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A hybrid quantum-inspired immune algorithm for multiobjective optimization

机译:用于多目标优化的混合量子启发免疫算法

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摘要

This study suggests a novel quantum immune algorithm for finding Pareto-optimal solutions to multiobjective optimization problems based on quantum computing and immune system. In the proposed algorithm, there are distinct characteristics as follows. First, the encoding method is based on Q-bit representation, and thus a chaos-based approach is suggested to initialize the population. Second, a new chaos-based rotation gate and Q-gates are presented to perform mutation and improve the quality of the population, respectively. Finally, especially, a new truncation algorithm with similar individuals (TASI) is utilized to preserve the diversity of the population. Also, a new selection operator is proposed to create the new population based on TASI. Simulation results on six standard problems (ZDT6, CP, SP, VNT, OSY and KIT) show the proposed algorithm is able to find a much better spread of solutions and has better convergence near the true Pareto-optimal front compared to the vector immune algorithm (VIS) and the elitist non-dominated sorting genetic system (NSGA-II).
机译:这项研究提出了一种新颖的量子免疫算法,该算法可基于量子计算和免疫系统为多目标优化问题寻找帕累托最优解。在提出的算法中,具有以下明显的特征。首先,编码方法基于Q位表示,因此建议采用基于混沌的方法初始化总体。其次,提出了一种新的基于混沌的旋转门和Q门,分别用于执行突变和提高种群质量。最后,尤其是,采用了一种新的具有相似个体的截断算法(TASI),以保留种群的多样性。此外,提出了一个新的选择算子来基于TASI创建新的总体。对六个标准问题(ZDT6,CP,SP,VNT,OSY和KIT)的仿真结果表明,与矢量免疫算法相比,该算法能够找到更好的解扩散范围,并且在真实的帕累托最优前沿附近具有更好的收敛性(VIS)和非精英分类遗传系统(NSGA-II)。

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