Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validity

Aerosol characteristics can be measured with different instruments providing observations that are not trivially inter-comparable. Extended Kalman Filter (EKF) is introduced here as a method to estimate aerosol particle number size distributions from multiple simultaneous observations. The focus her...

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Main Authors: T. Viskari, E. Asmi, P. Kolmonen, H. Vuollekoski, T. Petäjä, H. Järvinen
Format: Article
Language:English
Published: Copernicus Publications 2012-12-01
Series:Atmospheric Chemistry and Physics
Online Access:http://www.atmos-chem-phys.net/12/11767/2012/acp-12-11767-2012.pdf
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spelling doaj-c94bc904b7ab497db67152e7769015b02020-11-24T20:56:07ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242012-12-011224117671177910.5194/acp-12-11767-2012Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validityT. ViskariE. AsmiP. KolmonenH. VuollekoskiT. PetäjäH. JärvinenAerosol characteristics can be measured with different instruments providing observations that are not trivially inter-comparable. Extended Kalman Filter (EKF) is introduced here as a method to estimate aerosol particle number size distributions from multiple simultaneous observations. The focus here in Part 1 of the work was on general aspects of EKF in the context of Differential Mobility Particle Sizer (DMPS) measurements. Additional instruments and their implementations are discussed in Part 2 of the work. University of Helsinki Multi-component Aerosol model (UHMA) is used to propagate the size distribution in time. At each observation time (10 min apart), the time evolved state is updated with the raw particle mobility distributions, measured with two DMPS systems. EKF approach was validated by calculating the bias and the standard deviation for the estimated size distributions with respect to the raw measurements. These were compared to corresponding bias and standard deviation values for particle number size distributions obtained from raw measurements by a inversion of the instrument kernel matrix method. Despite the assumptions made in the EKF implementation, EKF was found to be more accurate than the inversion of the instrument kernel matrix in terms of bias, and compatible in terms of standard deviation. Potential further improvements of the EKF implementation are discussed.http://www.atmos-chem-phys.net/12/11767/2012/acp-12-11767-2012.pdf
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language English
format Article
sources DOAJ
author T. Viskari
E. Asmi
P. Kolmonen
H. Vuollekoski
T. Petäjä
H. Järvinen
spellingShingle T. Viskari
E. Asmi
P. Kolmonen
H. Vuollekoski
T. Petäjä
H. Järvinen
Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validity
Atmospheric Chemistry and Physics
author_facet T. Viskari
E. Asmi
P. Kolmonen
H. Vuollekoski
T. Petäjä
H. Järvinen
author_sort T. Viskari
title Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validity
title_short Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validity
title_full Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validity
title_fullStr Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validity
title_full_unstemmed Estimation of aerosol particle number distributions with Kalman Filtering – Part 1: Theory, general aspects and statistical validity
title_sort estimation of aerosol particle number distributions with kalman filtering – part 1: theory, general aspects and statistical validity
publisher Copernicus Publications
series Atmospheric Chemistry and Physics
issn 1680-7316
1680-7324
publishDate 2012-12-01
description Aerosol characteristics can be measured with different instruments providing observations that are not trivially inter-comparable. Extended Kalman Filter (EKF) is introduced here as a method to estimate aerosol particle number size distributions from multiple simultaneous observations. The focus here in Part 1 of the work was on general aspects of EKF in the context of Differential Mobility Particle Sizer (DMPS) measurements. Additional instruments and their implementations are discussed in Part 2 of the work. University of Helsinki Multi-component Aerosol model (UHMA) is used to propagate the size distribution in time. At each observation time (10 min apart), the time evolved state is updated with the raw particle mobility distributions, measured with two DMPS systems. EKF approach was validated by calculating the bias and the standard deviation for the estimated size distributions with respect to the raw measurements. These were compared to corresponding bias and standard deviation values for particle number size distributions obtained from raw measurements by a inversion of the instrument kernel matrix method. Despite the assumptions made in the EKF implementation, EKF was found to be more accurate than the inversion of the instrument kernel matrix in terms of bias, and compatible in terms of standard deviation. Potential further improvements of the EKF implementation are discussed.
url http://www.atmos-chem-phys.net/12/11767/2012/acp-12-11767-2012.pdf
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