基于增量BP神经网络的VANET伪消息滤波

Jiyu Zhang, Liusheng Huang, Hongli Xu, Mingjun Xiao, W. Guo
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引用次数: 11

摘要

为了保护合法车辆免受虚假警报信息的欺骗,提出了一种通用的车辆自组织网络(VANET)过滤模型,以区分有效和虚假警报信息。它是一种双层过滤器,粗过滤器负责快速过滤,细过滤器负责精确过滤。数据流要经过它们才能得到分类结果。粗滤波结合报告的时效性、事故位置的相关性等多个信息来源进行判断,细滤波基于包含增量学习部分的反向传播神经网络(BPNN)进行判断。BPNN模块是指车辆的声誉和对事件的反应行为,邻居的支持也会有很大的帮助。本文将增量式bp神经网络与多数投票、加权投票和贝叶斯方法等几种常用决策逻辑的过滤效果进行了比较。仿真结果表明,该方案具有较好的滤波可靠性和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Incremental BP Neural Network Based Spurious Message Filter for VANET
In order to protect legitimate vehicles from cheating by spurious alert messages, we propose a general filter model for Vehicular Ad-hoc Network (VANET) to distinguish spurious messages from valid ones. It is a two-layer filter, the coarse filter is responsible for rapid filtration and the fine filter is for accurate filtration. The data flow should pass through them to get the classification results. The coarse filter makes a judgment by combining several sources of information such as timeliness of the report and correlation of the accident location while the fine filter is based on Back Propagation Neural Network (BPNN) which includes an incremental learning part. The BPNN module refers to vehicles' reputations and behaviors in response to an event, and the support from neighbors will also be a great help. In this paper, we compare the filtering effect of incremental BPNN with several commonly used decision logics including majority voting, weighted voting and Bayesian method. The simulation results show that our scheme performs better both in filtering reliability and stability.
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