The paper presents a new approach to solve the MT-TSP by considering moving targets along lines with time-windows. The formulation relies on trajectories as convex sets in space-time coordinates, leading to improved performance compared to existing methods. Experimental results show significant reductions in runtime and optimality gap up to 60%. The proposed MICP-GCS formulation provides stronger lower bounds and faster scalability with increasing targets and time-window durations. The study highlights the efficiency of the new approach in solving complex optimization problems.
The Moving-Target TSP is a challenging problem with various practical applications such as surveillance, monitoring, and unmanned vehicle planning. The paper introduces a novel approach based on graph theory and convex sets to optimize agent paths efficiently. By leveraging trajectory segments as convex sets within space-time coordinates, the proposed method achieves superior performance compared to traditional approaches. The experimental evaluation demonstrates the effectiveness of the MICP-GCS formulation in solving real-world scenarios with moving targets.
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