Identification, Knowledge Engineering and Digital Modeling for Adaptive and Intelligent Control

Download Url(s)
https://mdpi.com/books/pdfview/book/7680Contributor(s)
Bakhtadze, Natalia (editor)
Yadykin, Igor (editor)
Torgashov, Andrei (editor)
Korgin, Nikolay (editor)
Language
EnglishAbstract
The Special Issue aimed to bring together scientists working in various branches of control theory to discuss manufacturing control problems that include the following: enterprise control and digital ecosystem creation; the development of identification theory and methodology, and related mathematical problems; parameter, nonparametric, and structure identification and expert analysis; problems regarding selection and data analysis; control systems with an identifier; modeling in intelligent systems; simulation procedures and software; digital identification; reinforcement learning; quantum modeling; intelligent model predictive control; predictive cognitive issues; problems with software quality for complex systems; and global network resources for support processes of modeling and control.
Keywords
decision-making; psychic and behavioral components of activity; action; result of activity; equilibrium stability; consensus; threshold behavior; cognitive dissonance; conformity; informational control; informational confrontation; soft sensing; multivariate filter; reactive distillation; optimal stochastic control; path planning; 2D random search; interception; external disturbances; invariance; block control principle; decomposition; high-gain factors; sliding mode control; sigmoid function; Gramian method; bilinear system process identification; generalized Lyapunov equation; knowledgebase; associative search models; wavelet analysis; adaptive differential evolution; evolutionary computing; Hammerstein; nonlinear system identification; bilinear systems; eigenmode decomposition; spectral expansions; Gramians; observability; controllability; small-signal analysis; numerical algorithm; tokamak; plasma equilibrium reconstruction; linear plasma models; identification; state observer; LMI; least square technique; deep neural network; parametric uncertainty; robust control; super-stability; regular form; dynamic mode decomposition; system identification; Runge–Kutta method; nonparametric model; artificial neural network; Izhikevich artificial neuron; vestibular–ocular reflex; control Lyapunov function; Bayes criterion; Haar wavelets; loss function; mean risk; observable stochastic systems (OStS); stochastic process (StP); wavelet canonical expansion (WLCE); nonparametric identification; dynamic system; integral model; Volterra equations; smoothing cubic splines; selection of the smoothing option; modeling; regularization; inverse problems; balanced identification; error analysis; one-dimensional heat equation; n/aWebshop link
https://mdpi.com/books/pdfview ...ISBN
9783036580609, 9783036580616Publisher website
www.mdpi.com/booksPublication date and place
Basel, 2023Classification
Research & information: general
Mathematics & science

