Difference between revisions of "RG: Machine Learning"

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__TOC__
 
__TOC__
 
"""""" This page is under development """""
 
  
 
==Chairs==
 
==Chairs==
Line 9: Line 7:
 
! Name          !! Affiliation !! Email
 
! Name          !! Affiliation !! Email
 
|-
 
|-
| 1. Hyunju Connor  || NASA GSFC || [mailto:hyunju.k.connor@nasa.gov]
+
| 1. Hyunju Connor  || NASA GSFC || [mailto:hyunju.k.connor@nasa.gov ]
 
|-
 
|-
| 2. Matthew Argall  || UNH || [mailto:Matthew.Argall@unh.edu]
+
| 2. Matthew Argall  || UNH || [mailto:Matthew.Argall@unh.edu ]
 
|-
 
|-
| 3. Xiangning Chu  || LASP, CU Boulder || [mailto:xiangning.chu@lasp.colorado.edu]
+
| 3. Xiangning Chu  || LASP, CU Boulder || [mailto:xiangning.chu@lasp.colorado.edu ]
 
|-
 
|-
| 4. Bashi Ferdousi    || AFRL || [mailto:banafsheh.ferdousi@spaceforce.edu]
+
| 4. Bashi Ferdousi    || AFRL || [mailto:banafsheh.ferdousi@spaceforce.edu ]
 
|-
 
|-
| 5. Valluri Sai Gowtam    || UAF || [mailto:svalluri@alaska.edu]
+
| 5. Valluri Sai Gowtam    || NASA GSFC/CUA || [mailto:saigowtam.valluri@nasa.gov ]
 
|}
 
|}
 +
 +
==mini-GEM 2024==
 +
 +
At the 2024 GEM summer workshop, ML-GEM participants selected three challenge storms to facilitate community-wide, AI-driven research activities over the coming years:
 +
 +
'''1. January 4, 2023 (minimum Sym-H :-74nT at 09:04UT)'''
 +
 +
'''2. May 6, 2023 (minimum Sym-H : -108 nT at 05:11 UT)'''
 +
 +
'''3. May 11, 2024 (minimum Sym-H : -518nT at 02:14 UT)'''
 +
 +
The goals of this initiative are to
 +
1) Understand the current status of AI-driven heliophysics models,
 +
2) Share new AI techniques and lessons learned,
 +
3) Compile a catalog of ML-ready dataset, and
 +
3) Unify community-wide AI efforts under a single modeling framework, AIMFAHR.
 +
 +
The ML-GEM resource group invites AI-driven studies on the challenge storms to a mini-GEM session, which will be scheduled in the afternoon of Sunday, December 8, prior to AGU, as well as to the regular ML-GEM session during the 2025 GEM summer workshop. 
 +
 +
We look forward to your participation.
  
 
==About the ML-GEM Resource Group==
 
==About the ML-GEM Resource Group==
Line 24: Line 42:
 
Machine Learning based Geospace Environment Modeling (ML-GEM) is a new resource group selected by the GEM Steering Committee, with two primary goals: advancing system-of-systems science in Sun-Earth interaction from a data-driven perspective and developing an ML-based Geospace Environment Modeling by integrating community-wide ML efforts.
 
Machine Learning based Geospace Environment Modeling (ML-GEM) is a new resource group selected by the GEM Steering Committee, with two primary goals: advancing system-of-systems science in Sun-Earth interaction from a data-driven perspective and developing an ML-based Geospace Environment Modeling by integrating community-wide ML efforts.
  
Machine Learning (ML) efforts have experienced rapid growth within the GEM community over
+
==Goals and Objectives==
the past few years. However, there has been no collective initiative to develop a new ML-based
+
 
Geospace Environment Model (ML-GEM) that comprehensively connects ML-based models from the Sun to the solar wind, magnetosphere, and upper atmosphere to systematically understand and predict Sun – Earth interactions. Our new Focus Group (FG) aims to gather and lead diverse machine-learning efforts within the GEM community, with the primary goal of developing ML-GEM and gaining insights into our geospace systems from a data-driven perspective.
+
'''1. Invite community-wide ML efforts:''' Extend invitations to a diverse community, including GEM, CEDAR, SHINE, and ML communities, fostering broader participation and collaboration.
  
