AI Article Synopsis

  • The Spider Wasp Optimization (SWO) algorithm mimics the behaviors of female spider wasps to solve optimization challenges, offering quick search speeds and accurate solutions, but struggles with local optima and requires parameter adjustments for different problems.
  • The Multi-strategy Improved Spider Wasp Optimizer (MISWO) enhances SWO by integrating the Grey Wolf Algorithm for better early convergence and fitness, along with adaptive techniques to improve search efficiency and accuracy.
  • MISWO was tested on multiple benchmark functions and engineering problems, showing superior performance in optimization, stability, and adaptability compared to other advanced algorithms.

Article Abstract

The Spider Wasp Optimization (SWO) algorithm is a swarm intelligence optimization technique inspired by the collective behaviors of social animals. This algorithm, designed to address optimization challenges, emulates the unique hunting, nesting, and mating behaviors of female spider wasps. It offers several advantages, including rapid search speed and high solution accuracy. However, when tackling complex optimization problems, it can encounter issues such as getting trapped in local optima, slow early convergence, and the need for manual adjustment of the "Trade-off Rate" (TR) parameter for different problems.To improve the performance and versatility of the SWO algorithm, a Multi-strategy Improved Spider Wasp Optimizer (MISWO) is proposed. Firstly, the Grey Wolf Algorithm is integrated into the initialization phase to enhance early convergence and improve the fitness of the initial population, thereby boosting the algorithm's global optimization capabilities.Secondly, an adaptive step size operator and Gaussian mutation are introduced during the search phase to automatically adjust the search range at different optimization stages. This enhancement increases both the optimization accuracy and the algorithm's ability to avoid local optima. The Trade-off Rate (TR) is dynamically selected to better accommodate a variety of problems. Finally, a dynamic lens imaging reverse learning strategy is employed to update optimal individuals, further improving the algorithm's capacity to escape local optima. To validate the effectiveness of MISWO, it was tested on 23 benchmark functions and 7 engineering optimization problems, and compared with several state-of-the-art algorithms. Experimental results show that MISWO outperforms other algorithms in terms of optimization capability, stability, and adaptability across diverse problems.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11585601PMC
http://dx.doi.org/10.1038/s41598-024-78589-8DOI Listing

Publication Analysis

Top Keywords

spider wasp
12
local optima
12
optimization
11
improved spider
8
wasp optimization
8
engineering optimization
8
swo algorithm
8
optimization problems
8
early convergence
8
multiple strategies
4

Similar Publications

This paper proposes an Improved Spider Wasp Optimizer (ISWO) to address inaccuracies in calculating the population (N) during iterations of the SWO algorithm. By innovating the population iteration formula and integrating the advantages of Differential Evolution and the Crayfish Optimization Algorithm, along with introducing an opposition-based learning strategy, ISWO accelerates convergence. The adaptive parameters trade-off probability (TR) and crossover probability (Cr) are dynamically updated to balance the exploration and exploitation phases.

View Article and Find Full Text PDF

The term "animacy perception" describes the ability of animals to detect cues that indicate whether a particular object in the environment is alive or not. Such skill is crucial for survival, as it allows for the rapid identification of animated agents, being them potential social partners, or dangers to avoid. The literature on animacy perception is rich, and the ability has been found to be present in a wide variety of vertebrate taxa.

View Article and Find Full Text PDF
Article Synopsis
  • The Spider Wasp Optimization (SWO) algorithm mimics the behaviors of female spider wasps to solve optimization challenges, offering quick search speeds and accurate solutions, but struggles with local optima and requires parameter adjustments for different problems.
  • The Multi-strategy Improved Spider Wasp Optimizer (MISWO) enhances SWO by integrating the Grey Wolf Algorithm for better early convergence and fitness, along with adaptive techniques to improve search efficiency and accuracy.
  • MISWO was tested on multiple benchmark functions and engineering problems, showing superior performance in optimization, stability, and adaptability compared to other advanced algorithms.
View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!