Zhang Yuanyuan, Yong Longquan, Chen Yijia, Yang Jintao, Zhang Mengnan
School of Mathematics and Computer Science, Shaanxi University of Technology, Hanzhong 723001, China.
Biomimetics (Basel). 2025 Jun 1;10(6):356. doi: 10.3390/biomimetics10060356.
To address the issues of uneven initial distribution and limited search accuracy with the traditional divergent quantum-inspired differential search (DCS) algorithm, a hybrid multi-strategy variant, termed DQDCS, is proposed. This improved version overcomes these limitations by integrating the refined set strategy and clustering process for population initialization, along with the double Q-learning model to balance exploration and exploitation This enhanced version replaces the conventional pseudo-random initialization with a refined set generated through a clustering process, thereby significantly improving population diversity. A novel position update mechanism is introduced based on the original equation, enabling individuals to effectively escape from local optima during the iteration process. Additionally, the table reinforcement learning model (double Q-learning model) is integrated into the original algorithm to balance the probabilities between exploration and exploitation, thereby accelerating the convergence towards the global optimum. The effectiveness of each enhancement is validated through ablation studies, and the Wilcoxon rank-sum test is employed to assess the statistical significance of performance differences between DQDCS and other classical algorithms. Benchmark simulations are conducted using the CEC2019 and CEC2022 test functions, as well as two well-known constrained engineering design problems. The comparison includes both recent state-of-the-art algorithms and improved optimization methods. Simulation results demonstrate that the incorporation of the refined set and clustering process, along with the table reinforcement learning model (double Q-learning model) mechanism, leads to superior convergence speed and higher optimization precision.
为了解决传统发散量子启发式差分搜索(DCS)算法初始分布不均和搜索精度有限的问题,提出了一种混合多策略变体,称为DQDCS。这个改进版本通过集成用于种群初始化的精炼集策略和聚类过程,以及用于平衡探索和利用的双Q学习模型,克服了这些限制。这个增强版本用通过聚类过程生成的精炼集取代了传统的伪随机初始化,从而显著提高了种群多样性。基于原始方程引入了一种新颖的位置更新机制,使个体在迭代过程中能够有效地逃离局部最优。此外,将表格强化学习模型(双Q学习模型)集成到原始算法中,以平衡探索和利用之间的概率,从而加速向全局最优的收敛。通过消融研究验证了每种增强的有效性,并采用威尔科克森秩和检验来评估DQDCS与其他经典算法之间性能差异的统计显著性。使用CEC2019和CEC2022测试函数以及两个著名的约束工程设计问题进行了基准模拟。比较包括最近的先进算法和改进的优化方法。仿真结果表明,精炼集和聚类过程以及表格强化学习模型(双Q学习模型)机制的结合导致了更高的收敛速度和更高的优化精度。