基于KNN-NPR的交通流预测的三种改进

Xiaoyan Gong, Feiyue Wang
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引用次数: 35

摘要

研究表明,非参数回归在预测短期交通流量方面具有很高的潜力。然而,关于KNN-NPR(K最近邻非参数回归)是否能够满足实时系统要求和足够的精度要求,仍然存在许多基本问题。为此,本文提出了三种改进方法:基于自关联分析和关联分析的有效交通状态向量选择方法;改进的基于“密集度”的变量K搜索方法;基于动态聚类方法和哈希函数变换的高级数据结构。现场测试充分证明,通过三方面改进,KNN-NPR可以充分满足系统实时性和精度要求。
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Three improvements on KNN-NPR for traffic flow forecasting
Research has shown nonparametric regression to hold high potential to accurately forecast short-term traffic flows. However, many fundamental questions remain regarding the ability of KNN-NPR(K nearest neighbor nonparametric regression) to meet real-time system requirements and adequate accuracy requirements. So this paper puts forward three improvements which are: effective traffic state vector selection method based on self-association analysis and association analysis; improved variable K search method based on "dense degree"; and advanced data structures based on a dynamic cluster method and hash-function transformation. A field test fully proves that with three improvements, KNN-NPR can adequately meet real-time system requirements and accuracy requirements.
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