自编码
符号
人工智能
大数据
深度学习
计算机科学
随机森林
贝叶斯定理
机器学习
数据挖掘
模式识别(心理学)
数学
贝叶斯概率
算术
作者
Wei Hao,Donglei Rong,Zhaolei Zhang,Qiyu Wu,Young-Ji Byon,Kefu Yi,Jinjun Tang,Nengchao Lyu
标识
DOI:10.1109/tits.2022.3172480
摘要
Modern complexities associated with an arterial traffic makes existing safety prediction methods insufficient to meet desired standards required by recent developmental needs. This paper proposes an enhanced active safety prediction method based on big-data approach and Stacked AutoEncoder-Gated Recurrent Unit. Firstly, the big-data technology is used to construct a dynamic identification model to recognize real-time operation state and risk state. Secondly, the Stacked AutoEncoder-Gated Recurrent Unit is used to predict a level of safety based on associated recognition results. This paper uses data from working days of Sunset Boulevard, California, from January $1^{\mathrm{st}}$ , 2020, to February $28^{\mathrm{th}}$ , 2020. The results of analysis show that the accuracy of the proposed dynamic recognition model reaches 98.92%, which is better than existing models such as random forest, K-nearest neighbor, and naïve Bayes models. In addition, it is found that the Stacked AutoEncoder-Gated Recurrent Unit can achieve a prediction accuracy of 95.157% and has significant advantages in terms of efficiency. The proposed methods will provide feasible solutions for actively monitoring safety levels.
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