基于密度峰值聚类的电梯交通模式识别

Chen Benyao, Ruan Licheng, Ye Jian, Bi Jianzhong, Shi Shenke, Zhu Shaojun, Wu Mao-nian
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引用次数: 3

摘要

针对传统方法的不足,提出了一种基于密度峰值聚类算法的电梯交通模式识别方法。该方法通过对前一周的客流数据进行聚类分析,得到相应交通模式的聚类中心坐标。对于实时变化的电梯交通数据,利用5分钟的客流数据,根据密度最高的点和离密度较高点最远的距离选择聚类中心,从而识别当前的交通模式。实验表明,该方法能有效识别电梯交通模式,易于实现,计算速度快,聚类效果稳定,能满足群控系统的实时性要求。
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Elevator Traffic Pattern Recognition Based on Density Peak Clustering
Aiming at the shortcomings of traditional methods, this paper proposes an elevator traffic pattern recognition method based on density peak clustering algorithm. This method uses the cluster analysis of the passenger flow data of the previous week to obtain the cluster center coordinates of the corresponding traffic patterns. For real-time changes in elevator traffic data, using 5-minute passenger flow data, the cluster centers are selected based on the highest density and farthest distance from the higher density points, thereby identifying the current traffic pattern. Experiments show that the method can effectively recognize the elevator traffic pattern, is easy to implement, has fast calculation speed, and has a stable clustering effect, and can meet the real-time requirements of the group control system.
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