation of NN intervals were observed. For the highway drivers, the significantly increased heart rate and root mean square of successive RR interval differences can be observed. Besides, the LSTM models based on DWMA demonstrated the highest accuracy in urban and highway groups (Urban driving group: 80.31%, 95% confidence interval: 84.65-91.71%; Highway driving group: 80.70%, 95% confidence interval: 72.25-87.49%). The authors recommend using these models to prevent dangerous driving behaviours.
机译:危险的驾驶行为对道路事故有很大贡献。研究人员开发了许多用于预测危险行为的模型。但是,这些模型仍然处于发展阶段。本文建议使用动态重量移动平均(DWMA)方法来处理心率变异性(HRV)指标并使用长短期存储器(LSTM)网络建立预测模型。还研究了基线与前列前阶段之间的HRV指数的变化。招聘了三十三台城市驱动器和14公路司机的台湾商业司机(2019年9月至6月20日期间)。通过导航软件和HRV手表获得任务期间的驾驶行为和生理信号。施加DWMA和指数移动平均值来处理生理信号。派生数据集被分成训练和测试集(比率:80%至20%)。为了建立模型,使用训练集和k折交叉验证(k = 10)接受了LSTM网络。通过灵敏度,特异性和准确性来评估预测性能。对于城市司机来说,发现了归一化低频频谱和同性化平衡指数中的显着提高的值。观察到NN间隔的标准偏差的显着升高。对于公路司机,可以观察到连续的RR间隔差异的显着增加的心率和均方根平方。此外,基于DWMA的LSTM模型在城市和公路集团中展示了最高的准确性(城市驾驶组:80.31%,95%置信区间:84.65-91.71%;公路驾驶组:80.70%,95%置信区间:72.25-87.49 %)。作者建议使用这些模型来防止危险的驾驶行为。

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