AI RESEARCH

Data-driven generalized perimeter control: Z\"urich case study

arXiv CS.AI

ArXi:2603.16599v1 Announce Type: cross Urban traffic congestion is a key challenge for the development of modern cities, requiring advanced control techniques to optimize existing infrastructures usage. Despite the extensive availability of data, modeling such complex systems remains an expensive and time consuming step when designing model-based control approaches. On the other hand, machine learning approaches require simulations to bootstrap models, or are unable to deal with the sparse nature of traffic data and enforce hard constraints.