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首页> 外文期刊>Mobile Computing, IEEE Transactions on >Data-Driven Channel Modeling Using Spectrum Measurement
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Data-Driven Channel Modeling Using Spectrum Measurement

机译:使用频谱测量的数据驱动通道建模

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Dynamic spectrum access has been a subject of extensive study in recent years. The increasing volume of literature calls for better understanding of the characteristics of current spectrum utilization as well as better tools for analysis. A number of measurement studies have been conducted recently, revealing previously unknown features. On the other hand, analytical studies largely continues to rely on standard models like the two-state Markov (Gilbert-Elliot) model. In this paper, we present an alternative, stochastic differential equation (SDE) based spectrum utilization model that captures dynamic changes in channel conditions induced by primary users’ activities. The SDE model is in closed form, can generate spectrum dynamics as a temporal process, and is shown to provides very good fit for real spectrum measurement data. We show how synthetic spectrum data can be generated in a straightforward manner using this model to enable realistic simulation studies. Moreover, we show that the SDE model can be viewed as a more general modeling framework (continuous in time and continuous in value) than commonly used discrete Markovian models: it is defined by only a few parameters but can be used to obtain the transition matrix of any -state Markov model. This is verified by comparing the two-state GE model generated by the SDE model and that trained directly from the data. We show that the GE model is a good fit for the (quantized) data, thereby a fine choice when binary descriptions of the channel condition is sufficient. However, when highly resolution (in channel condition) is needed, the SDE model is much more accurate than an -state model, an- is much easier to train and store.
机译:近年来,动态频谱访问已成为广泛研究的主题。越来越多的文献要求对当前频谱利用的特征有更好的了解,并需要更好的分析工具。最近进行了许多测量研究,揭示了以前未知的功能。另一方面,分析研究在很大程度上仍然依赖于标准模型,例如二态马尔可夫(Gilbert-Elliot)模型。在本文中,我们提出了一种基于随机微分方程(SDE)的频谱利用率模型,该模型可以捕获由主要用户的活动引起的信道条件的动态变化。 SDE模型为封闭形式,可以作为时间过程生成频谱动力学,并且显示出非常适合真实的频谱测量数据。我们展示了如何使用此模型以直接的方式生成合成光谱数据,以实现现实的仿真研究。此外,我们证明,与常用的离散马尔可夫模型相比,SDE模型可以看作是更通用的建模框架(时间连续和价值连续):它仅由几个参数定义,但可用于获得过渡矩阵状态马尔可夫模型。通过比较由SDE模型生成的两态GE模型和直接从数据训练得到的两态GE模型,可以验证这一点。我们表明,GE模型非常适合(量化)数据,因此当信道条件的二进制描述足够时,是一个很好的选择。但是,当需要高分辨率(在信道条件下)时,SDE模型比-state模型更为准确,而-则更容易训练和存储。

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