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Parallel-Pipelined Architecture for the Kalman Based Adaptive Equalizer

机译:基于卡尔曼的自适应均衡器的并行流水线架构

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The requirement of many data communication systems is to employ an adaptive equalizer to minimize the inter-symbol interference. Several adaptive Kalman equalizers have been reported in literature. In these works either the Least Mean Square (LMS) or the Recursive Least Squares (RLS) or the Kalman algorithm have been adopted for channel estimation. The Kalman estimation method can lead to significant improvement in the receiver bit error rate (BER) performance. The use of a Kalman filter for channel estimation leads to a state model of size 2n×2n, where n is the number of filter taps. These solutions are computationally intensive and follow a nonlinear relation in the observation equation. New methods have to be followed to solve the non-linear model resulting in complex parallel structures. This paper proposes a new approach for the real time implementation of the adaptive Kalman equalizer by providing two Kalman filters that run concurrently to perform the estimation and detection. Thus the Kalman estimator operates in parallel with the Kalman filter based equalizer following a linear model and the size of the state matrix reduces to n×n. Parallel-Pipelined architectures are proposed to perform the time update and measurement update equations of the Kalman equalizer and Kalman estimator. The functionality of the proposed architecture has been verified through VHDL simulation. The synthesis results are presented. It is shown that the convergence performance of the proposed approach is superior to that of the Kalman-RLS and Kalman-LMS adaptive equalizers.
机译:许多数据通信系统的要求是采用自适应均衡器来最小化符号间干扰。在文献中报告了几种自适应卡尔曼均衡器。在这些工作中,已经采用了最小均方(LMS)或递归最小二乘(RLS)或卡尔曼算法用于信道估计。卡尔曼估计方法可以导致接收器误码率(BER)性能的显着改进。用于信道估计的卡尔曼滤波器导致尺寸2n×2n的状态模型,其中n是滤波器的数量。这些解决方案在计算密集并遵循观察方程中的非线性关系。必须遵循新方法来解决非线性模型,从而产生复杂的并行结构。本文提出了一种新的方法,即通过提供两种Kalman滤波器来执行Adaptive Kalman均衡器的实时实现,该筛选器同时运行以执行估计和检测。因此,Kalman估计器与基于Kalman滤波器的均衡器并联操作,然后在线性模型,状态矩阵的大小减小到n×n。建议并行流水线架构执行卡尔曼均衡器和卡尔曼估计器的时间更新和测量更新方程。通过VHDL仿真验证了所提出的体系结构的功能。呈现了合成结果。结果表明,所提出的方法的收敛性能优于卡尔曼-RLS和卡尔曼-LMS自适应均衡器的收敛性能。

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