A Universal Multi-Vehicle Cooperative Decision-Making Approach in Structured Roads by Mixed-Integer Potential Game
Due to the intricate of real-world road topologies and the inherent complexity of autonomous vehicles, cooperative decision-making for multiple connected autonomous vehicles (CAVs) remains a significant challenge. Currently, most methods are tailored to specific scenarios, and the efficiency of exis...
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Zusammenfassung: | Due to the intricate of real-world road topologies and the inherent
complexity of autonomous vehicles, cooperative decision-making for multiple
connected autonomous vehicles (CAVs) remains a significant challenge.
Currently, most methods are tailored to specific scenarios, and the efficiency
of existing optimization and learning methods applicable to diverse scenarios
is hindered by the complexity of modeling and data dependency, which limit
their real-world applicability. To address these issues, this paper proposes a
universal multi-vehicle cooperative decision-making method in structured roads
with game theory. We transform the decision-making problem into a graph path
searching problem within a way-point graph framework. The problem is formulated
as a mixed-integer linear programming problem (MILP) first and transformed into
a mixed-integer potential game (MIPG), which reduces the scope of problem and
ensures that no player needs to sacrifice for the overall cost. Two
Gauss-Seidel algorithms for cooperative decision-making are presented to solve
the MIPG problem and obtain the Nash equilibrium solutions. Specifically, the
sequential Gauss-Seidel algorithm for cooperative decision-making considers the
varying degrees of CAV interactions and flexibility in adjustment strategies to
determine optimization priorities, which reduces the frequency of ineffective
optimizations. Experimental evaluations across various urban traffic scenarios
with different topological structures demonstrate the effectiveness and
efficiency of the proposed method compared with MILP and comparisons of
different optimization sequences validate the efficiency of the sequential
Gauss-Seidel algorithm for cooperative decision-making. |
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DOI: | 10.48550/arxiv.2409.16190 |