Publication | Closed Access
Solving Complex-Valued Time-Varying Linear Matrix Equations via QR Decomposition With Applications to Robotic Motion Tracking and on Angle-of-Arrival Localization
74
Citations
39
References
2021
Year
Cvtvqr-lme ModelEngineeringNeural NetworkField RoboticsCvtv-lme ProblemsAngle-of-arrival LocalizationMatrix TheoryLocalizationState EstimationNonlinear System IdentificationSystems EngineeringMatrix MethodTracking ControlComputer EngineeringInverse ProblemsQr DecompositionRobotic Motion TrackingMatrix AnalysisSignal Processing
The problem of solving linear equations is considered as one of the fundamental problems commonly encountered in science and engineering. In this article, the complex-valued time-varying linear matrix equation (CVTV-LME) problem is investigated. Then, by employing a complex-valued, time-varying QR (CVTVQR) decomposition, the zeroing neural network (ZNN) method, equivalent transformations, Kronecker product, and vectorization techniques, we propose and study a CVTVQR decomposition-based linear matrix equation (CVTVQR-LME) model. In addition to the usage of the QR decomposition, the further advantage of the CVTVQR-LME model is reflected in the fact that it can handle a linear system with square or rectangular coefficient matrix in both the matrix and vector cases. Its efficacy in solving the CVTV-LME problems have been tested in a variety of numerical simulations as well as in two applications, one in robotic motion tracking and the other in angle-of-arrival localization.
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