Title :
Kernel controllers: A systems-theoretic approach for data-driven modeling and control of spatiotemporally evolving processes
Author :
Hassan A. Kingravi;Harshal Maske;Girish Chowdhary
Author_Institution :
Pindrop Securities, Atlanta, GA 30308, United States
Abstract :
We consider the problem of modeling, estimating, and controlling the latent state of a spatiotemporally evolving continuous function using very few sensor measurements and actuator locations. Our solution to the problem consists of two parts: a predictive model of functional evolution, and feedback based estimator and controllers that can robustly recover the state of the model and drive it to a desired function. We show that layering a dynamical systems prior over temporal evolution of weights of a kernel model is a valid approach to spatiotemporal modeling that leads to systems theoretic, control-usable, predictive models. We provide sufficient conditions on the number of sensors and actuators required to guarantee observability and controllability. The approach is validated on a large real dataset, and in simulation for the control of spatiotemporally evolving function.
Keywords :
"Kernel","Spatiotemporal phenomena","Mathematical model","Predictive models","High definition video","Hilbert space","Dictionaries"
Conference_Titel :
Decision and Control (CDC), 2015 IEEE 54th Annual Conference on
DOI :
10.1109/CDC.2015.7403382