Title: Performance evaluation of derivative free Kalman filter for non-linear estimation problem
Abstract: For the estimation of the states of non-linear systems,13; Extended Kalman Filter (EKF) is frequently used. It13; has been observed by estimation community that EKF13; is only reliable for systems that are almost linear on13; the time scale of the updates (i.e. sampling interval).13; To overcome this problem, derivative free Kalman13; filter (DFKF) or more popularly known as Unscented13; Kalman filter, a method that propagates mean and13; covariance using non-lineal transformation. is13; frequently used. In this paper two schemes: 1)13; factorized version of EKF (UD Extended Kalman13; Filter or UDEKF) and ii) DFKF are studied and13; evaluated using various sets of simulated data of the13; non-linear systems. This method as compared to EKF13; is more accurate, easier to implement and has same13; order of calculations.13; 13;
Publication Year: 2005
Publication Date: 2005-01-01
Language: en
Type: article
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