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On the Evaluation of Data Quality in the OMNI Interplanetary Magnetic Field Database. / Vokhmyanin, M. V.; Stepanov, N. A.; Sergeev, V. A.

In: Space Weather, Vol. 17, No. 3, 01.03.2019, p. 476-486.

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@article{41f485b520944b22b666b4f5c980ccb3,
title = "On the Evaluation of Data Quality in the OMNI Interplanetary Magnetic Field Database",
abstract = " The OMNI database is formed by propagating the solar wind measured at around Lagrange point L1, whose result may differ from the actual solar wind in the vicinity of the bow shock nose. To test the quality of the OMNI database, we cross-correlate the 2-hr intervals of 1-min interplanetary magnetic field (IMF) data provided mostly by ACE and WIND spacecraft with Geotail measurements in front of the bow shock (10,409 cases in 1997–2016). We used two metrics: Pearson correlation coefficient (CC) and prediction efficiency (PE). Confirming previous studies, we found that the prediction quality of actual IMF degrades continuously with increasing distance of OMNI spacecraft from the Sun-Earth line, with the amounts of poor and good predictions become nearly equal for R YZ  ≥ 65 R E (they constitute ~12% of the entire database). In roughly 20% of the analyzed data, low CC and PE values were the consequence of low IMF variability (a low signal-to-noise ratio). The remaining data set includes 42% of very good data (CC ≥ 0.8), 33% of relatively good data (0.5 ≤ CC < 0.8 and PE ≥ 0), 10% of data having correct variability but wrong absolute values (0.5 ≤ CC < 0.8 and PE < 0), and 15% of poor data (CC < 0.5). We also discovered that the OMNI data are generally of a good quality when the PC index of geomagnetic activity correlates well with the solar wind-magnetosphere coupling factor suggested by Kan and Lee (1979, https://doi.org/10.1029/GL006i007p00577). ",
keywords = "OMNI database, PC index, cross-correlation analysis, data validation, interplanetary magnetic field, WIND, PLASMA, MAGNETOSPHERE, POLAR-CAP, PROPAGATION",
author = "Vokhmyanin, {M. V.} and Stepanov, {N. A.} and Sergeev, {V. A.}",
year = "2019",
month = mar,
day = "1",
doi = "10.1029/2018SW002113",
language = "English",
volume = "17",
pages = "476--486",
journal = "Space Weather",
issn = "1542-7390",
publisher = "American Geophysical Union",
number = "3",

}

RIS

TY - JOUR

T1 - On the Evaluation of Data Quality in the OMNI Interplanetary Magnetic Field Database

AU - Vokhmyanin, M. V.

AU - Stepanov, N. A.

AU - Sergeev, V. A.

PY - 2019/3/1

Y1 - 2019/3/1

N2 - The OMNI database is formed by propagating the solar wind measured at around Lagrange point L1, whose result may differ from the actual solar wind in the vicinity of the bow shock nose. To test the quality of the OMNI database, we cross-correlate the 2-hr intervals of 1-min interplanetary magnetic field (IMF) data provided mostly by ACE and WIND spacecraft with Geotail measurements in front of the bow shock (10,409 cases in 1997–2016). We used two metrics: Pearson correlation coefficient (CC) and prediction efficiency (PE). Confirming previous studies, we found that the prediction quality of actual IMF degrades continuously with increasing distance of OMNI spacecraft from the Sun-Earth line, with the amounts of poor and good predictions become nearly equal for R YZ  ≥ 65 R E (they constitute ~12% of the entire database). In roughly 20% of the analyzed data, low CC and PE values were the consequence of low IMF variability (a low signal-to-noise ratio). The remaining data set includes 42% of very good data (CC ≥ 0.8), 33% of relatively good data (0.5 ≤ CC < 0.8 and PE ≥ 0), 10% of data having correct variability but wrong absolute values (0.5 ≤ CC < 0.8 and PE < 0), and 15% of poor data (CC < 0.5). We also discovered that the OMNI data are generally of a good quality when the PC index of geomagnetic activity correlates well with the solar wind-magnetosphere coupling factor suggested by Kan and Lee (1979, https://doi.org/10.1029/GL006i007p00577).

AB - The OMNI database is formed by propagating the solar wind measured at around Lagrange point L1, whose result may differ from the actual solar wind in the vicinity of the bow shock nose. To test the quality of the OMNI database, we cross-correlate the 2-hr intervals of 1-min interplanetary magnetic field (IMF) data provided mostly by ACE and WIND spacecraft with Geotail measurements in front of the bow shock (10,409 cases in 1997–2016). We used two metrics: Pearson correlation coefficient (CC) and prediction efficiency (PE). Confirming previous studies, we found that the prediction quality of actual IMF degrades continuously with increasing distance of OMNI spacecraft from the Sun-Earth line, with the amounts of poor and good predictions become nearly equal for R YZ  ≥ 65 R E (they constitute ~12% of the entire database). In roughly 20% of the analyzed data, low CC and PE values were the consequence of low IMF variability (a low signal-to-noise ratio). The remaining data set includes 42% of very good data (CC ≥ 0.8), 33% of relatively good data (0.5 ≤ CC < 0.8 and PE ≥ 0), 10% of data having correct variability but wrong absolute values (0.5 ≤ CC < 0.8 and PE < 0), and 15% of poor data (CC < 0.5). We also discovered that the OMNI data are generally of a good quality when the PC index of geomagnetic activity correlates well with the solar wind-magnetosphere coupling factor suggested by Kan and Lee (1979, https://doi.org/10.1029/GL006i007p00577).

KW - OMNI database

KW - PC index

KW - cross-correlation analysis

KW - data validation

KW - interplanetary magnetic field

KW - WIND

KW - PLASMA

KW - MAGNETOSPHERE

KW - POLAR-CAP

KW - PROPAGATION

UR - http://www.scopus.com/inward/record.url?scp=85063287779&partnerID=8YFLogxK

UR - http://www.mendeley.com/research/evaluation-data-quality-omni-interplanetary-magnetic-field-database

U2 - 10.1029/2018SW002113

DO - 10.1029/2018SW002113

M3 - Article

AN - SCOPUS:85063287779

VL - 17

SP - 476

EP - 486

JO - Space Weather

JF - Space Weather

SN - 1542-7390

IS - 3

ER -

ID: 39329127