A primal-dual heuristic for a heterogeneous unmanned vehicle path planning problem

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Abstract

We consider a path planning problem where a team of Unmanned Vehicles (UVs) is required to visit a given set of targets. The UVs are assumed to carry different sensors, and as a result, there are vehicle-target constraints that require each UV to visit a distinct subset of targets. The objective of the path planning problem is to find a path for each UV such that each target is visited at least once by some vehicle, the vehicle-target constraints are satisfied and the total distance travelled by the vehicles is a minimum. This path planning problem is a generalization of the Hamiltonian path problem and is NP-Hard. We develop a primal-dual heuristic and incorporate the heuristic in a Lagrangian relaxation procedure to find good, feasible solutions and lower bounds for the path planning problem. Computational results show that solutions whose costs are on an average within 14% of the optimum can be obtained relatively quickly for the path planning problem involving five UVs and 40 targets. ©2013 Sundar and Rathinam.

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Sundar, K., & Rathinam, S. (2013). A primal-dual heuristic for a heterogeneous unmanned vehicle path planning problem. International Journal of Advanced Robotic Systems, 10. https://doi.org/10.5772/56486

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