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首页> 外文期刊>Intelligent Transport Systems, IET >Statistical traffic state analysis in large-scale transportation networks using locality-preserving non-negative matrix factorisation
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Statistical traffic state analysis in large-scale transportation networks using locality-preserving non-negative matrix factorisation

机译:大型运输网络中使用局部性非负矩阵分解的统计交通状态分析

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Statistical traffic data analysis is a hot topic in traffic management and control. In this field, current research progresses focus on analysing traffic flows of individual links or local regions in a transportation network. Less attention are paid to the global view of traffic states over the entire network, which is important for modelling large-scale traffic scenes. Our aim is precisely to propose a new methodology for extracting spatiotemporal traffic patterns, ultimately for modelling large-scale traffic dynamics, and long-term traffic forecasting. The authors attack this issue by utilising localitypreserving non-negative matrix factorisation (LPNMF) to derive low-dimensional representation of network-level traffic states. Clustering is performed on the compact LPNMF projections to unveil typical spatial patterns and temporal dynamics of network-level traffic states. The authors have tested the proposed method on simulated traffic data generated for a large-scale road network, and reported experimental results validate the ability of our approach for extracting meaningful large-scale space-time traffic patterns. Furthermore, the derived clustering results provide an intuitive understanding of spatial-temporal characteristics of traffic flows in the large-scale network and a basis for potential longterm forecasting.
机译:统计交通数据分析是交通管理和控制中的热门话题。在该领域中,当前的研究进展集中在分析交通网络中各个链接或本地区域的交通流量。较少关注整个网络上交通状况的全局视图,这对于建模大型交通场景很重要。我们的目的恰恰是提出一种提取时空交通模式的新方法,最终用于对大规模交通动态进行建模以及进行长期交通预测。作者通过利用保留局部性的非负矩阵分解(LPNMF)来推导网络级流量状态的低维表示,从而解决了这一问题。在紧凑的LPNMF投影上执行聚类,以揭示网络级流量状态的典型空间模式和时间动态。作者已经针对大型道路网络生成的模拟交通数据测试了该方法,并报告了实验结果验证了我们的方法提取有意义的大规模时空交通模式的能力。此外,导出的聚类结果提​​供了对大型网络中交通流的时空特性的直观理解,并为潜在的长期预测奠定了基础。

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