A novel approach for malicious nodes detection in ad-hoc networks based on cellular learning automata

Amir Bagheri Aghababa, Amirhosein Fathinavid, Abdolreza Salari, Seyedeh Elaheh Haghayegh Zavareh
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引用次数: 5

Abstract

There are some fields in ad-hoc networks that are more highlighted these days, such as energy consumption, quality of service and security. Among these, security has been predominantly concerned in military, civil and educational applications. In security problem, suspect nodes detection or abnormal behavior nodes is one of the most important parts. We have addressed the malicious nodes detection problem in ad-hoc networks using special type of learning automata in an irregular network. We have used the irregular cellular learning automata to detect anomalies in two levels. We have also rigorously evaluated the performance of our approach by simulating it with MATLAB and Glomosim simulator and have compared our solution with a powerful similar learning automata-based protocol named LAID. The simulation results proofs that our approach is more promising.
基于元胞学习自动机的自组织网络恶意节点检测新方法
在ad-hoc网络中,有一些领域现在更加突出,比如能耗、服务质量和安全性。其中,安全主要涉及军事、民用和教育方面的应用。在安全问题中,可疑节点或异常行为节点的检测是最重要的环节之一。我们在不规则网络中使用特殊类型的学习自动机解决了ad-hoc网络中的恶意节点检测问题。我们使用不规则细胞学习自动机来检测两个层次的异常。我们还通过MATLAB和Glomosim模拟器对我们的方法进行了严格的性能评估,并将我们的解决方案与一个功能强大的类似的基于学习自动机的协议lay进行了比较。仿真结果证明了该方法的可行性。
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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