THE CONSTRUCTION OF FILTERS IN NONLINEAR DETERMINISTIC SYSTEMS

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作者
MILSHTEIN, GN
SOLOVYEVA, OE
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O29 [应用数学];
学科分类号
070104 ;
摘要
The method of residuals (see, e.g. [1-31]) is used to serve the problem of estimation when both object and observations involve noise, and the input determination problem [3-5] is considered. These estimation problems are solved by minimizing a certain functional, and this in turn involves solving a boundary-value problem at each instant of time. Depending on the recurrent method used to solve the relevant family of boundary-value problems, one obtains different representations of optimal non-linear filters for the estimated quantities. The choice of a specific representation depends on the degree to which the object with whose help the filter is being designed is well conditioned. A locally optimal filter of a design similar to that of filters for linear problems is constructed.
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页码:971 / 982
页数:12
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