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Leveraging longitudinal driving behaviour data with data mining techniques for driving style analysis

机译:利用纵向驾驶行为数据和数据挖掘技术进行驾驶风格分析

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Accurately understanding driving behaviour is of crucial importance for advanced driving assistant systems such as adaptive cruise control system and intelligent forward collision warning system. To understand different driving styles, this study employs the clustering method and topic model to extract latent driving states, which can elaborate and analyse the commonness and individuality of driving behaviour characteristics with the longitudinal driving behaviour data collected by the instrumented vehicle. To handle the large set of data and discover the valuable knowledge, the data mining techniques including ensemble clustering method based on the kernel fuzzy C-means algorithm and the modified latent Dirichlet allocation model are employed in this study. The `aggressive', `cautious' and `moderate' driving states are discovered and the underlying quantified structure is built for the driving style analysis.
机译:准确了解驾驶行为对于高级驾驶辅助系统(如自适应巡航控制系统和智能前撞预警系统)至关重要。为了理解不同的驾驶方式,本研究采用聚类方法和主题模型来提取潜在的驾驶状态,从而可以利用仪表车辆收集的纵向驾驶行为数据来阐述和分析驾驶行为特征的共性和个性。为了处理大量数据并发现有价值的知识,本研究采用了基于核模糊C均值算法的集成聚类方法和改进的潜在Dirichlet分配模型等数据挖掘技术。发现“攻击性”,“谨慎”和“中等”驾驶状态,并为驾驶风格分析构建基础量化结构。

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