Jiao Licheng, Li Yangyang, Gong Maoguo, Zhang Xiangrong
Key Laboratory of Intelligent Perception and Image Understanding of Ministry of Education of China, Institute of Intelligent Information Processing, Xidian University, Xi'an 710071, China.
IEEE Trans Syst Man Cybern B Cybern. 2008 Oct;38(5):1234-53. doi: 10.1109/TSMCB.2008.927271.
Based on the concepts and principles of quantum computing, a novel immune clonal algorithm, called a quantum-inspired immune clonal algorithm (QICA), is proposed to deal with the problem of global optimization. In QICA, the antibody is proliferated and divided into a set of subpopulation groups. The antibodies in a subpopulation group are represented by multistate gene quantum bits. In the antibody's updating, the general quantum rotation gate strategy and the dynamic adjusting angle mechanism are applied to accelerate convergence. The quantum not gate is used to realize quantum mutation to avoid premature convergences. The proposed quantum recombination realizes the information communication between subpopulation groups to improve the search efficiency. Theoretical analysis proves that QICA converges to the global optimum. In the first part of the experiments, 10 unconstrained and 13 constrained benchmark functions are used to test the performance of QICA. The results show that QICA performs much better than the other improved genetic algorithms in terms of the quality of solution and computational cost. In the second part of the experiments, QICA is applied to a practical problem (i.e., multiuser detection in direct-sequence code-division multiple-access systems) with a satisfying result.
基于量子计算的概念和原理,提出了一种新颖的免疫克隆算法,即量子启发免疫克隆算法(QICA),用于处理全局优化问题。在QICA中,抗体进行增殖并被划分为一组子种群。子种群中的抗体由多态基因量子比特表示。在抗体更新过程中,应用通用量子旋转门策略和动态调整角度机制来加速收敛。量子非门用于实现量子变异以避免早熟收敛。所提出的量子重组实现了子种群之间的信息通信,以提高搜索效率。理论分析证明QICA收敛到全局最优。在实验的第一部分,使用10个无约束和13个有约束的基准函数来测试QICA的性能。结果表明,在解的质量和计算成本方面,QICA比其他改进的遗传算法表现要好得多。在实验的第二部分,QICA被应用于一个实际问题(即直接序列码分多址系统中的多用户检测),并取得了令人满意的结果。