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Adaptive Optimization of Least-Squares Tracking Algorithms: With Applications to Adaptive Antenna Arrays for Randomly Time-Varying Mobile Communications Systems

机译:最小二乘跟踪算法的自适应优化:应用于随时间变化的移动通信系统的自适应天线阵列

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Adaptive antenna arrays are used for reducing the effects of interference and increasing capacity in mobile communications systems. Typical algorithms recursively compute the antenna weights that minimize the weighted error function (at discrete times kh, k = 1,2,..., for a sampling interval h) ∑ (α{sup}(k-l)[e{sub}l(W)]{sup}2) (l from 1 to k), where e{sub}l(W) is a measure of the reception error at time lh with antenna weight vector W, and α < 1. The forgetting factor α < 1 allows tracking as conditions change and the minimization is used only to get the weights. The average detection error rate depends heavily on the chosen value of α, whose optimal value can change rapidly in time, perhaps significantly in seconds. We add another adaptive loop that tracks the optimal value of α. and greatly improves the operation when the environment is randomly time-varying. The additional adaptive loop is based on an approximation to a natural "gradient descent" method. The algorithm is practical and can improve the performance considerably. In terms of average detection error rates and for all of the scenarios tested, the new system tracks the optimal value of α well, and always performs better (sometimes much better) than the original algorithm that uses any fixed value of α. Although the initial motivation arises in adaptive antennas, the method can be used to improve algorithms for tracking parameters of time-varying nonlinear systems, where similar issues are involved.
机译:自适应天线阵列用于减少干扰的影响并增加移动通信系统中的容量。典型算法递归计算最小化加权误差函数的天线权重(在离散时间kh,k = 1,2,...,对于采样间隔h)∑(α{sup}(kl)[e {sub} l (W)] {sup} 2)(l从1到k),其中e {sub} l(W)是在时间lh时天线权重向量W且α<1的接收误差的量度。 α<1允许在条件变化时进行跟踪,而最小化仅用于获取权重。平均检测错误率在很大程度上取决于所选的α值,其最佳值会随时间快速变化,可能在几秒钟内变化很大。我们添加了另一个自适应循环,该循环跟踪α的最佳值。当环境随时间变化时,可以大大改善操作。附加的自适应回路基于对自然“梯度下降”方法的近似。该算法是实用的,可以大大提高性能。在平均检测错误率和所有测试场景方面,新系统都能很好地跟踪α的最佳值,并且始终比使用任何固定α值的原始算法表现更好(有时要好得多)。尽管最初的动机来自于自适应天线,但是该方法可用于改进跟踪时变非线性系统参数的算法,其中涉及类似问题。

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