基于遗传算法的车载Ad Hoc网络恶意节点防范

Chetna Khurana, P. Yadav
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引用次数: 2

摘要

VANET通过移动自组织网络(manet)实现了令人兴奋的功能。VANET是一项主导发明,可以提供实用的车辆到路边基础设施(V2I)通讯和车辆到车辆(V2V)。vanet是一种自然的配置方案,其中节点是汽车,并使用WIFI技术来形成网络。VANETs是一个经过认证的智能交通系统(ITS),其重点是道路保护,游客健康和交通效率。在现有的工作中,供应节点使用额外的数据很好地识别为伪应答包(PRREP)。供应节点将整个到达包裹的所有细节保存在查找图中,选择为RREP_T。该图表通过POP和push进程以升序方式保存一系列的prerep集合。如果图表顺序有任何偏差,将测量通过恶意节点获得的prerep系列,并通过源拒绝。最短的数列数字给出峰值优先级,并通过数列数字测量。具有不规则序列数字的节点被视为恶意节点,并通过网络提供传输消息。但是,依赖序列号对网络中恶意节点的检测并不是一个有用的概念。在我们的工作中,我们通过使用遗传算法来恢复网络中的性能来克服这个问题。如果节点的适应度值小于阈值,则认为该节点为行为不良节点。通过这种技术可以通过去除恶意节点来提高网络的性能。我们在仿真中使用NS2来提供实现工作,以提供网络中的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prevention of Malicious Nodes Using Genetic Algorithm in Vehicular Ad Hoc Network
VANET a thrilling function via mobile ad-hoc network (MANETs). VANET is a dominant invention which can supply practical vehicle to roadside infrastructure (V2I) communiqué and vehicle to vehicle (V2V). VANETs are a natural configure scheme wherein node are automobile and WIFI technology are used to shape networks. VANETs is a accredited construct intelligent transportation system (ITS) which emphasis on road protection, visitor well being and traffic effectiveness. In existing work, the supply node use extra data well identified as pseudo reply packet (PRREP). Supply node saves all details regarding entire arriving package in look-up chart chosen as RREP_T. The chart save series of PRREP set in ascending way via using POP and PUSHES processes. If there is any kind of deviation in chart order will be measured to PRREP series got via malicious node and will be rejected via source. Shortest series digits gives peak priority and it is measured via series digits. Nodes that have irregular series digits are measured as malicious node and supply transmit message via network. But depending on sequence number is not useful concept for the detection of malicious node in the network. In the proposed work, we overcome this problem via usage of genetic algorithm to recover performance in network. If the node has less fitness value than the threshold value than it is considered as a misbehaviour node. By this technique we can improve the performance of network by removing malicious nodes. We used NS2 in the simulation to provide the implementation work to provide the efficiency in the network.
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