基于q-双曲函数的广义样条自适应滤波算法

Shiwei Yun , Sihai Guan , Chuanwu Zhang , Bharat Biswal
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引用次数: 0

摘要

基于类双曲函数目标函数设计自适应滤波算法的优越性,提出了类双曲函数目标函数设计广义样条自适应滤波算法。具体地说,通过引入q-变形双曲函数作为代价函数,提出了一系列广义的新的SAF算法,命名为SAF- qdhsi, SAF- qdhco, SAF- qdhta &;SAF-qDHSE算法。然后,通过详细的均值收敛和计算复杂度分析对所提出的算法进行了理论论证;其次,通过数据仿真验证了不同q值对新算法性能的影响;即使面对系统突变,新算法在高斯噪声和非高斯噪声的干扰下仍有较好的性能;最后,通过工程实测数据对新算法进行了验证,结果表明新算法与现有算法相比具有更好的收敛性和鲁棒性。综上所述,本文提出的基于新代价函数的广义算法在非线性系统辨识中更为有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized spline adaptive filtering algorithm based on q-hyperbolic function
Based on the superiority of adaptive filtering algorithms designed with hyperbolic function-like objective functions, this paper proposes generalized spline adaptive filtering (SAF) algorithms designed with hyperbolic function-like objective functions. Specifically, a series of generalized new SAF algorithms are proposed by introducing the q-deformed hyperbolic function as the cost function, named SAF-qDHSI, SAF-qDHCO, SAF-qDHTA & SAF-qDHSE algorithms, respectively. Then, the proposed algorithm is theoretically demonstrated with detailed mean convergence and computational complexity analysis; secondly, the effect of different q values on the performance of the new algorithm is verified through data simulation; the new algorithm still has better performance under the interference of Gaussian noise and non-Gaussian noise even when facing the system mutation; finally, the new algorithm is verified through the measured engineering data, and the results show that the new algorithm has better convergence and robustness compared with the existing algorithm. In conclusion, the generalized algorithm based on the new cost function proposed in this paper is more effective in nonlinear system identification.
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