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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >Asymptotically Efficient Recursive Identification of FIR Systems With Binary-Valued Observations
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Asymptotically Efficient Recursive Identification of FIR Systems With Binary-Valued Observations

机译:具有二进制值观测的FIR系统的渐近有效递归识别

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摘要

This paper considers the identification problem of finite impulse response (FIR) systems with binary-valued observations under the assumption of fixed threshold and bounded persistently excitations. A recursive projection algorithm is constructed to estimate the unknown parameter. For first-order FIR systems, the convergence properties of the algorithm are analyzed theoretically. With mild conditions on the weight coefficients in the parameter update, the algorithm is proved to be convergent in mean square and the convergence rate can be the reciprocal of the number of observations, which has the same order as the optimal estimation when the system output is exactly known. Furthermore, it is also shown that the Cramer-Rao (CR) lower bound is achieved asymptotically with proper weight coefficients, which indicates that the algorithm is optimal in the sense of asymptotic efficiency. Some numerical examples are simulated to demonstrate the effectiveness of the proposed algorithm in both first-order and high-order FIR systems.
机译:本文考虑了在固定阈值的假设下具有二进制值观测的有限脉冲响应(FIR)系统的识别问题,并在固定阈值和有界持续激励下进行了二进制值观测。构建递归投影算法以估计未知参数。对于一阶FIR系统,理论上分析了算法的收敛性。对于参数更新中的重量系数的温和条件,证明算法在均方中是会聚,收敛速度可以是观察数的倒数,这在系统输出时具有与最佳估计相同的顺序恰好知道。此外,还表明,用适当的重量系数渐近的克拉梅-RaO(Cr)下染色,这表明该算法在渐近效率感最佳。模拟一些数值示例以展示所提出的算法在一阶和高阶FIR系统中的有效性。

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