Research on improved sparrow algorithm based on random walk
Shao-long Xie,Shan He,Jing Cheng +2 more
2
TL;DR: The experimental results show that the capacity of the improved sparrow algorithm based on random walk is significantly improved and is put into practice the power prediction problem, which checkouts the feasibility of RWSSA in actual engineering problems.
read more
Abstract: The optimization problem is a hot issue in today’s science and engineering research. The sparrow algorithm has the advantages of simple structure, few control parameters and high solution accuracy, and has been widely used in the research of optimization problems. Purposing at the problem that the sparrow search algorithm (SSA) can’t take into account the global and local optimization, an improved sparrow algorithm based on random walk strategy is proposed. After the sparrow search, the random walk is used to perturb the optimal sparrow to demonstrate its search-ability. At the original of the iteration, the random walk boundary is large, which is favourable to demonstrate the whole search-ability. After several iterations, the walk boundary becomes smaller, which improves the local search-ability of the best location of the algorithm. Taking the convergence speed, algorithm stability and convergence precision as evaluation indicators, the improved Sparrow Algorithm (RWSSA) is verified by 4 unimodal functions and 5 multimodal classical test functions, and compared with the traditional Sparrow algorithm. The experimental results show that the capacity of the improved sparrow algorithm based on random walk is significantly improved. At the same time, RWSSA is put into practice the power prediction problem, which checkouts the feasibility of RWSSA in actual engineering problems.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
The Modified Binary Sparrow Search Algorithm (mbSSA) and Its Implementation
Khuselt It
- 01 Jan 2023
TL;DR: In this article , the modified binary SSA (mbSSA) algorithm was proposed to solve the problem of massive randomness in the initial population and fall into the local optima.
1
Application of sparrow search swarm intelligence optimization algorithm in identifying the critical surface in slope-stability
Abhijit Saha
TL;DR: This study applies the sparrow search algorithm, a nature-inspired meta-heuristic, to optimize the factor of safety against failure in slope-stability problems, demonstrating its effectiveness and robustness in function optimization compared to other bio-inspired methods.
References
A novel swarm intelligence optimization approach: sparrow search algorithm
TL;DR: A novel swarm optimization approach, namely sparrow search algorithm (SSA), is proposed inspired by the group wisdom, foraging and anti-predation behaviours of sparrows, which shows that the proposed SSA is superior over GWO, PSO and GSA in terms of accuracy, convergence speed, stability and robustness.
2.5K
The Sailfish Optimizer: A novel nature-inspired metaheuristic algorithm for solving constrained engineering optimization problems
TL;DR: The promising results on five real world optimization problems indicate that the SailFish Optimizer (SFO) is applicable for problem solving with constrained and unknown search spaces.
533
An improved hybrid grey wolf optimization algorithm
Zhi-jun Teng,Jin-ling Lv,Li-wen Guo +2 more
- 01 Aug 2019
TL;DR: A grey wolf optimization algorithm combined with particle swarm optimization (PSO_GWO) is proposed, which preserves the best position information of the individual and avoids the algorithm falling into a local optimum.
219
Chaotic opposition-based grey-wolf optimization algorithm based on differential evolution and disruption operator for global optimization
TL;DR: The experimental results support the efficacy of the proposed approach to find the optimal solutions of the global optimization problem, as well as, increase the accuracy of the classification of the galaxy images.
193
Optimal parameter identification of PEMFC stacks using Adaptive Sparrow Search Algorithm
Yanlong Zhu,Nasser Yousefi +1 more
TL;DR: The proposed ASSA is utilized for minimizing the sum of squared error (SSE) between the empirical stack voltage and the calculated stack voltage by optimal selection of the mentioned parameters in the PEMFC stack.
186