Car Park Occupancy Rates Forecasting based on Cluster Analysis and kNN in Smart Cities

M. Muntean
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引用次数: 5

Abstract

In car park occupancy problem, large amounts of data are collected from sensors and stored in databases. In order to discover useful information from such data, data mining techniques are applied. In this paper I propose to find alternative solutions for Birmingham car park occupancy issue. Our approach consist in clustering first the dataset in order to obtain relevant periods of time within a day and then forecast data within these clusters. Our experiments show that splitting data into six clusters and predict car park occupancy with k-Nearest Neighbor technique lead to the highest forecast rates.
基于聚类分析和kNN的智慧城市停车场入住率预测
在停车场占用问题中,从传感器收集大量数据并存储在数据库中。为了从这些数据中发现有用的信息,应用了数据挖掘技术。在本文中,我建议为伯明翰停车场占用问题寻找替代解决方案。我们的方法包括首先对数据集进行聚类,以获得一天内的相关时间段,然后预测这些聚类中的数据。我们的实验表明,将数据分成6个簇并使用k-最近邻技术预测停车场占用率可以获得最高的预测率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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