Diffusion recursive least squares algorithm based on triangular decomposition

dc.contributor.authorSethakarn Prongnuch
dc.contributor.authorSuchada Sitjongsataporn
dc.contributor.authorTheerayod Wiangtong
dc.date.accessioned2025-07-21T06:09:26Z
dc.date.issued2023-06-23
dc.description.abstract<span lang="EN-US">In this paper, diffusion strategies used by QR-decomposition based on recursive least squares algorithm (DQR-RLS) and the sign version of DQR-RLS algorithm (DQR-sRLS) are introduced for distributed networks. In terms of the QR-decomposition method and Cholesky factorization, a modified Kalman vector is given adaptively with the help of unitary rotation that can decrease the complexity from inverse autocorrelation matrix to vector. According to the diffusion strategies, combine-then-adapt (CTA) and adapt-then-combine (ATC) based on DQR-RLS and DQR-sRLS algorithms are proposed with the combination and adaptation steps. To minimize the cost function, diffused versions of CTA-DQR-RLS, ATC-DQR-RLS, CTA-DQR-sRLS and ATC-DiQR-sRLS algorithms are compared. Simulation results depict that the proposed DQR-RLS-based and DQR-sRLS-based algorithms can clearly achieve the better performance than the standard combine-then-adapt-diffusion RLS (CTA-DRLS) and ATC-DRLS mechanisms.</span>
dc.identifier.doi10.11591/ijece.v13i5.pp5101-5108
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/12587
dc.subjectQR decomposition
dc.subjectLeast-squares function approximation
dc.subject.classificationAdvanced Algorithms and Applications
dc.titleDiffusion recursive least squares algorithm based on triangular decomposition
dc.typeArticle

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