Mitigating Black Hole Attacks in Routing Protocols Using a Machine Learning-Based Trust Model

Q2 Decision Sciences
Sivagurunathan Shanmugam, Muthu Ganeshan V., Prathapchandran K., J. T.
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引用次数: 2

Abstract

Many application domains gain considerable advantages with the internet of things (IoT) network. It improves our lifestyle towards smartness in smart devices. IoT devices are mostly resource-constrained such as memory, battery, etc. So it is highly vulnerable to security attacks. Traditional security mechanisms can't be applied to these devices due to their restricted resources. A trust-based security mechanism plays an important role to ensure security in the IoT environment because it consumes only fewer resources. Thus, it is essential to evaluate the trustworthiness among IoT devices. The proposed model improves trusted routing in the IoT environment by detecting and isolating malicious nodes. This model uses reinforcement learning (RL) where the agent learns the behavior of the node and isolates the malicious nodes to improve the network performance. The model focuses on IoT with the routing protocol for low power and lossy network (RPL) and counters the blackhole attack.
使用基于机器学习的信任模型减轻路由协议中的黑洞攻击
物联网(IoT)网络使许多应用领域获得了相当大的优势。它通过智能设备改善了我们的生活方式。物联网设备大多是资源受限的,如内存、电池等。因此,它非常容易受到安全攻击。由于这些设备的资源有限,传统的安全机制无法应用于这些设备。基于信任的安全机制消耗的资源较少,对确保物联网环境的安全起着重要作用。因此,评估物联网设备之间的可信度至关重要。该模型通过检测和隔离恶意节点,改进了物联网环境中的可信路由。该模型使用强化学习(RL), agent学习节点的行为并隔离恶意节点以提高网络性能。该模型以低功耗和有损网络(RPL)路由协议的物联网为重点,对抗黑洞攻击。
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来源期刊
International Journal of Sociotechnology and Knowledge Development
International Journal of Sociotechnology and Knowledge Development Decision Sciences-Information Systems and Management
CiteScore
4.20
自引率
0.00%
发文量
35
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