Nonlinear state and parameter estimation of spatially distributed systems
Abstract
In this thesis two probabilistic model-based estimators are introduced that allow the reconstruction and identification of space-time continuous physical systems. The Sliced Gaussian Mixture Filter (SGMF) exploits linear substructures in mixed linear/nonlinear systems, and thus is well-suited for identifying various model parameters. The Covariance Bounds Filter (CBF) allows the efficient estimation of widely distributed systems in a decentralized fashion.
Keywords
sensor network; nonlinear estimation; distributed-parameter systemISBN
9783866443709Publisher
KIT Scientific PublishingPublisher website
http://www.ksp.kit.edu/Publication date and place
2009Series
Karlsruhe Series on Intelligent Sensor-Actuator-Systems, Universität Karlsruhe / Intelligent Sensor-Actuator-Systems Laboratory,Classification
Computer science