Light-Weight Hidden Markov Trust Evaluation Model for IoT network

Gamini Joshi, Vidushi Sharma
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引用次数: 3

Abstract

The open-ended nature of the Internet of Things (IoT) had whipped them vulnerable to a variety of attacks, therefore the need of securing and stabilizing the network while keeping the integrity intact has become the most prominent requirement. Traditionally cryptographic methods were employed to secure networks but the demand of undesirable code size and processing time had given rise to trust-based schemes for addressing the misbehavior of attacks in the IoT networks. With reference to it, several trust-based schemes have been proposed by researchers. However, the prevailing schemes require high computational power and memory s pace; which weakens the network integrity and control. In this context, the paper presents a Light-weight Hidden Markov Model (L/W- HMT) for trust evaluation to alleviate the effect of compromised nodes and restricts the storage of unnecessary data to reduce overhead, memory, and energy consumption. This research work has presented a 2state HMM with Trusted state and compromised state together with essential and unessential output as observation state. Amount of packets forwarded, dropped, modified, and received are the parameters for state transition and emission matrices while the forward likelihood function evaluates the trust value of the node. Simulation performed on MATLAB indicates that the intended L/W-HMT scheme outperforms in connection with detection rate, packet delivery rate and energy consumption, on an average by 6% , 8% and 70% respectively when compared to the similar OADM trus t model.
物联网网络的轻量级隐马尔可夫信任评估模型
物联网(IoT)的开放性使其容易受到各种攻击,因此在保持网络完整性的同时确保网络的安全和稳定已成为最突出的要求。传统上采用加密方法来保护网络,但对不良代码大小和处理时间的需求导致了基于信任的方案来解决物联网网络中攻击的不当行为。在此基础上,研究人员提出了几种基于信任的方案。然而,目前的方案需要高计算能力和存储空间;从而削弱了网络的完整性和控制力。在此背景下,本文提出了一种轻量级隐马尔可夫模型(L/W- HMT)用于信任评估,以减轻受损节点的影响,并限制不必要数据的存储,以减少开销、内存和能耗。本研究提出了一种以可信状态和妥协状态以及必要输出和非必要输出作为观察状态的2状态HMM。转发、丢弃、修改和接收的数据包数量是状态转移矩阵和发射矩阵的参数,转发似然函数评估节点的信任值。在MATLAB上进行的仿真表明,与类似的OADM信任模型相比,预期的L/W-HMT方案在检测率、分组投递率和能耗方面分别平均提高6%、8%和70%。
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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