Predicting Network Congestion by Extending Betweenness Centrality to Interacting Agents

Autor: Cogoni, Marco, Busonera, Giovanni
Rok vydání: 2023
Předmět:
Druh dokumentu: Working Paper
Popis: We present a simple model to predict network activity at the edge level, by extending a known approximation method to compute Betweenness Centrality (BC) 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, that 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 dataset for the London area with remarkable results, which also translate into a qualitative similarity of the congestion maps. Also, percolation analysis confirms a quantitative agreement of the model with the real data for London. For seven other topologically different cities we performed simulations to obtain the Fisher critical exponent $\tau$ that showed no common functional dependence on the traffic level. The critical exponent $\gamma$, studied to assess the power-law decay of spatial correlation, was found inversely proportional to the number of vehicles both for 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.
Comment: Submitted to PRE
Databáze: arXiv