遗传量子算法及其在组合优化问题中的应用

Kuk-Hyun Han, Jong-Hwan Kim
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引用次数: 650

摘要

提出了一种新的进化计算方法——遗传量子算法(GQA)。GQA基于量子计算的概念和原理,如量子比特和状态叠加。通过采用量子比特染色体作为表示,GQA可以通过其概率表示来表示解的线性叠加,而不是二进制、数字或符号表示。量子门作为遗传算子,用于寻找最优解。GQA具有快速收敛和良好的全局搜索能力。在背包问题上的实验结果证明了GQA方法的有效性和适用性。结果表明,GQA优于其他使用惩罚函数、修复方法和解码器的遗传算法。
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Genetic quantum algorithm and its application to combinatorial optimization problem
This paper proposes a novel evolutionary computing method called a genetic quantum algorithm (GQA). GQA is based on the concept and principles of quantum computing such as qubits and superposition of states. Instead of binary, numeric, or symbolic representation, by adopting qubit chromosome as a representation GQA can represent a linear superposition of solutions due to its probabilistic representation. As genetic operators, quantum gates are employed for the search of the best solution. Rapid convergence and good global search capability characterize the performance of GQA. The effectiveness and the applicability of GQA are demonstrated by experimental results on the knapsack problem, which is a well-known combinatorial optimization problem. The results show that GQA is superior to other genetic algorithms using penalty functions, repair methods and decoders.
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