基于模糊逻辑的边缘车辆自组织网络信任估计

Mahmudul Hasan, Mosarrat Jahan, Shaily Kabir, Christian Wagner
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引用次数: 3

摘要

车辆的信任估计对车辆自组织网络(VANETs)的正常运行至关重要,因为它通过识别可靠的车辆来增强其安全性。然而,准确的信任估计仍然很遥远,因为现有的工作并没有考虑到车辆的所有恶意特征,例如丢弃或延迟数据包,更改内容和注入虚假信息。此外,这里不能保证消息的数据一致性,因为它们要经过多条路径,很容易被恶意中继车辆更改。这导致难以衡量信任计算中内容篡改的影响。此外,vanet的不可靠无线通信和不可预测的车辆行为可能会给信任估计带来不确定性,从而影响其准确性。在这种观点下,我们提出了用模糊集捕获的三个信任因子来充分模拟车辆的恶意属性,并应用基于模糊逻辑的算法来估计其信任。我们还引入了一个参数来评估内容修改对信任计算的影响。实验结果表明,该方法检测恶意车辆具有较高的准确率和召回率,决策准确率高于现有方法。
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A Fuzzy Logic-Based Trust Estimation in Edge-Enabled Vehicular Ad Hoc Networks
Trust estimation of vehicles is vital for the correct functioning of Vehicular Ad Hoc Networks (VANETs) as it enhances their security by identifying reliable vehicles. However, accurate trust estimation still remains distant as existing works do not consider all malicious features of vehicles, such as dropping or delaying packets, altering content, and injecting false information. Moreover, data consistency of messages is not guaranteed here as they pass through multiple paths and can easily be altered by malicious relay vehicles. This leads to difficulty in measuring the effect of content tampering in trust calculation. Further, unreliable wireless communication of VANETs and unpredictable vehicle behavior may introduce uncertainty in the trust estimation and hence its accuracy. In this view, we put forward three trust factors - captured by fuzzy sets to adequately model malicious properties of a vehicle and apply a fuzzy logic-based algorithm to estimate its trust. We also introduce a parameter to evaluate the impact of content modification in trust calculation. Experimental results reveal that the proposed scheme detects malicious vehicles with high precision and recall and makes decisions with higher accuracy compared to the state-of-the-art.
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