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We explain how these models can provide experts at control theory with interesting topics of investigation, and how control theory can in turn be of great usefulness in the modelling of the laser control of chemical reactions.
τ-theory suggests that natural control has a particular non-linear, albeit very simple, time varying form and that pilots learn control strategy skills by developing mental models, or internalised schemata, in the form of what are described as ‘τ guides’.
The present study shows that, in principle, the counter-propagation network (CPN) can learn from the control environment to compute the required control forces without the supervision of a teacher (unsupervised learning).
In addition to that, this paper shows also how control theory can be applied to train neural networks.
Open accessBook
Jason L. Speyer, David H. Jacobson 
13 May 2010
88 Citations
It makes optimal control theory accessible to a large class of engineers and scientists who are not mathematicians but have a basic mathematical background and need to understand the sophisticated material associated with optimal control theory.
Open accessBook ChapterDOI
Daniel Borrajo, Manuela Veloso 
01 May 1994
23 Citations
In this paper we advocate a learning method where a deductive and an inductive strategies are combined to efficiently learn control knowledge.
While our experience indicates that control theory is a good paradigm for database self management, control theory should be used Judiciously since its techniques are not suited to all problems in database administration.
Control subject to Computational and Communication Constraints highlights many problems encountered by control researchers, while also informing graduate students of the many interesting ideas at the frontier between control theory, information theory and computational theory.
The most promising field for control theory and application in the next five to ten years seems to be the application of computer control to all types of industry, and the development of the corresponding theory.

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