Tactical Game-theoretic Decision-making with Homotopy Class Constraints
June 19, 2024 Β· Declared Dead Β· π IEEE Transactions on Intelligent Vehicles
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Authors
Michael Khayyat, Alessandro Zanardi, Stefano Arrigoni, Francesco Braghin
arXiv ID
2406.13656
Category
cs.MA: Multiagent Systems
Cross-listed
cs.RO
Citations
2
Venue
IEEE Transactions on Intelligent Vehicles
Last Checked
3 months ago
Abstract
We propose a tactical homotopy-aware decision-making framework for game-theoretic motion planning in urban environments. We model urban driving as a generalized Nash equilibrium problem and employ a mixed-integer approach to tame the combinatorial aspect of motion planning. More specifically, by utilizing homotopy classes, we partition the high-dimensional solution space into finite, well-defined subregions. Each subregion (homotopy) corresponds to a high-level tactical decision, such as the passing order between pairs of players. The proposed formulation allows to find global optimal Nash equilibria in a computationally tractable manner by solving a mixed-integer quadratic program. Each homotopy decision is represented by a binary variable that activates different sets of linear collision avoidance constraints. This extra homotopic constraint allows to find solutions in a more efficient way (on a roundabout scenario on average 5-times faster). We experimentally validate the proposed approach on scenarios taken from the rounD dataset. Simulation-based testing in receding horizon fashion demonstrates the capability of the framework in achieving globally optimal solutions while yielding a 78% average decrease in the computational time with respect to an implementation without the homotopic constraints.
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