Quantum genetic algorithm based on Boltzmann selection mechanism

H. Ji, Junmei Sun
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引用次数: 2

Abstract

In order to save computation time and avoid falling into local optima in quantum genetic algorithm (QGA), this paper proposes a quantum genetic algorithm based on Boltzmann selection mechanism (B_QGA). The proposed algorithm has several novel characteristics. Firstly, Quantum bits are encoded by angle and introduce the constant factor, aiming at enhancing calculated amount. Secondly, a new dynamic rotation angle adjustment strategy is presented to achieve updated chromosome, and individuals directly evolve to the current optimal solution with linear increasing rate, which greatly improve the rate of convergence and the ability of global search. Thirdly, instead of roulette selection mode, Boltzmann selection mechanism is employed for avoiding the local optimal problem. Finally, for the selected offspring's individuals, Hadamard door is proposed to perform mutation operation to sustain stability and diversity of population. The experiment results on three complicated continuous functions show the proposed algorithm is able to find the best solution in very short time and has excellent global search ability comparing to quantum genetic algorithm (QGA) and genetic algorithm (GA).
基于玻尔兹曼选择机制的量子遗传算法
为了节省量子遗传算法(QGA)的计算时间,避免陷入局部最优,提出了一种基于玻尔兹曼选择机制的量子遗传算法(B_QGA)。该算法具有几个新颖的特点。首先,对量子比特进行角度编码,引入常数因子,提高计算量;其次,提出了一种新的动态旋转角度调整策略,实现了染色体的更新,个体以线性递增的速度直接进化到当前最优解,大大提高了收敛速度和全局搜索能力;第三,采用Boltzmann选择机制代替轮盘赌选择模式,避免了局部最优问题。最后,对所选子代个体进行Hadamard门突变操作,维持种群的稳定性和多样性。在三个复杂连续函数上的实验结果表明,与量子遗传算法(QGA)和遗传算法(GA)相比,该算法能够在很短的时间内找到最优解,具有优异的全局搜索能力。
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