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首页> 外文期刊>Internet of Things Journal, IEEE >Outage Probability Performance Analysis and Prediction for Mobile IoV Networks Based on ICS-BP Neural Network
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Outage Probability Performance Analysis and Prediction for Mobile IoV Networks Based on ICS-BP Neural Network

机译:基于ICS-BP神经网络的移动IOV网络中断概率性能分析与预测

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摘要

In the field of transportation, the Internet of Vehicles (IoV) is an important component of the Internet of Things. The vehicle-to-vehicle communication is particularly challenging in mobile IoV networks because they are operated in complex and highly variable environments. The mobile IoV transmission interruption level can be evaluated by the outage probability (OP) performance. If the OP performance can be analyzed and predicted accurately, the Quality of Service (QoS) in the mobile IoV networks can be improved. However, the analysis and prediction of mobile IoV transmission channels is very challenging because they are highly dynamic. In this article, the analysis and prediction of the OP performance for mobile IoV networks are investigated. A hybrid decode-amplify-forward (HDAF) relaying scheme with transmit antenna selection (TAS) is considered. The exact OP expressions are derived in a closed form, and the analytical results are verified. To realize the real-time analysis of the OP performance, an intelligent OP prediction algorithm based on the improved cuckoo search (ICS) is presented. The proposed algorithm is compared with different methods and the results show that it has a better OP prediction performance. The prediction accuracy of ICS-BP can be increased by 51.8% compared with the existing algorithms.
机译:在运输领域,车辆(IOV)是事物互联网的重要组成部分。车辆到车辆通信在移动IOV网络中尤其具有挑战性,因为它们在复杂和高度可变的环境中运行。可以通过中断概率(OP)性能来评估移动IOV传输中断级别。如果可以准确地分析和预测操作操作,可以提高移动IOV网络中的服务质量(QoS)。然而,移动IOV传输信道的分析和预测非常具有挑战性,因为它们是高度动态的。在本文中,研究了移动IOV网络的OP性能的分析和预测。考虑具有发射天线选择(TAS)的混合解码扩增(HDAF)中继方案。确切的操作表达式以封闭形式导出,并验证分析结果。为了实现OP性能的实时分析,提出了一种基于改进的Cuckoo搜索(IC)的智能OP预测算法。将所提出的算法与不同的方法进行比较,结果表明它具有更好的OP预测性能。与现有算法相比,ICS-BP的预测精度可以增加51.8%。

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