Folgen
Michael Coughlan
Michael Coughlan
Graduate Student, University of New Hampshire
Bestätigte E-Mail-Adresse bei wildcats.unh.edu
Titel
Zitiert von
Zitiert von
Jahr
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
Das System kann den Vorgang jetzt nicht ausführen. Versuchen Sie es später erneut.
Artikel 1–20