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首页> 外文期刊>IEEE Transactions on Signal Processing >Distributed adaptive algorithms for large dimensional MIMO systems
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Distributed adaptive algorithms for large dimensional MIMO systems

机译:大型MIMO系统的分布式自适应算法。

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摘要

An algorithm for multi-input multi-output (MIMO) adaptive filtering is introduced that distributes the adaptive computation over a set of linearly connected computational modules. Each module has an input and an output and transmits data to and receives data from its nearest neighbor. A gradient-based algorithm for adapting the parameters in each module to minimize the global mean-squared error is derived using principles of back propagation. The performance surface is explored to understand the characteristics of the adaptive algorithm. The minimum mean-squared error is a many to one function of the parameters; therefore, upper bounds on each parameter are used to prevent excessive parameter drift and ensure stability with fixed step sizes. Guidelines for choosing the LMS algorithm step sizes and initial conditions are developed. Several examples illustrate the performance of the algorithm.
机译:引入了一种用于多输入多输出(MIMO)自适应滤波的算法,该算法将自适应计算分布在一组线性连接的计算模块上。每个模块都有一个输入和一个输出,并向其最近的邻居发送数据并从该邻居接收数据。使用反向传播原理,得出了一种基于梯度的算法,用于调整每个模块中的参数以最小化全局均方误差。探索性能表面以了解自适应算法的特性。最小均方误差是参数的多对一函数。因此,使用每个参数的上限来防止过度的参数漂移并确保步长固定时的稳定性。制定了选择LMS算法步长和初始条件的指南。几个示例说明了该算法的性能。

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