{"title":"Improved Zero-Attracting LMS Algorithm for the Adaptive Identification of Sparse System","authors":"Ying Guo, Haodong Wang, Lily Li","doi":"10.1109/ICEICT55736.2022.9909029","DOIUrl":null,"url":null,"abstract":"The ZA-LMS (Zero-Attraction Least Mean Square) algorithm is an efficient sparse system identification algorithm. The core of it is to exert attraction on the weight coefficients in the process of iteration to make the error close to zero as far as possible. However, if the weight coefficients are applied with the same attraction, it leads to the slow convergence of the algorithm due to the insufficient attraction when the weight coefficient is close to zero. And when the weight coefficient is large, the steady-state error of the algorithm will increase due to the immoderate pressure applied. At the same time, the fixed step size and regularization parameter make it difficult for the algorithm to maintain a suitable trade-off between the steady state error and the fixed step size. Therefore, considering the aspects of the attraction operator, step size, and regularization parameter, an improved algorithm named VP-LZA-LMS (Variable Parameters and Logarithmic function based ZA-LMS) is suggested in this essay. Firstly, the original penalty term in ZA-LMS is changed using the logarithmic function, and then a new weight updating equation is derived, which enables the algorithm to exert different attractive force according to the value of the coefficient during updating. Secondly, on the basis of the reduced mean square deviation, new formulas are created that allow the step size and regularization parameter to be changed in real time in line with the error. The imbalance between the steady state error and the convergence rate is alleviated by the step size and regularization parameter's variability. Finally, simulation findings demonstrate that the suggested VP-LZA-LMS algorithm outperforms some existing similar algorithms in terms of convergence and tracking performance under the condition of white and colored input","PeriodicalId":179327,"journal":{"name":"2022 IEEE 5th International Conference on Electronic Information and Communication Technology (ICEICT)","volume":"114 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-08-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2022 IEEE 5th International Conference on Electronic Information and Communication Technology (ICEICT)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/ICEICT55736.2022.9909029","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The ZA-LMS (Zero-Attraction Least Mean Square) algorithm is an efficient sparse system identification algorithm. The core of it is to exert attraction on the weight coefficients in the process of iteration to make the error close to zero as far as possible. However, if the weight coefficients are applied with the same attraction, it leads to the slow convergence of the algorithm due to the insufficient attraction when the weight coefficient is close to zero. And when the weight coefficient is large, the steady-state error of the algorithm will increase due to the immoderate pressure applied. At the same time, the fixed step size and regularization parameter make it difficult for the algorithm to maintain a suitable trade-off between the steady state error and the fixed step size. Therefore, considering the aspects of the attraction operator, step size, and regularization parameter, an improved algorithm named VP-LZA-LMS (Variable Parameters and Logarithmic function based ZA-LMS) is suggested in this essay. Firstly, the original penalty term in ZA-LMS is changed using the logarithmic function, and then a new weight updating equation is derived, which enables the algorithm to exert different attractive force according to the value of the coefficient during updating. Secondly, on the basis of the reduced mean square deviation, new formulas are created that allow the step size and regularization parameter to be changed in real time in line with the error. The imbalance between the steady state error and the convergence rate is alleviated by the step size and regularization parameter's variability. Finally, simulation findings demonstrate that the suggested VP-LZA-LMS algorithm outperforms some existing similar algorithms in terms of convergence and tracking performance under the condition of white and colored input
ZA-LMS (Zero-Attraction Least Mean Square)算法是一种高效的稀疏系统识别算法。其核心是在迭代过程中对权重系数施加吸引力,使误差尽可能接近于零。但是,如果对权重系数施加相同的吸引力,当权重系数接近于零时,由于吸引力不足,导致算法收敛缓慢。当权重系数较大时,由于施加的压力过大,算法的稳态误差会增大。同时,固定的步长和正则化参数使得算法难以在稳态误差和固定步长之间保持适当的权衡。因此,考虑到吸引算子、步长和正则化参数,本文提出了一种改进算法VP-LZA-LMS (Variable Parameters and Logarithmic function based ZA-LMS)。首先利用对数函数改变原ZA-LMS中的罚项,然后推导出新的权值更新方程,使算法在更新过程中根据系数的取值施加不同的吸引力。其次,在均方差减小的基础上,建立了允许步长和正则化参数随误差实时变化的新公式;步长和正则化参数的可变性缓解了稳态误差与收敛速率之间的不平衡。最后,仿真结果表明,在白色和彩色输入条件下,所提出的VP-LZA-LMS算法在收敛性能和跟踪性能方面优于现有的一些类似算法