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Quantum-inspired ant algorithm for knapsack problems 被引量:3

Quantum-inspired ant algorithm for knapsack problems
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摘要 The knapsack problem is a well-known combinatorial optimization problem which has been proved to be NP-hard. This paper proposes a new algorithm called quantum-inspired ant algorithm (QAA) to solve the knapsack problem. QAA takes the advantage of the principles in quantum computing, such as qubit, quantum gate, and quantum superposition of states, to get more probabilistic-based status with small colonies. By updating the pheromone in the ant algorithm and rotating the quantum gate, the algorithm can finally reach the optimal solution. The detailed steps to use QAA are presented, and by solving series of test cases of classical knapsack problems, the effectiveness and generality of the new algorithm are validated. The knapsack problem is a well-known combinatorial optimization problem which has been proved to be NP-hard. This paper proposes a new algorithm called quantum-inspired ant algorithm (QAA) to solve the knapsack problem. QAA takes the advantage of the principles in quantum computing, such as qubit, quantum gate, and quantum superposition of states, to get more probabilistic-based status with small colonies. By updating the pheromone in the ant algorithm and rotating the quantum gate, the algorithm can finally reach the optimal solution. The detailed steps to use QAA are presented, and by solving series of test cases of classical knapsack problems, the effectiveness and generality of the new algorithm are validated.
机构地区 Business School
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2009年第5期1012-1016,共5页 系统工程与电子技术(英文版)
基金 supported by the National Natural Science Foundation of China(70871081) the Shanghai Leading Academic Discipline Project(S30504).
关键词 knapsack problem quantum computing ant algorithm quantum-inspired ant algorithm. knapsack problem, quantum computing ant algorithm, quantum-inspired ant algorithm.
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