Cyclical Trends of Network Load Fluctuations in Traffic Jamming

B. Tadić
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引用次数: 1

Abstract

The transport of information packets in complex networks is a prototype system for the study of traffic jamming, a nonlinear dynamic phenomenon that arises with increased traffic load and limited network capacity. The underlying mathematical framework helps to reveal how the macroscopic jams build-up from microscopic dynamics, depending on the posting rate, navigation rules, and network structure. We investigate the time series of traffic loads before congestion occurs on two networks with structures that support efficient transport at low traffic or higher traffic density, respectively. Each node has a fixed finite queue length and uses next-nearest-neighbour search to navigate the packets toward their destination nodes and the LIFO queueing rule. We find that when approaching the respective congestion thresholds in these networks, the traffic load fluctuations show a similar temporal pattern; it is described by dominant cyclical trends with multifractal features and the broadening of the singularity spectrum regarding small-scale fluctuations. The long-range correlations captured by the power spectra show a power-law decay with network-dependent exponents. Meanwhile, the short-range correlations dominate at the onset of congestion. These findings reveal inherent characteristics of traffic jams inferred from traffic load time series as warning signs of congestion, complementing statistical indicators such as increased travel time and prolonged queuing in different transportation networks.
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交通阻塞中网络负荷波动的周期性趋势
复杂网络中信息包的传输是研究交通阻塞的一个原型系统,交通阻塞是一种随着交通负荷增加和网络容量有限而产生的非线性动态现象。潜在的数学框架有助于揭示宏观堵塞是如何从微观动力学中形成的,这取决于张贴率、导航规则和网络结构。我们研究了拥塞发生前的交通负荷时间序列,这两个网络的结构分别支持低交通密度和高交通密度下的有效传输。每个节点都有一个固定的有限队列长度,并使用次近邻搜索将数据包导航到其目标节点和后进先出排队规则。我们发现,在接近各自的拥塞阈值时,这些网络的流量负载波动呈现出相似的时间模式;它是由具有多重分形特征的主导周期趋势和小尺度波动的奇点谱的扩大来描述的。功率谱捕获的远程相关性显示出网络依赖指数的幂律衰减。与此同时,短期相关性在拥堵开始时占主导地位。这些发现揭示了从交通负荷时间序列推断出的交通拥堵的固有特征,作为拥堵的警告信号,补充了不同交通网络中增加的出行时间和延长的排队等统计指标。
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