Deep Learning Method of Predicting MANET Lifetime Using Graph Adversarial Network Routing

Mohanaprakash T A, Mary Subaja Christo, M Vivekanandan, M. Madhu Rani, Therasa M
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Abstract

The prominence of mobile ad-hoc networks (MANETs) is on the rise. Within the domain of machine learning, a specialized subset known as deep learning (DL) employs diverse methodologies, each providing unique interpretations of the data it processes. In existing system the vulnerabilities of MANETs to security threats stem from factors such as node mobility, the potential for MANETs to provide economical solutions to real-world communication challenges, decentralized management, and constrained bandwidth. The efficacy of encryption and authentication methods in safeguarding MANETs encounters limitations. Intelligence will be the future development direction of network adaptive optimization technology in response to the increasingly complex mobile communication network. Data from mobile communication is a crucial part of the future information society. This paper propose adaptive optimization scheme , employs a machine learning algorithm that is capable of realizing the optimal parameter configuration and coordinating various optimization objectives in response to changes in state and environment. The coordination and advancement of social, versatile and area administrations make the customary informal organization easily change to portable correspondence organization. Creation of a system that can learn some rules from data and apply them to subsequent data processing is the research objective. This paper examines the machine learning-based algorithm for big data analysis and effectively addresses the issue of communication network data using graph theory and the experimental result shows higher lifetime prediction accuracy compare to previous system.
基于图对抗网络路由的深度学习预测MANET寿命方法
移动自组织网络(manet)的重要性正在上升。在机器学习领域,深度学习(DL)是一个专门的子集,它采用多种方法,每种方法都对其处理的数据提供独特的解释。在现有系统中,manet对安全威胁的脆弱性源于节点移动性、manet为现实世界的通信挑战提供经济解决方案的潜力、分散管理和受限带宽等因素。加密和认证方法在保护manet方面的有效性受到限制。面对日益复杂的移动通信网络,智能化将是网络自适应优化技术未来的发展方向。来自移动通信的数据是未来信息社会的重要组成部分。本文提出自适应优化方案,采用一种机器学习算法,能够根据状态和环境的变化实现最优参数配置并协调各种优化目标。社会管理、综合管理和地区管理的协调和推进,使传统的非正式组织容易向便携式函授组织转变。创建一个能够从数据中学习一些规则并将其应用于后续数据处理的系统是研究的目标。本文研究了基于机器学习的大数据分析算法,并利用图论有效地解决了通信网络数据的问题,实验结果表明,与以前的系统相比,寿命预测精度更高。
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