We investigate the performance of a dual-hop intervehicular communications (IVC) system with relay selection strategy. We assume a generalized fading channel model, known as cascaded Rayleigh (also called n*Rayleigh), which involves the product of n independent Rayleigh random variables. This channel model provides a realistic description of IVC, in contrast to the conventional Rayleigh fading assumption, which is more suitable for cellular networks. Unlike existing works, which mainly consider double-Rayleigh fading channels (i.e, n = 2); our system model considers the general cascading order n, for which we derive an approximate analytic solution for the outage probability under the considered scenario. Also, in this study we propose a machine learning-based power allocation scheme to improve the link reliability in IVC. The analytical and simulation results show that both selective decode-and-forward (S-DF) and amplify-and-forward (S-AF) relaying schemes have the same diversity order in the high signal-to-noise ratio regime. In addition, our results indicate that machine learning algorithms can play a central role in selecting the best relay and allocation of transmission power.
翻译:我们用继电器选择策略调查双速间通信系统(IVC)的性能。我们假设了一个普遍衰落的频道模型,称为级联雷利(又称Rayleigh,又称Rayleigh),它涉及独立的Rayleigh随机变数的产物。这个频道模型提供了对IVC的现实描述,而传统的Rayleigh退位假设更适合蜂窝网络。与现有的工程不同,现有工程主要考虑双速间通信退位渠道(即,n=2);我们的系统模型考虑到总级联顺序 n,为此我们为所考虑的假设情景下,我们为超速概率得出了大致的解析性解决办法。此外,在这项研究中,我们提出了一个基于机器学习的权力分配计划,以提高IVC的可靠性。 分析和模拟结果表明,选择性的解码和前向(S-DF)和超向前(S-AF)的中继方案在高信号到音频比率制度中都具有相同的多样性顺序。此外,我们的研究结果表明,机器学习算算算方法可以在选择最佳中继器和传输中继中枢中枢中枢中枢。