Cogoni Marco, Busonera Giovanni
CRS4 Center for Advanced Studies, Research and Development in Sardinia - Via Ampere 2, 09134 Cagliari (CA) Italy.
Phys Rev E. 2024 Apr;109(4-1):044302. doi: 10.1103/PhysRevE.109.044302.
We present a simple model to predict network activity at the edge level by extending a known approximation method to compute betweenness centrality with a repulsive mechanism to prevent unphysical densities. By taking into account the strong interaction effects often observed in real phenomena, we aim to obtain an improved measure of edge usage during rush hours as traffic congestion patterns emerge in urban networks. In this approach, the network is iteratively populated by agents following dynamically evolving fastest paths who are progressively attracted towards uncongested parts of the network as the global traffic volume increases. Following the transition of the network state from empty to saturated, we study the emergence of congestion and the progressive disruption of global connectivity due to a relatively small fraction of crowded edges. We assess the predictive power of our model by comparing the speed distribution against a large experimental data set for the London area with remarkable results, which also translate into a qualitative similarity of the congestion maps. Also, percolation analysis confirms the quantitative agreement of the model with the real data for London. We perform simulations for seven other topologically different cities to obtain the Fisher critical exponent τ that shows no common functional dependence on the traffic level. The critical exponent γ, studied to assess the power-law decay of spatial correlation, is found to be inversely proportional to the number of vehicles for both real and simulated traffic. This simulation approach seems particularly fit to describe qualitative and quantitative properties of the network loading process, culminating in peak-hour congestion, by using only topological and geographical network features.
我们提出了一个简单的模型,通过扩展一种已知的近似方法来计算介数中心性,并引入排斥机制以防止出现不符合实际的密度,从而预测边缘层的网络活动。考虑到在实际现象中经常观察到的强相互作用效应,我们旨在获得一种改进的方法来衡量高峰时段城市网络中交通拥堵模式出现时边缘的使用情况。在这种方法中,随着全局交通流量的增加,网络由遵循动态演化的最快路径的智能体迭代填充,这些智能体逐渐被吸引到网络中未拥堵的部分。随着网络状态从空转变为饱和,我们研究拥堵的出现以及由于相对较少部分的拥挤边缘导致的全局连通性的逐渐破坏。我们通过将速度分布与伦敦地区的大量实验数据集进行比较来评估模型的预测能力,结果显著,这也转化为拥堵地图的定性相似性。此外,渗流分析证实了该模型与伦敦实际数据的定量一致性。我们对其他七个拓扑结构不同的城市进行了模拟,以获得费舍尔临界指数τ,结果表明它与交通水平没有共同的函数依赖关系。为了评估空间相关性的幂律衰减而研究的临界指数γ,对于实际交通和模拟交通而言,都与车辆数量成反比。这种模拟方法似乎特别适合通过仅使用网络的拓扑和地理特征来描述网络加载过程的定性和定量特性,最终导致高峰时段的拥堵。