Predicting Wireless Channel Quality by Means of Moving Averages and Regression Models

Gabriele Formis, S. Scanzio, G. Cena, A. Valenzano
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引用次数: 1

Abstract

The ability to reliably predict the future quality of a wireless channel, as seen by the media access control layer, is a key enabler to improve performance of future industrial networks that do not rely on wires. Knowing in advance how much channel behavior may change can speed up procedures for adaptively selecting the best channel, making the network more deterministic, reliable, and less energy-hungry, possibly improving device roaming capabilities at the same time. To this aim, popular approaches based on moving averages and regression were compared, using multiple key performance indicators, on data captured from a real Wi-Fi setup. Moreover, a simple technique based on a linear combination of outcomes from different techniques was presented and analyzed, to further reduce the prediction error, and some considerations about lower bounds on achievable errors have been reported. We found that the best model is the exponential moving average, which managed to predict the frame delivery ratio with a 2.10% average error and, at the same time, has lower computational complexity and memory consumption than the other models we analyzed.
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用移动平均和回归模型预测无线信道质量
可靠地预测未来无线信道质量的能力,如媒体访问控制层所见,是提高未来不依赖有线的工业网络性能的关键因素。提前了解信道行为可能发生的变化,可以加快自适应地选择最佳信道的过程,使网络更加确定、可靠、更节能,同时可能提高设备漫游能力。为此,使用多个关键性能指标,对从真实Wi-Fi设置中捕获的数据,比较了基于移动平均线和回归的流行方法。此外,提出并分析了一种基于不同技术结果线性组合的简单技术,以进一步减小预测误差,并报道了一些关于可实现误差下界的考虑。我们发现最好的模型是指数移动平均模型,它能够以2.10%的平均误差预测帧传送率,同时,与我们分析的其他模型相比,它具有更低的计算复杂度和内存消耗。
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