Kalrnan filter relies heavily on perfect knowledge of sensor readings, used to compute the minimum mean square error estimate of the system state. However in reality, unavailability of output data might occur due to factors including sensor faults and failures, confined memory spaces of buffer registers and congestion of communication channels. Therefore investigations on the effectiveness of Kalman filtering in the case of imperfect data have, since the last decade, been an interesting yet challenging research topic. The prevailed methodology employed in the state estimation for imperfect data is the open loop estimation wherein the measurement update step is skipped during data loss time. This method has several shortcomings such as high ...
The accurate estimation of the predicted re-entry time of decaying space debris objects is very impo...
Abstract — We study the Kalman filtering problem when part or all of the observation measurements ar...
Includes bibliographical references (page 82)In the early 1960???s Rudolf Emil Kalman published a re...
In this paper, a comprehensive comparison of two robust estimation techniques namely, compensated cl...
In this paper, a comprehensive comparison of two robust estimation techniques namely, compensated cl...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
Most satellites use an on-board attitude estimation system, based on available sensors. In the case ...
In normal working conditions it is possible to achieve sufficient attitude estimation accuracy for a...
Most satellites use an on-board attitude estimation system, based on available sensors. In the case ...
The nonlinear problem of tracking and predicting where a satellite will be over some time can be dif...
© 2020, Pleiades Publishing, Inc. We propose a new approach for solving the filtering problem in lin...
Kalman filter is one of the best filter utilized as a part of the state estimation taking into accou...
180 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P LSGI 2017 YangCOne of the k...
Compensation of data loss in the state estimation plays an indispensable role in efficient and stabl...
The accurate estimation of the predicted re-entry time of decaying space debris objects is very impo...
The accurate estimation of the predicted re-entry time of decaying space debris objects is very impo...
Abstract — We study the Kalman filtering problem when part or all of the observation measurements ar...
Includes bibliographical references (page 82)In the early 1960???s Rudolf Emil Kalman published a re...
In this paper, a comprehensive comparison of two robust estimation techniques namely, compensated cl...
In this paper, a comprehensive comparison of two robust estimation techniques namely, compensated cl...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
Most satellites use an on-board attitude estimation system, based on available sensors. In the case ...
In normal working conditions it is possible to achieve sufficient attitude estimation accuracy for a...
Most satellites use an on-board attitude estimation system, based on available sensors. In the case ...
The nonlinear problem of tracking and predicting where a satellite will be over some time can be dif...
© 2020, Pleiades Publishing, Inc. We propose a new approach for solving the filtering problem in lin...
Kalman filter is one of the best filter utilized as a part of the state estimation taking into accou...
180 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P LSGI 2017 YangCOne of the k...
Compensation of data loss in the state estimation plays an indispensable role in efficient and stabl...
The accurate estimation of the predicted re-entry time of decaying space debris objects is very impo...
The accurate estimation of the predicted re-entry time of decaying space debris objects is very impo...
Abstract — We study the Kalman filtering problem when part or all of the observation measurements ar...
Includes bibliographical references (page 82)In the early 1960???s Rudolf Emil Kalman published a re...