Yao Yanping, Du Xianjun
College of Electrical and Information Engineering, Lanzhou University of Technology, Lanzhou 730050, China.
College of Electrical and Information Engineering, Lanzhou University of Technology, Lanzhou 730050, China E-mail:
Water Sci Technol. 2025 Aug;92(3):509-536. doi: 10.2166/wst.2025.096. Epub 2025 Jul 22.
To address the issues of limited exploration capability and premature convergence in the optimization process of the Blood-Sucking Leech Optimizer (BSLO) algorithm, we propose an Improved BSLO (IBSLO) algorithm. Initially, a directional leeches switching mechanism based on an inverted S-shaped nonlinear perceived distance to strike a balance between exploitative and exploratory capabilities of the algorithm. Subsequently, a dynamic perception signal was designed to simulate dynamic stimulus signals, guiding leeches to search and optimize more accurately. Finally, the memory sharing mechanism is incorporated to improve search efficiency and secure the global optimal solution of the algorithm. In addition, the IBSLO algorithm is assessed through 23 benchmark functions and the standard test set from CEC-2017, with its superiority confirmed by a detailed analysis of the algorithm's convergence. To further assess the efficacy of the IBSLO algorithm in addressing practical optimization challenges, it was utilized to enhance the predictive model for crucial water quality parameters within the wastewater treatment procedure. The IBSLO-Deep Belief Network model's prediction results demonstrated superior accuracy compared with other optimization strategies, further confirming the excellent performance of the IBSLO algorithm.
为了解决吸血水蛭优化器(BSLO)算法优化过程中探索能力有限和过早收敛的问题,我们提出了一种改进的BSLO(IBSLO)算法。首先,基于倒S形非线性感知距离设计了一种定向水蛭切换机制,以平衡算法的利用能力和探索能力。随后,设计了一种动态感知信号来模拟动态刺激信号,引导水蛭更准确地进行搜索和优化。最后,引入了记忆共享机制以提高搜索效率并确保算法的全局最优解。此外,通过23个基准函数和CEC - 2017的标准测试集对IBSLO算法进行了评估,并通过对算法收敛性的详细分析证实了其优越性。为了进一步评估IBSLO算法在解决实际优化挑战方面的有效性,将其用于改进废水处理过程中关键水质参数的预测模型。与其他优化策略相比,IBSLO - 深度信念网络模型的预测结果显示出更高的准确性,进一步证实了IBSLO算法的优异性能。