Multiplayer reputation-based coalition game model (MRCGM) with dominant strategy analysis for detecting malicious attacks in wireless sensor networks

Amara S. A. L. G. Gopala Gupta, Syam Prasad Gudapati, Praveen Tumuluru
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Abstract

Wireless Sensor Networks (WSNs) are turning into an essential portion of our lives. Devoid of assuring WSNs security (WS), there remain no broad implementations of WSNs. Because of sensor nodes’ constrained capacities concerning computation, communication, and energy, giving protection to WSNs remains competitive. Indeed, the procedure of applying WS remains adaptable and vibrant that develops consistently. Attack-defend’s crux in WS could be conveyed by collaborative schemes of interdependency when Game Theory (GT) could be employed to consider communications amidst schemes of logical decision-makers. Hence, learning WS alongside GT possesses greater logic. This study proffers a Multiplayer Reputation-based Coalition Game Model (MRCGM) for seeking the false data injection amidst the nodes. An attacker attempts to sustain an ideal level of belief by correlating the identifications within the network (NW) to initiate a victorious transfer. Concurrently, the attacker should acquire a few charges for sustaining the trustability of its identifications. This proffered procedure employs this notion and turns the attack expensive by fixing a global threshold for nodes or identifications to be trustable and functional within the NW. Additionally, the beneficial function of the attacker and defender is as well described. The MRCGM has been correlated with 2 advanced methodologies like security-aware routing scheme employing repeated game (SARSRGM) paradigm and a Game-based Fuzzy Q-learning (GBFQL) scheme concerning diverse criteria. Consequently, the proffered MRCGM attains 124 kbps of Packet Drop Rate, 76.14% of energy efficiency, 96.1% of detection accuracy, 25.45% of energy consumption, and 102.45 ms of routing latency.
基于声誉的多玩家联盟博弈模型(MRCGM)及其优势策略分析用于无线传感器网络恶意攻击检测
无线传感器网络(WSNs)正在成为我们生活中不可或缺的一部分。由于不能保证无线传感器网络的安全性,目前还没有广泛的应用。由于传感器节点在计算、通信和能量方面的能力有限,对无线传感器网络的保护仍然具有竞争力。实际上,应用web服务的过程始终保持着适应性和活力。当博弈论(GT)可以用来考虑逻辑决策者方案之间的通信时,攻击防御在WS中的关键可以通过相互依赖的协作方案来传达。因此,将WS与GT结合起来学习更具有逻辑性。本研究提出了一种基于信誉的多人联合博弈模型(MRCGM),用于寻找节点间的虚假数据注入。攻击者试图通过关联网络中的身份(NW)来维持理想的信念水平,以发起成功的转移。同时,攻击者应该获得一些费用来维持其身份的可信性。这个提供的过程采用了这个概念,并通过为节点或标识固定一个全局阈值,使其在NW中可信和有效,从而使攻击变得昂贵。此外,还描述了攻击者和防御者的有益功能。MRCGM与两种高级方法相关,如采用重复博弈(SARSRGM)范式的安全感知路由方案和基于博弈的模糊q -学习(GBFQL)方案,涉及多种标准。因此,所提供的MRCGM实现了124 kbps的丢包率、76.14%的能效、96.1%的检测精度、25.45%的能耗和102.45 ms的路由延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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