Locahzation of Internet-based Mobile Robot
This paper presents a new optimal filter namely past observation-based extended Kalman filter for the problem of localization of Internet-based mobile robot in which the confrol input and the feedback measurement suffer from communication delay. The filter operates through two phases: the time upd...
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oai:112.137.131.14:11126-129942017-10-27T01:42:21Z Locahzation of Internet-based Mobile Robot Phùng, Mạnh Dương Nguyễn, Thị Thanh Vân Trần, Thuận Hoàng Trần, Quang Vinh Internet robot robot localization extended Kalman filter network robot This paper presents a new optimal filter namely past observation-based extended Kalman filter for the problem of localization of Internet-based mobile robot in which the confrol input and the feedback measurement suffer from communication delay. The filter operates through two phases: the time update and the data correction. The time update predicts the robot position by reformulating the kinematics model to be non-memoryless. The correction step corrects the prediction by extrapolating the delayed measurement to the present and then incorporating it to the being estimate as there is no delay. The optimality of the incorporation is ensured by the derivation of a multiplier that reflects the relevance of past observations to the present. Simulations in MATLAB and experiments in a real networked robot system confirm the validity of the proposed approach. 2014-12-10T03:07:56Z 2015-08-26T09:34:04Z 2014-12-10T03:07:56Z 2015-08-26T09:34:04Z 2013 Article 13 tr. http://repository.vnu.edu.vn/handle/11126/12994 vi application/pdf H. : ĐHQGHN |
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Internet robot robot localization extended Kalman filter network robot |
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Internet robot robot localization extended Kalman filter network robot Phùng, Mạnh Dương Nguyễn, Thị Thanh Vân Trần, Thuận Hoàng Trần, Quang Vinh Locahzation of Internet-based Mobile Robot |
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This paper presents a new optimal filter namely past observation-based extended
Kalman filter for the problem of localization of Internet-based mobile robot in which the confrol input and the feedback measurement suffer from communication delay. The filter operates through two phases: the time update and the data correction. The time update predicts the robot position by reformulating the kinematics model to be non-memoryless. The correction step corrects the prediction by extrapolating the delayed measurement to the present and then incorporating it to the being estimate as there is no delay. The optimality of the incorporation is ensured by the derivation
of a multiplier that reflects the relevance of past observations to the present. Simulations in MATLAB and experiments in a real networked robot system confirm the validity of the proposed
approach. |
format |
Article |
author |
Phùng, Mạnh Dương Nguyễn, Thị Thanh Vân Trần, Thuận Hoàng Trần, Quang Vinh |
author_facet |
Phùng, Mạnh Dương Nguyễn, Thị Thanh Vân Trần, Thuận Hoàng Trần, Quang Vinh |
author_sort |
Phùng, Mạnh Dương |
title |
Locahzation of Internet-based Mobile Robot |
title_short |
Locahzation of Internet-based Mobile Robot |
title_full |
Locahzation of Internet-based Mobile Robot |
title_fullStr |
Locahzation of Internet-based Mobile Robot |
title_full_unstemmed |
Locahzation of Internet-based Mobile Robot |
title_sort |
locahzation of internet-based mobile robot |
publisher |
H. : ĐHQGHN |
publishDate |
2014 |
url |
http://repository.vnu.edu.vn/handle/11126/12994 |
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1680963731933102080 |