Remote control involves several issues that degrade seriously the performance of the plant to be controlled. This paper presents a strategy improving the characteristics of the remote control system, using an on-line adaptive neural net, in order to learn the variations of the remote system parameters to minimize the errors. This strategy is successfully applied to a client-server remote control system for a two link robot arm. Tests show that an error position in a remote control brushless motor can be highly reduced since its first "reference command" using a prevision of that error to modify the original reference. The neural net, used only by the client, is previously trained using local test data and then it is trained using on-line feedback data front the remote plant.

RAIMONDI F M, CIANCIMINO L S, MELLUSO M (2005). ON-LINE ADAPTIVE NEURAL NETWORK IN VERY REMOTE CONTROL SYSTEM. In PROCEEDINGS OF 10TH IEEE INTERNATIONAL CONFERENCE ON EMERGING TECHNOLOGIES AND FACTORY AUTOMATION, ETFA 2005 (pp.179-186).

ON-LINE ADAPTIVE NEURAL NETWORK IN VERY REMOTE CONTROL SYSTEM

RAIMONDI, Francesco Maria;CIANCIMINO, Ludovico Salvatore;MELLUSO, Maurizio
2005-01-01

Abstract

Remote control involves several issues that degrade seriously the performance of the plant to be controlled. This paper presents a strategy improving the characteristics of the remote control system, using an on-line adaptive neural net, in order to learn the variations of the remote system parameters to minimize the errors. This strategy is successfully applied to a client-server remote control system for a two link robot arm. Tests show that an error position in a remote control brushless motor can be highly reduced since its first "reference command" using a prevision of that error to modify the original reference. The neural net, used only by the client, is previously trained using local test data and then it is trained using on-line feedback data front the remote plant.
10th IEEE International Conference on Emerging Technologies and Factory Automation, ETFA 2005
CATANIA
19-22 SEPTEMBER 2005
10
2005
8
Catania, Italy
RAIMONDI F M, CIANCIMINO L S, MELLUSO M (2005). ON-LINE ADAPTIVE NEURAL NETWORK IN VERY REMOTE CONTROL SYSTEM. In PROCEEDINGS OF 10TH IEEE INTERNATIONAL CONFERENCE ON EMERGING TECHNOLOGIES AND FACTORY AUTOMATION, ETFA 2005 (pp.179-186).
Proceedings (atti dei congressi)
RAIMONDI F M; CIANCIMINO L S; MELLUSO M
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/12324
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