Parallel state estimation for systems with integrated measurements
Loading...
Access rights
openAccess
CC BY
CC BY
publishedVersion
URL
Journal Title
Journal ISSN
Volume Title
A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä
This publication is imported from Aalto University research portal.
View publication in the Research portal (opens in new window)
View/Open full text file from the Research portal (opens in new window)
Other link related to publication (opens in new window)
View publication in the Research portal (opens in new window)
View/Open full text file from the Research portal (opens in new window)
Other link related to publication (opens in new window)
Authors
Date
2025
Major/Subject
Mcode
Degree programme
Language
en
Pages
5
Series
IEEE Signal Processing Letters, Volume 32, pp. 371-375
Abstract
This paper presents parallel-in-time state estimation methods for systems with Slow-Rate inTegrated Measurements (SRTM). Integrated measurements are common in various applications, and they appear in analysis of data resulting from processes that require material collection or integration over the sampling period. Current state estimation methods for SRTM are inherently sequential, preventing temporal parallelization in their standard form. This paper proposes parallel Bayesian filters and smoothers for linear Gaussian SRTM models. For that purpose, we develop a novel smoother for SRTM models and develop parallel-in-time filters and smoother for them using an associative scan-based parallel formulation. Empirical experiments ran on a GPU demonstrate the superior time complexity of the proposed methods over traditional sequential approaches.Description
Publisher Copyright: © 1994-2012 IEEE.
Keywords
integrated measurements, parallel-in-time filtering, smoothing, state estimation, parallel-in-time filtering and smoothing, Integrated measurements
Other note
Citation
Yaghoobi, F & Särkkä, S 2025, ' Parallel state estimation for systems with integrated measurements ', IEEE Signal Processing Letters, vol. 32, pp. 371-375 . https://doi.org/10.1109/LSP.2024.3519258