Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24

Space weather data frequently contains gaps and missing information due to factors such as the uneven distribution of monitoring equipment, interruptions in transmission, equipment malfunctions, and the inherently dynamic nature of space weather events. These data gaps pose challenges in constructin...

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Published in:2023 IEEE Symposium on Computers and Informatics, ISCI 2023
Main Author: Zainuddin A.; Hairuddin M.A.; Jusoh M.H.; Hashim M.H.; Benavides I.F.; Yassin A.I.M.
Format: Conference paper
Language:English
Published: Institute of Electrical and Electronics Engineers Inc. 2023
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85184853636&doi=10.1109%2fISCI58771.2023.10391906&partnerID=40&md5=2181b6de5fd6777250fa62604e3407d6
id 2-s2.0-85184853636
spelling 2-s2.0-85184853636
Zainuddin A.; Hairuddin M.A.; Jusoh M.H.; Hashim M.H.; Benavides I.F.; Yassin A.I.M.
Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
2023
2023 IEEE Symposium on Computers and Informatics, ISCI 2023


10.1109/ISCI58771.2023.10391906
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85184853636&doi=10.1109%2fISCI58771.2023.10391906&partnerID=40&md5=2181b6de5fd6777250fa62604e3407d6
Space weather data frequently contains gaps and missing information due to factors such as the uneven distribution of monitoring equipment, interruptions in transmission, equipment malfunctions, and the inherently dynamic nature of space weather events. These data gaps pose challenges in constructing comprehensive models, understanding the underlying physics, and making well-informed decisions to mitigate potential risks. This study introduces an innovative approach that employs the Known Sub-Sequence Algorithm (KSSA) to impute missing data in univariate time series space weather and geomagnetic data. The KSSA, a machine learning algorithm, provides nine distinct imputation methods that can be assessed for each dataset. The dataset used encompasses univariate space weather time series data, including parameters like solar wind speed, solar wind dynamic pressure, heliospheric magnetic field, symmetrical H index, and low-latitude geomagnetic data. The dataset comprises a total of 40,320 data points collected at a one-minute frequency. Performance evaluation employs the root mean square error (RMSE). The study's findings underscore the superiority of the Autoregressive Integrated Moving Average (ARIMA) method across various parameters and iterations, followed by the Stineman Interpolation (STIT) method. The incorporation of KSSA and the comparative assessment of imputation methods yield valuable insights into effectively addressing missing data challenges inherent in the analysis of space weather and geomagnetic data. © 2023 IEEE.
Institute of Electrical and Electronics Engineers Inc.

English
Conference paper

author Zainuddin A.; Hairuddin M.A.; Jusoh M.H.; Hashim M.H.; Benavides I.F.; Yassin A.I.M.
spellingShingle Zainuddin A.; Hairuddin M.A.; Jusoh M.H.; Hashim M.H.; Benavides I.F.; Yassin A.I.M.
Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
author_facet Zainuddin A.; Hairuddin M.A.; Jusoh M.H.; Hashim M.H.; Benavides I.F.; Yassin A.I.M.
author_sort Zainuddin A.; Hairuddin M.A.; Jusoh M.H.; Hashim M.H.; Benavides I.F.; Yassin A.I.M.
title Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
title_short Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
title_full Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
title_fullStr Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
title_full_unstemmed Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
title_sort Assessing the Multiple Imputation Approach for Univariate Time Series Data of Geomagnetic Disturbance Event in Solar Cycle 24
publishDate 2023
container_title 2023 IEEE Symposium on Computers and Informatics, ISCI 2023
container_volume
container_issue
doi_str_mv 10.1109/ISCI58771.2023.10391906
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85184853636&doi=10.1109%2fISCI58771.2023.10391906&partnerID=40&md5=2181b6de5fd6777250fa62604e3407d6
description Space weather data frequently contains gaps and missing information due to factors such as the uneven distribution of monitoring equipment, interruptions in transmission, equipment malfunctions, and the inherently dynamic nature of space weather events. These data gaps pose challenges in constructing comprehensive models, understanding the underlying physics, and making well-informed decisions to mitigate potential risks. This study introduces an innovative approach that employs the Known Sub-Sequence Algorithm (KSSA) to impute missing data in univariate time series space weather and geomagnetic data. The KSSA, a machine learning algorithm, provides nine distinct imputation methods that can be assessed for each dataset. The dataset used encompasses univariate space weather time series data, including parameters like solar wind speed, solar wind dynamic pressure, heliospheric magnetic field, symmetrical H index, and low-latitude geomagnetic data. The dataset comprises a total of 40,320 data points collected at a one-minute frequency. Performance evaluation employs the root mean square error (RMSE). The study's findings underscore the superiority of the Autoregressive Integrated Moving Average (ARIMA) method across various parameters and iterations, followed by the Stineman Interpolation (STIT) method. The incorporation of KSSA and the comparative assessment of imputation methods yield valuable insights into effectively addressing missing data challenges inherent in the analysis of space weather and geomagnetic data. © 2023 IEEE.
publisher Institute of Electrical and Electronics Engineers Inc.
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language English
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