Generative Boltzmann Adversarial Network in Manet Attack Detection and QOS Enhancement with Latency

Dr. Arun Kumar Marandi, Richa Dogra, R. Bhatt, Rajesh K. Gupta, Somashekar Reddy, Amit Barve
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引用次数: 1

Abstract

Mobile Ad-Hoc Network (MANET) are considered as self-configured network those does not have any centralized base station for the network monitoring and control. MANET environment does not control architecture for routing for the frequent maintenance of topology. The drastic development of Internet leads to adverse effect of development in MANET for different multimedia application those are sensitive to latency. Upon the effective maintenance of the QoS routing route discovery is performed to calculate queue and contention delay. However, the MANET requirement comprises of the complex procedure to withstand the Quality of Service (QoS) with Artificial Intelligence (AI). In MANET it is necessary to compute the MANET attacks with improved QoS with the reduced latency as existing model leads to higher routing and increased latency.  In this paper proposed a Generative Boltzmann Networking Weighted Graph (GBNWG) model for the QoS improvement in MANET to reduce latency. With GBNWG model the MANET model network performance are computed with the weighted graph model. The developed weighted graph computes the routes in the MANET network for the estimation of the available path in the routing metrices. The proposed GBNWG model is comparatively estimated with the conventional QOD technique. Simulation analysis stated that GBNWG scheme exhibits the improved performance in the QoS parameters. The GBNWG scheme improves the PDR value by 12%, 41% reduced control packets and 45% improved throughput value.
基于生成玻尔兹曼对抗网络的Manet攻击检测与时延QOS增强
移动自组织网络(MANET)被认为是一种自配置网络,它没有任何集中的基站来进行网络监控。由于拓扑结构的频繁维护,MANET环境不控制路由体系结构。随着互联网的迅猛发展,对时延敏感的多媒体应用对无线局域网的发展产生了不利的影响。在有效维护QoS路由的基础上,进行路由发现,计算队列和争用延迟。然而,MANET需求包括复杂的过程,以承受人工智能(AI)的服务质量(QoS)。在MANET中,由于现有模型导致更高的路由和增加的延迟,有必要计算具有改进QoS和减少延迟的MANET攻击。本文提出了一种生成式玻尔兹曼网络加权图(GBNWG)模型,用于改善MANET的QoS,以减少延迟。采用GBNWG模型,用加权图模型计算了MANET模型的网络性能。提出的加权图计算了自组网中的路由,以估计路由度量中的可用路径。将所提出的GBNWG模型与传统的QOD技术进行了比较估计。仿真分析表明,GBNWG方案在QoS参数方面表现出较好的性能。GBNWG方案提高了12%的PDR值,减少了41%的控制数据包,提高了45%的吞吐量值。
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