基于聚类的严重制动事件与时间和地点的相关性研究

Guoyan Cao, J. Michelini, K. Grigoriadis, B. Ebrahimi, M. Franchek
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引用次数: 4

摘要

本文提出了一种系统的基于时间和地点的严重制动事件识别策略。该方法基于批量聚类和实时聚类技术,结合历史数据和实时数据预测严重制动事件的时间和位置。采用减法聚类和模糊c均值聚类相结合的方法实现批聚类,生成表示初始关联模式的聚类。在批处理聚类的基础上,利用演化的Gustafson Kessel (eGKL)算法开发实时聚类,创建和更新实时关联模式。使用配备数据采集和无线通信平台的运行车辆的实时驾驶数据来验证所提出的策略。驾驶员可以通过地图了解潜在的严重制动位置,并通过识别出的相关模式的变化来识别不同时间和地点发生的事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cluster-based correlation of severe braking events with time and location
In this paper, a systematic strategy is proposed to identify severe braking events occurrence correlation with time and location. The proposed approach, which is constructed based on batch clustering and real-time clustering techniques, incorporates historical and real-time data to predict the time and location of severe braking events. Batch clustering is implemented with the combination of subtractive clustering and fuzzy c-means clustering to generate clusters representing the initial correlation patterns. Real-time clustering is then developed to create and update real-time correlation patterns on the foundation of the batch clustering using evolving Gustafson Kessel Like (eGKL) algorithm. Real-time driving data of operating vehicles each equipped with a data acquisition and wireless communication platform are used to validate the proposed strategy. Drivers can be notified of the potential severe braking locations through maps, and recognize the events occurrence at different times and locations through the variation of the identified correlation patterns.
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