It is proposed that controllers that approximate the inverse dynamics of the controlled plant can be used for on-line compensation of changes in the plant's dynamics. The idea is to use the very same controller in two modes at the same time: both for static and dynamic feedback. Implications for the learning of neurocontrollers are discussed. The proposed control mode relaxes the demand of precision and as a consequence, controllers that utilise direct associative learning by means of local function approximators may become more tractable in higher dimensional spaces.
%0 Conference Paper
%1 szepesvari1996b
%A Szepesvári, Cs.
%A Lörincz, A.
%B ICANN
%D 1996
%K adaptive bioreactor control, manipulator networks neural theory,
%P 697--702
%T Inverse Dynamics Controllers for Robust Control: Consequences for Neurocontrollers
%X It is proposed that controllers that approximate the inverse dynamics of the controlled plant can be used for on-line compensation of changes in the plant's dynamics. The idea is to use the very same controller in two modes at the same time: both for static and dynamic feedback. Implications for the learning of neurocontrollers are discussed. The proposed control mode relaxes the demand of precision and as a consequence, controllers that utilise direct associative learning by means of local function approximators may become more tractable in higher dimensional spaces.
@inproceedings{szepesvari1996b,
abstract = {It is proposed that controllers that approximate the inverse dynamics of the controlled plant can be used for on-line compensation of changes in the plant's dynamics. The idea is to use the very same controller in two modes at the same time: both for static and dynamic feedback. Implications for the learning of neurocontrollers are discussed. The proposed control mode relaxes the demand of precision and as a consequence, controllers that utilise direct associative learning by means of local function approximators may become more tractable in higher dimensional spaces.},
added-at = {2020-03-17T03:03:01.000+0100},
author = {Szepesv{\'a}ri, {Cs}. and L{\"o}rincz, A.},
biburl = {https://www.bibsonomy.org/bibtex/2f833b47d803173ed0d81c5ec19a4ef27/csaba},
booktitle = {ICANN},
date-added = {2010-08-28 17:38:14 -0600},
date-modified = {2010-11-25 00:58:31 -0700},
interhash = {7ac9a654f8ec07a753979530608edc14},
intrahash = {f833b47d803173ed0d81c5ec19a4ef27},
keywords = {adaptive bioreactor control, manipulator networks neural theory,},
pages = {697--702},
pdf = {papers/szepes.icann96-fbc.ps.pdf},
timestamp = {2020-03-17T03:03:01.000+0100},
title = {Inverse Dynamics Controllers for Robust Control: Consequences for Neurocontrollers},
year = 1996
}