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Channel and Data Estimation for Ad Hoc Networks and Cognitive Radio

机译:Ad Hoc网络和认知无线电的信道和数据估计

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Estimation of channel and data characteristics by the receiver is important in adaptive wireless transmission protocols and in cognitive radio. This paper formulates the estimation problem with the help of an illustrative example from the IEEE 802.11a OFDM standard. The problem reduces to the estimation of the common component variance and mixing probabilities in a finite Gaussian mixture, with known values for component means. Using the known component means, μ_1, ... , μ_M, a set of non-linear transformations, sinh μ_ix and cosh μ_ix of the data (mixture random variable X) are used to develop convergent and computationally efficient estimators for both the noise variance and the vector of symbol probabilities. The estimation equations can be implemented recursively or with a batch processing algorithm. Asymptotic variances of the estimates and the Cramer-Rao minimum variance bounds are derived. The estimates converge to true unknowns even when the sequences of noise and data symbols are dependent sequences. The OFDM example is simulated with parameters corresponding to the highest acceptable error rate. For a time-varying channel model chosen from the literature, it is shown that our estimator receives considerably more than adequate amount of data during an average time interval of unchanging channel characteristics. Analytical results, numerical results and related issues are discussed.
机译:在自适应无线传输协议和认知无线电中,接收机对信道和数据特性的估计很重要。本文借助一个来自IEEE 802.11a OFDM标准的示例来制定估计问题。该问题简化为对有限分量的高斯混合中公共分量方差和混合概率的估计,并且具有已知的分量均值。使用已知的分量均值μ_1,...,μ_M,数据的非线性转换集sinhμ_ix和coshμ_ix(混合随机变量X)来针对两个噪声方差开发收敛性和计算效率高的估计量和符号概率的向量。估计方程式可以递归实现,也可以通过批处理算法实现。得出估计值的渐近方差和Cramer-Rao最小方差边界。即使噪声和数据符号的序列是从属序列,估计也收敛到真正的未知数。使用与最高可接受错误率相对应的参数来模拟OFDM示例。对于从文献中选择的时变信道模型,结果表明,在信道特性不变的平均时间间隔内,我们的估计器接收到的数据量要远远超过适当数量的数据。讨论了分析结果,数值结果和相关问题。

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