一种优化的基于深度学习的VANET自利节点检测信任机制

N. Jyothi, Rekha Patil
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引用次数: 7

摘要

本研究旨在开发一种基于优化深度学习的车辆自组织网络(VANET)信任机制,用于自私节点检测。设计/方法/方法作者构建了一个基于深度学习的优化信任机制,该机制可以消除自私VANET节点产生的恶意内容。该基于深度学习的优化信任框架结合了基于深度信念网络的红狐优化算法。提出了一种基于深度学习的非视线状态下车辆类型识别优化模型。这种身份验证方案同时满足VANET环境的安全和隐私目标。使用车辆位置验证消息的真实性和完整性,以确定信任级别。位置通过距离和时间来验证。它根据时间和距离来识别发送者是否在其实际位置。使用基于深度学习的优化信任模型来检测视线和非视线条件下存在的障碍物,以降低事故率。实验结果在准确率、精密度、召回率、计算成本和通信开销等方面均优于以往的预测结果。实验使用Network Simulator Version 2模拟器进行,并使用不同的性能指标进行评估,包括简单攻击和意见篡改攻击的计算成本、准确性、精度、召回率和通信开销。然而,该方法在计算成本、准确度、精密度、召回率和通信开销等方面均优于k近邻和人工神经网络等现有方法。因此,该方法具有很强的抗简单攻击和意见篡改攻击的能力。本文提出了一种基于深度学习的优化信任框架,用于VANET中的信任预测。基于深度学习的优化信任模型用于评估事件消息发送方和事件消息的完整性和准确性。
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An optimized deep learning-based trust mechanism In VANET for selfish node detection
Purpose This study aims to develop a trust mechanism in a Vehicular ad hoc Network (VANET) based on an optimized deep learning for selfish node detection. Design/methodology/approach The authors built a deep learning-based optimized trust mechanism that removes malicious content generated by selfish VANET nodes. This deep learning-based optimized trust framework is the combination of the Deep Belief Network-based Red Fox Optimization algorithm. A novel deep learning-based optimized model is developed to identify the type of vehicle in the non-line of sight (nLoS) condition. This authentication scheme satisfies both the security and privacy goals of the VANET environment. The message authenticity and integrity are verified using the vehicle location to determine the trust level. The location is verified via distance and time. It identifies whether the sender is in its actual location based on the time and distance. Findings A deep learning-based optimized Trust model is used to detect the obstacles that are present in both the line of sight and nLoS conditions to reduce the accident rate. While compared to the previous methods, the experimental results outperform better prediction results in terms of accuracy, precision, recall, computational cost and communication overhead. Practical implications The experiments are conducted using the Network Simulator Version 2 simulator and evaluated using different performance metrics including computational cost, accuracy, precision, recall and communication overhead with simple attack and opinion tampering attack. However, the proposed method provided better prediction results in terms of computational cost, accuracy, precision, recall, and communication overhead than other existing methods, such as K-nearest neighbor and Artificial Neural Network. Hence, the proposed method highly against the simple attack and opinion tampering attacks. Originality/value This paper proposed a deep learning-based optimized Trust framework for trust prediction in VANET. A deep learning-based optimized Trust model is used to evaluate both event message senders and event message integrity and accuracy.
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