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Michael Coughlan
Michael Coughlan
Graduate Student, University of New Hampshire
Verified email at wildcats.unh.edu
Title
Cited by
Cited by
Year
Comparison of deep learning techniques to model connections between solar wind and ground magnetic perturbations
AM Keesee, V Pinto, M Coughlan, C Lennox, MS Mahmud, HK Connor
Frontiers in Astronomy and Space Sciences 7, 550874, 2020
282020
Revisiting the ground magnetic field perturbations challenge: A machine learning perspective
VA Pinto, AM Keesee, M Coughlan, R Mukundan, JW Johnson, ...
Frontiers in Astronomy and Space Sciences 9, 869740, 2022
162022
Probabilistic Forecasting of Ground Magnetic Perturbation Spikes at Mid‐Latitude Stations
M Coughlan, A Keesee, V Pinto, R Mukundan, JP Marchezi, J Johnson, ...
Space Weather 21 (6), e2023SW003446, 2023
12023
On the effects of the solar wind structures in the global distribution of ground-based geomagnetic perturbations during geomagnetic storms
JP Marchezi, AM Keesee, M Coughlan, R Mukundan, VA Pinto, ...
AGU23, 2023
2023
Characterizing the Spatial Scales of Localized Ground-Level Magnetic Perturbations
R Mukundan, AM Keesee, JP Marchezi, M Coughlan, DL Hampton, ...
AGU23, 2023
2023
Analyzing the Influence of Magnetotail Phenomena on the Localization of Ground Magnetic Field Perturbations Using Machine Learning Interpretability Techniques
M Coughlan, AM Keesee, VA Pinto, JP Marchezi, R Mukundan, ...
AGU23, 2023
2023
Adapting the Crossformer to Forecast Geomagnetically Induced Currents
JW Johnson, F Siddiqui, M Coughlan, AM Keesee, HKIM Connor
AGU23, 2023
2023
Investigating the Influence of Inner Magnetosphere Data on a Regional Geomagnetically Induced Current Forecasting Model
R Mukundan, AM Keesee, VA Pinto, M Coughlan, H Connor
AGU Fall Meeting Abstracts 2022, SM32C-1738, 2022
2022
Forecasting Ground Magnetic Perturbations at High and Mid-Latitudes Using Deep Learning and Near Real-Time Solar Wind Data
VA Pinto, AM Keesee, M Coughlan, R Mukundan, JW Johnson, ...
AGU Fall Meeting Abstracts 2022, NG52A-0153, 2022
2022
Forecasting of Extreme Ground Magnetic Field Fluctuations at Mid-Latitudes using Machine Learning
M Coughlan, AM Keesee, VA Pinto, R Mukundan, JW Johnson, H Connor
AGU Fall Meeting Abstracts 2022, SM32C-1736, 2022
2022
Using a Convolutional Neural Network with Uncertainty to Forecast GIC Risk of Occurrence at Mid-Latitudes
MK Coughlan
Proceedings of the 2nd Machine Learning in Heliophysics, 25, 2022
2022
Developing near real-time ground magnetic field perturbations predictions with machine learning models
VA Pinto, AM Keesee, M Coughlan, R Mukundan, J Johnson, HK Connor
Proceedings of the 2nd Machine Learning in Heliophysics, 26, 2022
2022
Evaluating Near-Real-Time Ground Magnetic Field Perturbations Predictions Using Machine Learning Models
V Pinto, A Keesee, M Coughlan, R Mukundan, J Johnson, HK Connor
102nd American Meteorological Society Annual Meeting, 2022
2022
Establishing a benchmark for ground magnetic field perturbations predictions using machine learning models
V Pinto, A Keesee, M Coughlan, R Mukundan, B Ferdousi, D Ozturk, ...
AGU Fall Meeting Abstracts 2021, SA12A-05, 2021
2021
Using Convolutional Neural Networks and Long-Short Term Machine Learning Models to Provide Insights into GIC Drivers and Risk of Occurrence.
M Coughlan, A Keesee, V Pinto, R Mukundan, H Connor, J Johnson
AGU Fall Meeting Abstracts 2021, SM35B-1974, 2021
2021
Forecasting Ground-Level Magnetic Perturbations Using a Spherical Elementary Current System
R Mukundan, A Keesee, V Pinto, M Coughlan, H Connor
AGU Fall Meeting Abstracts 2021, SM41A-03, 2021
2021
Using Machine Learning and Geomagnetic Storm Data to Determine the Risk of GIC Occurrence
M Coughlan, AM Keesee, VA Pinto, JW Johnson, HK Connor
AGU Fall Meeting Abstracts 2020, SM011-13, 2020
2020
A Deep Learning Approach to the Forecasting of Ground Magnetic Field Perturbations at High and Mid-Latitudes
VA Pinto, AM Keesee, M Coughlan, MA Gadbois, JW Johnson, ...
AGU Fall Meeting Abstracts 2020, NG006-05, 2020
2020
Predicting Ground Magnetic Field Fluctuations from Geomagnetic Storm Data Using a Novel Transformer-Based Model
S Hari, JW Johnson, VA Pinto, M Coughlan, AM Keesee, HK Connor
AGU Fall Meeting Abstracts 2020, NG004-0033, 2020
2020
Near Real Time Forecasting of Ground Magnetic Fluctuations and Geomagnetically Induced Currents Risk Assessment
C Lamarre, AM Keesee, VA Pinto, M Coughlan, HK Connor
AGU Fall Meeting Abstracts 2020, IN039-11, 2020
2020
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