CityLight: A Universal Model for Coordinated Traffic Signal Control in City-scale Heterogeneous Intersections
The increasingly severe congestion problem in modern cities strengthens the significance of developing city-scale traffic signal control (TSC) methods for traffic efficiency enhancement. While reinforcement learning has been widely explored in TSC, most of them still target small-scale optimization...
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Zusammenfassung: | The increasingly severe congestion problem in modern cities strengthens the
significance of developing city-scale traffic signal control (TSC) methods for
traffic efficiency enhancement. While reinforcement learning has been widely
explored in TSC, most of them still target small-scale optimization and cannot
directly scale to the city level due to unbearable resource demand. Only a few
of them manage to tackle city-level optimization, namely a thousand-scale
optimization, by incorporating parameter-sharing mechanisms, but hardly have
they fully tackled the heterogeneity of intersections and intricate
between-intersection interactions inherent in real-world city road networks. To
fill in the gap, we target at the two important challenges in adopting
parameter-sharing paradigms to solve TSC: inconsistency of inner state
representations for intersections heterogeneous in configuration, scale, and
orders of available traffic phases; intricacy of impacts from neighborhood
intersections that have various relative traffic relationships due to
inconsistent phase orders and diverse relative positioning. Our method,
CityLight, features a universal representation module that not only aligns the
state representations of intersections by reindexing their phases based on
their semantics and designing heterogeneity-preserving observations, but also
encodes the narrowed relative traffic relation types to project the
neighborhood intersections onto a uniform relative traffic impact space. We
further attentively fuse neighborhood representations based on their competing
relations and incorporate neighborhood-integrated rewards to boost
coordination. Extensive experiments with hundreds to tens of thousands of
intersections validate the surprising effectiveness and generalizability of
CityLight, with an overall performance gain of 11.68% and a 22.59% improvement
in transfer scenarios in throughput. |
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DOI: | 10.48550/arxiv.2406.02126 |