Title :
High-level primitives for linear estimation
Author :
Levy, Bernard C. ; Benveniste, Albert ; Nikoukhah, Ramine
Author_Institution :
Dept. of Electr. & Comput. Eng., California Univ., Davis, CA, USA
Abstract :
This paper proposes a high level language constituted of only a few primitives and macros for describing recursive maximum likelihood (ML) estimation algorithms. This language is applicable to estimation problems involving linear Gaussian models, or processes taking values in a finite set (only the first case is considered here). The use of high level primitive allows the development of highly modular ML estimation algorithms based on only few numerical blocks. The primitives, which correspond to the combination of different measurements, the extraction of sufficient statistics, and the conversion of the status of a variable from unknown to observed ones, or vice versa, are first defined for linear Gaussian relations specifying mixed deterministic/stochastic information about the system variables. These primitives are used to define other macros, and are illustrated by considering the filtering and smoothing problems for linear descriptor systems, as well as failure detection and isolation
Keywords :
filtering theory; high level languages; linear systems; macros; mathematics computing; matrix algebra; maximum likelihood estimation; recursive estimation; failure detection; filtering; high level language; high-level primitives; linear Gaussian models; linear Gaussian relations; linear descriptor systems; macros; recursive maximum likelihood estimation; smoothing; Data mining; Filtering; High level languages; Maximum likelihood detection; Maximum likelihood estimation; Nonlinear filters; Recursive estimation; Smoothing methods; Statistics; Stochastic systems;
Conference_Titel :
Decision and Control, 1994., Proceedings of the 33rd IEEE Conference on
Conference_Location :
Lake Buena Vista, FL
Print_ISBN :
0-7803-1968-0
DOI :
10.1109/CDC.1994.411778