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A New State-Regularized QRRLS Algorithm With a Variable Forgetting Factor
26
Citations
14
References
2012
Year
Mathematical ProgrammingState EstimationVariable Forgetting FactorAdaptive FilterEngineeringQuantum ComputingForgetting FactorQuantum Optimization AlgorithmStatistical Signal ProcessingRls AlgorithmFiltering TechniqueQuantum AlgorithmComputer EngineeringComputer ScienceAdaptive AlgorithmRegularization (Mathematics)Tracking ControlSignal Processing
This brief proposes a new state-regularized (SR) and QR-decomposition-based (QRD) recursive least squares (RLS) adaptive filtering algorithm with a variable forgetting factor (VFF). It employs the estimated coefficients as prior information to minimize the exponentially weighted observation error, which leads to reduced variance over a conventional RLS algorithm and reduced bias over an L <sub xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">2</sub> -regularized RLS algorithm. To improve the tracking performance, a new measure of convergence status is introduced in controlling the forgetting factor. Consequently, the resultant SR-VFF-RLS algorithm stabilizes the update and adaptively selects the number of measurements by means of the VFF. Improved tracking performance, steady-state mean-square error, and robustness to power-varying inputs over conventional RLS algorithms can be achieved. Furthermore, the proposed algorithm can be implemented using QRD, which leads to a lower roundoff error and more efficient hardware realization than the direct implementation. The effectiveness of the proposed algorithm is demonstrated by computer simulations.
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