{"title":"Binary rat swarm optimizer algorithm for computing independent domination metric dimension problem","authors":"I. Batiha, Basma Mohamed","doi":"10.21595/mme.2024.24037","DOIUrl":null,"url":null,"abstract":"In this article, we look at the NP-hard problem of determining the minimum independent domination metric dimension of graphs. A vertex set B of a connected graph G(V,E) resolves G if every vertex of G is uniquely recognized by its vector of distances to the vertices in B. If there are no neighboring vertices in a resolving set B of G, then B is independent. Every vertex of G that does not belong to B must be a neighbor of at least one vertex in B for a resolving set to be dominant. The metric dimension of G, independent metric dimension of G, and independent dominant metric dimension of G are, respectively, the cardinality of the smallest resolving set of G, the minimal independent resolving set, and the minimal independent domination resolving set. We propose the first attempt to use a binary version of the Rat Swarm Optimizer Algorithm (BRSOA) to heuristically calculate the smallest independent dominant resolving set of graphs. The search agent of BRSOA are binary-encoded and used to identify which one of the vertices of the graph belongs to the independent domination resolving set. The feasibility is enforced by repairing search agent such that an additional vertex created from vertices of G is added to B, and this repairing process is repeated until B becomes the independent domination resolving set. Using theoretically computed graph findings and comparisons to competing methods, the proposed BRSOA is put to the test. BRSOA surpasses the binary Grey Wolf Optimizer (BGWO), the binary Particle Swarm Optimizer (BPSO), the binary Whale Optimizer (BWOA), the binary Gravitational Search Algorithm (BGSA), and the binary Moth-Flame Optimization (BMFO), according to computational results and their analysis.","PeriodicalId":32958,"journal":{"name":"Mathematical Models in Engineering","volume":"117 16","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Mathematical Models in Engineering","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.21595/mme.2024.24037","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"Engineering","Score":null,"Total":0}
引用次数: 0
Abstract
In this article, we look at the NP-hard problem of determining the minimum independent domination metric dimension of graphs. A vertex set B of a connected graph G(V,E) resolves G if every vertex of G is uniquely recognized by its vector of distances to the vertices in B. If there are no neighboring vertices in a resolving set B of G, then B is independent. Every vertex of G that does not belong to B must be a neighbor of at least one vertex in B for a resolving set to be dominant. The metric dimension of G, independent metric dimension of G, and independent dominant metric dimension of G are, respectively, the cardinality of the smallest resolving set of G, the minimal independent resolving set, and the minimal independent domination resolving set. We propose the first attempt to use a binary version of the Rat Swarm Optimizer Algorithm (BRSOA) to heuristically calculate the smallest independent dominant resolving set of graphs. The search agent of BRSOA are binary-encoded and used to identify which one of the vertices of the graph belongs to the independent domination resolving set. The feasibility is enforced by repairing search agent such that an additional vertex created from vertices of G is added to B, and this repairing process is repeated until B becomes the independent domination resolving set. Using theoretically computed graph findings and comparisons to competing methods, the proposed BRSOA is put to the test. BRSOA surpasses the binary Grey Wolf Optimizer (BGWO), the binary Particle Swarm Optimizer (BPSO), the binary Whale Optimizer (BWOA), the binary Gravitational Search Algorithm (BGSA), and the binary Moth-Flame Optimization (BMFO), according to computational results and their analysis.
本文将探讨确定图的最小独立支配度量维数这一 NP 难问题。如果连通图 G(V,E) 的每个顶点都能通过其与 B 中顶点的距离向量唯一地识别出来,那么 G 的顶点集 B 就解析了 G。不属于 B 的 G 的每个顶点都必须是 B 中至少一个顶点的邻接顶点,这样的解析集合才是显性的。G 的度量维度、G 的独立度量维度和 G 的独立支配度量维度分别是 G 的最小解析集、最小独立解析集和最小独立支配解析集的心率。我们首次尝试使用二进制版本的鼠群优化算法(BRSOA)来启发式地计算图的最小独立支配解析集。BRSOA 的搜索代理采用二进制编码,用于识别图中哪个顶点属于独立支配解析集。可行性是通过修复搜索代理来实现的,这样就会在 B 中增加一个由 G 的顶点创建的顶点,这个修复过程会一直重复,直到 B 成为独立支配解析集。利用从理论上计算出的图形结果以及与其他竞争方法的比较,对所提出的 BRSOA 进行了测试。根据计算结果及其分析,BRSOA 超越了二进制灰狼优化算法(BGWO)、二进制粒子群优化算法(BPSO)、二进制鲸鱼优化算法(BWOA)、二进制引力搜索算法(BGSA)和二进制飞蛾-火焰优化算法(BMFO)。