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A novel quantum algorithm for ant colony optimisation

Mrityunjay Ghosh, Nivedita Dey, Debdeep Mitra, Amlan Chakrabarti

2021IET Quantum Communication22 citationsDOIOpen Access PDF

Abstract

Abstract Ant colony optimisation (ACO) is a commonly used meta‐heuristic to solve complex combinatorial optimisation problems like the travelling salesman problem (TSP), vehicle routing problem (VRP) etc. However, classical ACO algorithms provide better optimal solutions but do not reduce computation time overhead to a significant extent. Algorithmic speed‐up can be achieved by using parallelism offered by quantum computing. Existing quantum algorithms to solve ACO are either quantum‐inspired classical algorithms or hybrid quantum‐classical algorithms. Since all these algorithms need the intervention of classical computing, leveraging the true potential of quantum computing on real quantum hardware remains a challenge. This study's main contribution is to propose a fully quantum algorithm to solve ACO, enhancing the quantum information processing toolbox in the fault‐tolerant quantum computing (FTQC) era. We have solved the single source single destination (SSSD) shortest‐path problem using our proposed adaptive quantum circuit for representing the dynamic pheromone‐updating strategy in real IBMQ devices. Our quantum ACO technique can be further used as a quantum ORACLE to solve complex optimisation problems in a fully quantum setup with significant speed up upon the availability of more qubits.

Topics & Concepts

Quantum computerQuantum sortComputer scienceQuantum algorithmTravelling salesman problemAlgorithmQubitQuantumAnt colony optimization algorithmsQuantum phase estimation algorithmQuantum networkQuantum mechanicsPhysicsQuantum Computing Algorithms and ArchitectureMetaheuristic Optimization Algorithms ResearchQuantum-Dot Cellular Automata