Deterministic Sampling for Nonlinear Dynamic State Estimation
Abstract
The goal of this work is improving existing and suggesting novel filtering algorithms for nonlinear dynamic state estimation. Nonlinearity is considered in two ways: First, propagation is improved by proposing novel methods for approximating continuous probability distributions by discrete distributions defined on the same continuous domain. Second, nonlinear underlying domains are considered by proposing novel filters that inherently take the underlying geometry of these domains into account.
Keywords
Sensordatenfusion; Richtungsstatistik; Directional Statistics; Stochastische Filterung; Sensor Data Fusion; DichteapproximationStochastic Filtering; Density ApproximationISBN
9783731504733Publisher
KIT Scientific PublishingPublisher website
http://www.ksp.kit.edu/Publication date and place
2016Series
Karlsruhe Series on Intelligent Sensor-Actuator-Systems / Karlsruher Institut für Technologie, Intelligent Sensor-Actuator-Systems Laboratory,Classification
Computer science


