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A Reinforcement Learning Approach to Enhance the Trust Level of MANETs

机译:一种增强学习方法以提高MANET的信任度

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A Mobile ad-hoc network (MANET) consists of many freely interconnected and autonomous nodes which are often composed of mobile devices. MANETs are decentralized and self-organized wireless communication systems which are able to arrange themselves in various ways and have no fixed infrastructure. Since MANETs are mobile, the network topology changes rapidly and unpredictably. Because of this nature of the mobility of the nodes in MANETs, the main problems that occur are, unreliable communications and weak security where the data can be compromised or easily misused. Therefore, we propose a trust enhancement approach to a MANET, which is based on RLTM (Reinforcement Learning Trust Manager), a set of algorithms that considers Ad-hoc On-demand Distance Vector (AODV) protocol as the specific protocol, via Reinforcement Learning (RL) and Deep Learning concepts. The proposed system consists of an RL agent that, learns to detect and give predictions on trustworthy nodes, reputed nodes, and malicious nodes and to classify them. The identified parameters from AODV simulation using Network Simulator-3(NS-3) were given to the designed RNN (Recurrent Neural Network) model and results were evaluated.
机译:移动自组织网络(MANET)由许多自由互连的自治节点组成,这些节点通常由移动设备组成。 MANET是分散的,自组织的无线通信系统,它们能够以各种方式进行布置,并且没有固定的基础结构。由于MANET是移动的,因此网络拓扑会迅速且不可预测地变化。由于MANET中节点的移动性的这种性质,出现的主要问题是通信不可靠和安全性较弱,在这些情况下数据可能会受到威胁或容易被滥用。因此,我们提出了一种针对MANET的信任增强方法,该方法基于RLTM(增强学习信任管理器),RLTM是通过增强学习将Ad-hoc按需距离矢量(AODV)协议视为特定协议的一组算法。 (RL)和深度学习概念。所提出的系统由RL代理组成,该RL代理学会检测可信赖节点,信誉良好的节点和恶意节点并对其进行预测,并对它们进行分类。使用Network Simulator-3(NS-3)从AODV仿真中识别出的参数被提供给设计的RNN(递归神经网络)模型,并对结果进行评估。

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