Record Details

Extended Kalman Filter Simulink Model for Nonlinear System Modeling

ScholarsArchive at Oregon State University

Field Value
Title Extended Kalman Filter Simulink Model for Nonlinear System Modeling
Names So, Ratanak (creator)
Brekken, Ted (advisor)
Date Issued 2015-05-15 (iso8601)
Note Graduation date: 2015
Abstract The objective of the work presented herein is the development of the extended Kalman filter for nonlinear system modeling. A standard Kalman filter is a well-known filter for estimating the state of a system, assuming the system is linear and it has a Gaussian distribution in its noise. In reality, linear systems don't really exist. As a result, the standard Kalman filter is inadequate for modeling most systems. This need could be addressed by changing the standard Kalman filter to work in a nonlinear system. The extended Kalman filter Simulink model proposed in this work allows modeling in nonlinear systems through local linearization. This approach is validated by accurately estimating the nonlinear system behavior for a permanent magnet synchronous motor.
Genre Thesis/Dissertation
Access Condition http://creativecommons.org/licenses/by/3.0/us/
Topic Extended Kalman Filter
Identifier http://hdl.handle.net/1957/56248

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