Shortest Path of a Random Graph and its Application

Laxminarayan Sahoo, Rakhi Das
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Abstract

The goal of this work is to provide an effective method for determining the shortest path in random graphs, which are complicated networks with random connectivity patterns. We have developed an algorithm that can identify the shortest path for both weighted and unweighted random graphs to accomplish our objective. As connectivity in these types of structures is changing, the algorithm adjusts to different edge weights and node configurations to provide fast and precise shortest path searching. The study shows that the suggested method performs more successfully in finding the shortest path throughout random graphs using comprehensive computations. Many networks, including social networks, granular networks, road traffic networks, etc., include nodes that can connect to one another and create random graphs in the present-day computational era. The outcomes demonstrate how flexible it is, which makes it a useful tool for practical uses in domains where random graph structures are common, like transportation networks, communication systems, and social networks. For illustration, we have taken into consideration an actual case study of communication road networks here. We have determined the shortest path of the road networks using our proposed algorithm, and the results have been presented. Better decision-making across a range of areas is made possible by this study, which advances effective algorithms designed for complicated and unpredictable network environments.
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随机图的最短路径及其应用
随机图是一种具有随机连接模式的复杂网络,本研究的目标是提供一种确定随机图中最短路径的有效方法。为了实现这一目标,我们开发了一种算法,可以识别加权和非加权随机图中的最短路径。由于这类结构中的连通性是不断变化的,因此算法会根据不同的边权重和节点配置进行调整,以提供快速、精确的最短路径搜索。研究表明,建议的方法在使用综合计算寻找整个随机图的最短路径方面表现得更为成功。在当今的计算时代,许多网络,包括社交网络、颗粒网络、道路交通网络等,都包含可以相互连接并创建随机图的节点。研究结果证明了它的灵活性,这使得它在随机图结构常见的领域(如交通网络、通信系统和社交网络)中成为实用的有用工具。为了说明问题,我们在这里考虑了一个关于通信道路网络的实际案例研究。我们使用所提出的算法确定了道路网络的最短路径,并展示了结果。这项研究推进了针对复杂和不可预测的网络环境而设计的有效算法,使我们能够在一系列领域做出更好的决策。
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