Dynamic data processing : recursive least-squares
Language: English Series: Series on mathematical geodesy and positioningPublication details: Delft Academic Press,VSSD 2001 The NetherlandsDescription: 241pISBN:- 9789040719769
- 9040719764
- 511.35 T297d
Item type | Current library | Collection | Call number | URL | Status | Date due | Barcode | Item holds | |
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PK Kelkar Library, IIT Kanpur | General Stacks | 511.35 T297d (Browse shelf(Opens below)) | Link to resource | Checked out to ANAND MEHROTRA (S1920426600) | 17/07/2025 | A185027 |
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511.35 G541i Introducing the theory of computation | 511.35 J29f First steps in several complex variables | 511.35 Q259 Quantum cellular automata | 511.35 T297d Dynamic data processing | 511.35 W428C COMPUTABLE ANALYSIS | 511.352 D85t2 Theory of computational complexity | 511.352 L51n Nonlinear dimensionality reduction |
This book is a follow-up on Adjustment theory. It extends the theory to the case of time-varying parameters with an emphasis on their recursive determination. Least-squares estimation will be the leading principle used. A least-squares solution is said to be recursive when the method of computation enables sequential, rather than batch, processing of the measurement data. The recursive equations enable the updating of parameter estimates for new observations without the need to store all past observations. Methods of recursive least-squares estimation are therefore particularly useful for applications in which the time-varying parameters need to be instantly determined. Important examples of such applications can be found in the fields of real-time kinematic positioning, navigation and guidance, or multivariate time series analysis. The goal of this book is therefore to convey the necessary knowledge to be able to process sequentially collected measurements for the purpose of estimating time-varying parameters. The theory is illustrated by means of many worked out examples. They are drawn from applications such as kinematic positioning, satellite orbit determination and inertial navigation
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