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Performance Analysis of Gradient Adaptive Lattice Joint Processing Algorithm

机译:梯度自适应格点联合处理算法性能分析

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Tracking speed and stability of adaptive gradient filtering algorithms represented by least mean square (LMS) are restricted for non-stationary circumstance. A joint processor which consist of the gradient lattice filter and transversal LMS linear combiner was designed, the performance of processor were investigated when the input signals were interfered by white noise, Volvo noise and pink noise respectively. The noise canceling computer simulation testified that the joint processor could get stabilization only after 20 iterative operations, and provide stronger ability to boost SNR of weak signal compared with transversal LMS filter. All the performance indices including tracking ability and convergence stability are superior to the transversal LMS algorithm in the same circumstance, and it needs less hardware resource.
机译:对于非平稳情况,以最小均方(LMS)表示的自适应梯度滤波算法的跟踪速度和稳定性受到限制。设计了由梯度点阵滤波器和横向LMS线性组合器组成的联合处理器,研究了当输入信号分别受到白噪声,沃尔沃噪声和粉红噪声干扰时,处理器的性能。噪声消除计算机仿真表明,与横向LMS滤波器相比,联合处理器只有经过20次迭代操作才能获得稳定,并且具有增强微弱信号SNR的能力。在相同情况下,包括跟踪能力和收敛稳定性在内的所有性能指标均优于横向LMS算法,并且需要较少的硬件资源。

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