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首页> 外文期刊>IEEE Transactions on Signal Processing >A New Theoretical Model for the Pseudo Affine Projection Algorithm for Unity Step Size and Autoregressive Inputs
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A New Theoretical Model for the Pseudo Affine Projection Algorithm for Unity Step Size and Autoregressive Inputs

机译:统一步长和自回归输入的伪仿射投影算法的新理论模型

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The behavior of the Pseudo Affine Projection (PAP) adaptive algorithm is based on the projection of the present input vector onto a subspace defined by a collection of previous input vectors. Existing analytic models for PAP behavior have considered such a projection using expressions that are in fact valid only after a short initialization period. As a consequence, such models are capable of accurately predict the algorithm convergence behavior whenever the parameters of the problem render the effects of this initialization period unimportant. When this is not the case, the PAP behavior predicted by these models can deviate significantly from reality. This work studies the effect of the initialization on the convergence behavior of the PAP algorithm. The analysis is performed for real-valued signals and for unity step-size (fastest convergence). A new analytical model is derived that incorporates a deterministic initial transient phase at the very beginning of the adaptation process. This phase is due both to the arbitrary initialization of the coefficient vector and to the projection subspace, and is responsible for the modified algorithm behavior. Recursive deterministic equations are derived for the mean weight and mean-square error behaviors for a large number of adaptive filter taps, when compared to the algorithm order. Steady-state theoretical equations are also derived. Monte Carlo simulations show significant modeling improvements for specific parameter sets, both during transient and in steady-state, when compared to the most accurate existing PAP model.
机译:伪仿射投影(PAP)自适应算法的行为基于当前输入向量到由先前输入向量集合定义的子空间上的投影。现有的针对PAP行为的分析模型已经使用这样的表达式考虑了这种预测,这些表达式实际上仅在短暂的初始化时间之后才有效。结果,每当问题的参数使该初始化周期的影响不重要时,这样的模型就能够准确地预测算法的收敛行为。如果不是这种情况,则由这些模型预测的PAP行为可能与实际情况有很大出入。这项工作研究初始化对PAP算法的收敛行为的影响。对实值信号和统一步长(最快收敛)进行分析。得出了一个新的分析模型,该模型在适应过程的最开始就包含了确定的初始瞬态阶段。该阶段既由于系数矢量的任意初始化又由于投影子空间而引起,并且负责修改的算法行为。与算法阶数相比,针对大量自适应滤波器抽头的平均权重和均方误差行为,推导了确定性方程。还推导出稳态理论方程。与最精确的现有PAP模型相比,蒙特卡洛仿真显示了特定参数集在瞬态和稳态下的显着建模改进。

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