机器学习在Ad-Hoc网络中的应用综述

Nongmeikapam Thoiba Singh, R. Lal, Amrita Chaudhary, Simarjeet Kaur
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引用次数: 0

摘要

移动自组织网络收集无线技术,可以在各种情况下增强自组织网络,例如难以发布、关键咨询或军事任务,甚至缺乏网络基础设施维护。由于节点可以根据您的判断加入或离开网络,因此网络的拓扑结构可能经常变化。节点在移动自组织网络中同步以保持彼此的联系。数据通过中心节点从源传输到目标。节点具有双重功能——主机和路由器。本文概述了在源和目标之间高效移动节点的最有效方法,同时降低计算成本并提高获取精度。在本研究和对话中,研究人员使用机器学习来解决临时网络和不同移动自组织网络协议的问题。描述了无线自组织网络中使用的许多机器学习技术,以及它们如何提取最重要的标准,恢复它们并确定它们的位置。本文还总结了该领域最近和正在进行的最重要的研究。
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A Review Paper on the Application of Machine Learning for Ad-Hoc Network
Mobile ad hoc networks collect wireless technology that enhances the ad hoc network in various situations, such as difficult releases, critical consultation or military duty, and even a lack of network infrastructure maintenance. Due to the fact that nodes can join or leave the network at your discretion, the network's topology may vary often. Nodes synchronize in mobile ad hoc networks to keep in touch with one another. Data is transferred from the source to the destination via central nodes. A node has dual functionality-host and router. This article outlines the most efficient method for moving nodes efficiently between sources and destinations while lowering computing costs and raising acquisition precision. Researchers use machine learning to solve issues with temporary networks and different mobile ad hoc network agreements in this study and the conversation. Many machine learning techniques that are used in wireless ad hoc networks are described, along with how they extract the most important criteria, restore them, and identify where they are. The most significant recent and continuing research in this area is also summarized in this paper.
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