Statistical Process Control of a Kalman Filter Model

For the evaluation of measurement data, different functional and stochastic models can be used. In the case of time series, a Kalman filtering (KF) algorithm can be implemented. In this case, a very well-known stochastic model, which includes statistical tests in the domain of measurements and in th...

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Main Authors: Sonja Gamse, Fereydoun Nobakht-Ersi, Mohammad A. Sharifi
Format: Article
Language:English
Published: MDPI AG 2014-09-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/14/10/18053
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spelling doaj-cc3e7b1d72494244a810157a3af084062020-11-24T21:49:58ZengMDPI AGSensors1424-82202014-09-011410180531807410.3390/s141018053s141018053Statistical Process Control of a Kalman Filter ModelSonja Gamse0Fereydoun Nobakht-Ersi1Mohammad A. Sharifi2Unit for Surveying and Geoinformation, University of Innsbruck, Technikerstr. 13, Innsbruck 6020, AustriaDepartment of Applied Mathematics, University of Tabriz, 29 Bahman Blvd, 5166616471 Tabriz, IranDepartment of Geomatic and Surveying Engineering, College of Engineering, University of Tehran, 111554563 Tehran, IranFor the evaluation of measurement data, different functional and stochastic models can be used. In the case of time series, a Kalman filtering (KF) algorithm can be implemented. In this case, a very well-known stochastic model, which includes statistical tests in the domain of measurements and in the system state domain, is used. Because the output results depend strongly on input model parameters and the normal distribution of residuals is not always fulfilled, it is very important to perform all possible tests on output results. In this contribution, we give a detailed description of the evaluation of the Kalman filter model. We describe indicators of inner confidence, such as controllability and observability, the determinant of state transition matrix and observing the properties of the a posteriori system state covariance matrix and the properties of the Kalman gain matrix. The statistical tests include the convergence of standard deviations of the system state components and normal distribution beside standard tests. Especially, computing controllability and observability matrices and controlling the normal distribution of residuals are not the standard procedures in the implementation of KF. Practical implementation is done on geodetic kinematic observations.http://www.mdpi.com/1424-8220/14/10/18053consistency checkcontrollabilityKalman filtermeasurement innovationobservabilitysystem state
collection DOAJ
language English
format Article
sources DOAJ
author Sonja Gamse
Fereydoun Nobakht-Ersi
Mohammad A. Sharifi
spellingShingle Sonja Gamse
Fereydoun Nobakht-Ersi
Mohammad A. Sharifi
Statistical Process Control of a Kalman Filter Model
Sensors
consistency check
controllability
Kalman filter
measurement innovation
observability
system state
author_facet Sonja Gamse
Fereydoun Nobakht-Ersi
Mohammad A. Sharifi
author_sort Sonja Gamse
title Statistical Process Control of a Kalman Filter Model
title_short Statistical Process Control of a Kalman Filter Model
title_full Statistical Process Control of a Kalman Filter Model
title_fullStr Statistical Process Control of a Kalman Filter Model
title_full_unstemmed Statistical Process Control of a Kalman Filter Model
title_sort statistical process control of a kalman filter model
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2014-09-01
description For the evaluation of measurement data, different functional and stochastic models can be used. In the case of time series, a Kalman filtering (KF) algorithm can be implemented. In this case, a very well-known stochastic model, which includes statistical tests in the domain of measurements and in the system state domain, is used. Because the output results depend strongly on input model parameters and the normal distribution of residuals is not always fulfilled, it is very important to perform all possible tests on output results. In this contribution, we give a detailed description of the evaluation of the Kalman filter model. We describe indicators of inner confidence, such as controllability and observability, the determinant of state transition matrix and observing the properties of the a posteriori system state covariance matrix and the properties of the Kalman gain matrix. The statistical tests include the convergence of standard deviations of the system state components and normal distribution beside standard tests. Especially, computing controllability and observability matrices and controlling the normal distribution of residuals are not the standard procedures in the implementation of KF. Practical implementation is done on geodetic kinematic observations.
topic consistency check
controllability
Kalman filter
measurement innovation
observability
system state
url http://www.mdpi.com/1424-8220/14/10/18053
work_keys_str_mv AT sonjagamse statisticalprocesscontrolofakalmanfiltermodel
AT fereydounnobakhtersi statisticalprocesscontrolofakalmanfiltermodel
AT mohammadasharifi statisticalprocesscontrolofakalmanfiltermodel
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