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Magnetotelluric data from before, during and after the September 2017 magnetic storm at 7 sites in Scotland

Magnetotelluric data from before, during and after the September 2017 magnetic storm at 7 sites in Scotland
Magnetotelluric data from before, during and after the September 2017 magnetic storm at 7 sites in Scotland
Magnetotelluric (MT) time series including the September 2017 magnetic storm at 7 sites in the Scottish Highlands collected by Fiona Simpson (University of Southampton) and Karsten Bahr (University of Göttingen) using Göttingen RAP dataloggers, Magson fluxgate magnetometers and Filloux-type electrodes. Data acquisition methodology is described in F. Simpson and K. Bahr, 2005. Practical Magnetotellurics, Cambridge University Press, London pp. 254, 2005, ISBN: 9781108462556, DOI: 10.1017/CBO9780511614095 This dataset is described in: F. Simpson and K. Bahr, 2020a. Nowcasting and validating Earth’s electric field response to extreme space weather events using magnetotelluric data: application to the September 2017 geomagnetic storm and comparison to observed and modelled fields in Scotland, Space Weather, https://doi.org/10.1051/swsc/2020049 F. Simpson and K. Bahr, 2020b. Estimating the electric field response to the Halloween 2003 and September 2017 magnetic storms across Scotland using observed geomagnetic fields, magnetotelluric impedances and perturbation tensors, Journal of Space Weather and Space Climate, https://doi.org/10.1029/2019SW002432
Natural Environment Research Council
Simpson, Fiona
98408e5e-6c71-42b7-9425-fa31d094b277
Bahr, Karsten
bff64fd0-24a1-4706-8344-c1b17a55c9bc
Simpson, Fiona
98408e5e-6c71-42b7-9425-fa31d094b277
Bahr, Karsten
bff64fd0-24a1-4706-8344-c1b17a55c9bc

(2020) Magnetotelluric data from before, during and after the September 2017 magnetic storm at 7 sites in Scotland. Natural Environment Research Council doi:10.5285/59d3c54d-8179-4904-8ee7-1a81564ed893 [Dataset]

Record type: Dataset

Abstract

Magnetotelluric (MT) time series including the September 2017 magnetic storm at 7 sites in the Scottish Highlands collected by Fiona Simpson (University of Southampton) and Karsten Bahr (University of Göttingen) using Göttingen RAP dataloggers, Magson fluxgate magnetometers and Filloux-type electrodes. Data acquisition methodology is described in F. Simpson and K. Bahr, 2005. Practical Magnetotellurics, Cambridge University Press, London pp. 254, 2005, ISBN: 9781108462556, DOI: 10.1017/CBO9780511614095 This dataset is described in: F. Simpson and K. Bahr, 2020a. Nowcasting and validating Earth’s electric field response to extreme space weather events using magnetotelluric data: application to the September 2017 geomagnetic storm and comparison to observed and modelled fields in Scotland, Space Weather, https://doi.org/10.1051/swsc/2020049 F. Simpson and K. Bahr, 2020b. Estimating the electric field response to the Halloween 2003 and September 2017 magnetic storms across Scotland using observed geomagnetic fields, magnetotelluric impedances and perturbation tensors, Journal of Space Weather and Space Climate, https://doi.org/10.1029/2019SW002432

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More information

Published date: 2020

Identifiers

Local EPrints ID: 448516
URI: http://eprints.soton.ac.uk/id/eprint/448516
PURE UUID: 8991b408-fdcd-4a84-bd5a-122f04a29716

Catalogue record

Date deposited: 23 Apr 2021 16:35
Last modified: 05 May 2023 18:10

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Contributors

Contributor: Fiona Simpson
Contributor: Karsten Bahr

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