نتایج جستجو برای: state ivrl filter

تعداد نتایج: 965368  

ژورنال: سنجش و ایمنی پرتو 2020

HEPA filters serve as important safety device to protect personnel as well as the public and environment from the radiation effects exist in the air, so they are vital devices in the event accidents. DOE provides directions through the use of two technical standards, 3020 and 3025, including QA requirements for the procurement, packaging, shipping and storage of HEPA filters and also provides d...

2008

The Kalman filter is the optimal minimum-variance state estimator for linear dynamic systems with Gaussian noise. In addition, the Kalman filter is the optimal linear state estimator for linear dynamic systems with non-Gaussian noise. For nonlinear systems various modifications of the Kalman filter (e.g., the extended Kalman filter, the unscented Kalman filter, and the particle filter) have bee...

Journal: :Lecture Notes in Computer Science 2023

AbstractDespite achieving remarkable progress in recent years, single-image super-resolution methods are developed with several limitations. Specifically, they trained on fixed content domains certain degradations (whether synthetic or real). The priors learn prone to overfitting the training configuration. Therefore, generalization novel such as drone top view data, and across altitudes, is cu...

2014
Amir Khodabandeh Peter J. G. Teunissen

In this contribution we extend Kalman-filter theory by introducing a new recursive linear minimum mean squared error (MMSE) filter for dynamic systems with unknown state-vector means. The recursive filter enables the joint MMSE prediction and estimation of the random state vectors and their unknown means, respectively. We show how the new filter reduces to the Kalman-filter in case the state-ve...

2009
Dan Simon

The Kalman filter is the minimum-variance state estimator for linear dynamic systems with Gaussian noise. Even if the noise is non-Gaussian, the Kalman filter is best linear estimator. For nonlinear systems it is not possible, in general, to derive the optimal state estimator in closed form, but various modifications of the Kalman filter can be used to estimate the state. These modifications in...

In this paper principles of extended Kalman filtering theory is developed and applied to simulated on-line electric power systems state estimation in order to trace the operating condition changes through the redundant and noisy measurements. Test results on IEEE 14 - bus test system are included. Three case systems are tried; through the comparing of their results, it is concluded that the pro...

2003
Tine Lefebvre Herman Bruyninckx Joris De Schutter

This paper discusses a new Bayesian filter able to estimate the state of static systems (parameter estimation) with any kind of nonlinear measurement equation subject to Gaussian measurement uncertainty. The filter is also applicable to the state estimation for a limited class of dynamic systems. The core idea of the filter is to linearize the process and measurement equation in a higher-dimens...

2014
SHUNYI ZHAO FEI LIU YURIY S. SHMALIY

Optimal or unbiased estimators are widely used for state estimation and tracking. We propose a new minimum variance unbiased (MVU) finite impulse response (FIR) filter which minimizes the estimation error variance in the unbiased FIR (UFIR) filter. The relationship between the filter gains of the MVU FIR, UFIR and optimal FIR (OFIR) filters is found analytically. Simulations provided using a po...

Journal: :Automatica 2007
Hyung Keun Lee Jang Gyu Lee

For fault-tolerant real-time filtering, an efficient two-filter architecture is proposed. In the two-filter architecture, a host filter is operated permanently. A compression filter is intermittently initialized and operated during prescribed time intervals. to handle measurements susceptible to soft faults. New compression filters are derived based on time-propagated measurement concept. The d...

2011
J. Valarmathi D. S. Emmanuel G Girija J R Raol R Appavu Sudesh Kashyap Ren C. Luo Chih-Chen Yih Lan Su Thiagalingam Kirubarajan Toshio Furukawa Fumiko Muraoka Yoshio Kosuge

This paper analyses the velocity estimation of a target, from the Doppler filter using 1) Kalman filter 2) Adaptive Kalman filter 3) Kalman filter with state vector fusion 4) Adaptive Kalman filter with state vector fusion 5) State vector fused adaptive Kalman filter. Simulation through MATLAB gave good response for 4 and 5 algorithms under low signal to noise ratio. 2 and 3 algorithms gave bet...

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