Quantum Algorithms for Drone Mission Planning
Mission planning often involves optimising the use of ISR (Intelligence, Surveillance and Reconnaissance) assets in order to achieve a set of mission objectives within allowed parameters subject to constraints. The missions of interest here, involve routing multiple UAVs visiting multiple targets, u...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
27.09.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Mission planning often involves optimising the use of ISR (Intelligence,
Surveillance and Reconnaissance) assets in order to achieve a set of mission
objectives within allowed parameters subject to constraints. The missions of
interest here, involve routing multiple UAVs visiting multiple targets,
utilising sensors to capture data relating to each target. Finding such
solutions is often an NP-Hard problem and cannot be solved efficiently on
classical computers. Furthermore, during the mission new constraints and
objectives may arise, requiring a new solution to be computed within a short
time period. To achieve this we investigate near term quantum algorithms that
have the potential to offer speed-ups against current classical methods. We
demonstrate how a large family of these problems can be formulated as a Mixed
Integer Linear Program (MILP) and then converted to a Quadratic Unconstrained
Binary Optimisation (QUBO). The formulation provided is versatile and can be
adapted for many different constraints with clear qubit scaling provided. We
discuss the results of solving the QUBO formulation using commercial quantum
annealers and compare the solutions to current edge classical solvers. We also
analyse the results from solving the QUBO using Quantum Approximate
Optimisation Algorithms (QAOA) and discuss their results. Finally, we also
provide efficient methods to encode to the problem into the Variational Quantum
Eigensolver (VQE) formalism, where we have tailored the ansatz to the problem
making efficient use of the qubits available. |
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DOI: | 10.48550/arxiv.2409.18631 |