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首页> 外文期刊>Signal Processing, IET >Modelling and forecasting of signal-to-interference plus noise ratio in femtocellular networks using logistic smooth threshold autoregressive model
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Modelling and forecasting of signal-to-interference plus noise ratio in femtocellular networks using logistic smooth threshold autoregressive model

机译:使用逻辑平稳阈值自回归模型对毫微微小区网络中的信号干扰加噪声比进行建模和预测

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The aim of this paper is to present a non-linear statistical model to fit and forecast the signal-to-interference plus noise ratio (SINR) in two-tier heterogeneous cellular networks which consist of macrocells and femtocells. Since in these networks the number and locations of femtocell base stations (FBS) are variable, SINR forecasting can be useful in some areas such as power control and handover management. So far, linear autoregressive (AR) models have commonly been used in forecasting the received signal strength (rss) in macrocellular networks. However, AR modelling results in high mean square error (MSE) when data are non-linear. This paper focuses on SINR which takes into account signal strength, interference and noise effects. Moreover, macro-femto cellular network is considered. The -test results show that the SINR data are non-linear, leading to use non-linear models instead of AR model. A non-linear logistic smooth threshold AR (LSTAR) model is utilised to model and forecast the SINR data. Kolmogorov-Smirnov (K-S) test demonstrates that LSTAR provides good fitness to the SINR samples. The results indicate that LSTAR model achieves much better performance in modelling and forecasting of SINR data than the AR model.
机译:本文的目的是提出一种非线性统计模型,以拟合和预测由宏小区和毫微微小区组成的两层异构蜂窝网络中的信号干扰加噪声比(SINR)。由于在这些网络中,毫微微小区基站(FBS)的数量和位置是可变的,因此SINR预测在某些领域(例如功率控制和切换管理)可能会很有用。到目前为止,线性自回归(AR)模型已普遍用于预测宏蜂窝网络中的接收信号强度(rss)。但是,当数据为非线性时,AR建模会导致较高的均方误差(MSE)。本文着重于SINR,其中考虑了信号强度,干扰和噪声影响。此外,考虑了宏毫微微蜂窝网络。 -测试结果表明SINR数据是非线性的,从而导致使用非线性模型代替AR模型。非线性逻辑平稳阈值AR(LSTAR)模型用于对SINR数据进行建模和预测。 Kolmogorov-Smirnov(K-S)测试证明LSTAR为SINR样本提供了良好的适应性。结果表明,与AR模型相比,LSTAR模型在SINR数据的建模和预测中具有更好的性能。

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