RFRA:车辆网络随机森林率适应

Oscar Puñal, Hanzhi Zhang, J. Gross
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引用次数: 18

摘要

由于站点的高移动性,车辆网络中的速率适应比wlan更具挑战性。然而,车辆网络受到某些重复模式的影响,特别是当车站与路边单位通信时。这导致了基于学习的速率自适应方案的提出,该方案针对一定的传播环境进行训练。一般来说,这些方案优于其他方法,但代价是对特定环境具有特殊性。本文提出了一种新的车载网络速率自适应方案RFRA。它是基于机器学习算法随机森林,这是已知优于大多数其他学习方法。首先,我们发现RFRA显著优于其他基于学习的方法。我们还研究了RFRA对学习环境变化的敏感程度,特别是在传播特性方面。我们表明,尽管这降低了我们方案的增益,但RFRA仍然比最先进的费率适应方案提供了更高的性能。
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RFRA: Random Forests Rate Adaptation for vehicular networks
Rate adaptation in vehicular networks is known to be more challenging than in WLANs due to the high mobility of stations. Nevertheless, vehicular networks are subject to certain recurring patterns particularly if stations communicate to roadside units. This has lead to the proposal of learning-based rate adaptation schemes which are trained for a certain propagation environment. In general, these schemes outperform other approaches at the price of being specific for a particular environment. In this paper we present RFRA, a novel rate adaptation scheme for vehicular networks. It is based on the machine-learning algorithm Random Forests which is known to be superior to most other learning approaches. Firstly, we show that RFRA outperforms other learning-based methods significantly. We also study the question how sensitive RFRA is to changes of the learned environment, especially with respect to the propagation characteristics. We show that, although this reduces the gain of our scheme, RFRA still provides a much higher performance than state-of-the-art rate adaptation schemes.
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