Over the next four years, our diverse FG team, consisting of four early-career scientists and
+
'''2. Share ML advancements:''' Disseminate the latest ML techniques, including their advantages and disadvantages, and lessons learned. This knowledge-sharing will support community-wide geospace environment modeling efforts.
two females, aims to unite ML efforts across the GEM community. We will actively explore
 
innovative ways to link existing and developing ML models and establish the initial architecture
 
of a new data-driven global geospace environment model. These efforts will subsequently lead to system-of-systems research to understand the collective behavior of geospace systems in response to incoming solar wind and Interplanetary Magnetic Field (IMF) conditions. Additionally, we will share new ML techniques and ML-ready dataset, outline the pros and cons of ML approaches, and offer valuable lessons learned, providing a resource for newcomers initiating their ML projects. The main research area of this FG is Global General Circulation Modeling (GGCM). However, our topics cover all other four GEM research areas, aligning well with all current GEM FGs.
 
  
==Background==
+
'''3. Facilitate integration discussions:''' Stimulate discussions on integrating diverse ML models across geospace systems, such as solar wind, magnetosheath, cusp, ring current, radiation belt, plasmasphere, and ionosphere.
  
Recently, Machine Learning (ML) techniques have demonstrated significant potential in heliophysics research. These computational methods uncover complex relationships and patterns between input and output by learning from the ever-growing space/ground-based observations, as opposed to relying on a set of predetermined equations. ML models excel at predicting the dynamic response of geospace systems to time-varying solar wind and IMF input, a capability beyond the reach of traditional empirical models designed for static systems under steady input conditions. This innovative approach to data handling enables the discovery of hidden behaviors in our dynamic systems, such as global tail reconnection lines (Stephens et al. 2023). Notably, certain ML models have surpassed empirical counterparts, marking ML-based models as the next
+
'''4. Develop ML-based models:''' Initiate the development of an ML-based geospace environment model and encourage the strategic creation and inclusion of ML components in ML-GEM for enhanced performance.
generation of statistical models.
+
 
 +
'''5. Explore systematic responses:''' Investigate system-of-systems science in the solar wind – Earth interaction by leveraging ML-GEM and other ML models.
 +
 
 +
'''6. Compile a catalog of ML-ready dataset:''' Cleaning and preparing datasets constitute a substantial portion of machine learning model development. We will curate a list of existing ML-ready datasets in heliophysics for various scientific purposes.
 +
 
 +
==GEM-2024 Activities==
 +
 
 +
ML-GEM chairs have scheduled 4 sessions for the upcoming 2024 GEM Summer workshop held in Fort Collins, Colorado during June 23-28.
 +
 
 +
 
 +
'''1. ML-GEM stand-alone session (10:30am - 12:00pm on 06/27 Thursday):'''  All ML efforts across the GEM research areas are invited.
 +
 
 +
Zoom Link: https://unh.zoom.us/j/92641406400?pwd=ghwL2kuHUr4ZUCcZZVd8rVFk1Q5XGn.1, Password: 452277.
 +
 
 +
'''8min/presentation.''' We recommend 6min presentation, 1min question, and 1min transition.
 +
 
 +
{| class="wikitable"
 +
|+ style="caption-side:top; text-align:middle | ML-GEM Standalone Session Schedule: 10:30am - 12:00pm on Thursday, Jun 27
 +
! !! Name !! Affiliation !! Title !! Time !! Topic
 +
|-
 +
| 1 || Mikhail Sitnov || APL/JHU || Data mining of the cislunar magnetotail || 10:30 || Tail/nightside
 +
|-
 +
| 2 || Savvas Raptis || APL/JHU || Modeling Earth's Plasma Sheet with Machine learning || 10:38 || Tail/nightside
 +
|-
 +
| 3 || Xiaofei Shi || UCLA || Data mining-based reconstruction of the transition region in the nightside magnetosphere validated through ELFIN isotropic boundaries || 10:46 || Tail/nightside
 +
|-
 +
| 4 ||James Edmond/Jimmy Raeder || UNH || Clustering of Plasma Region Observations using Self-Organizing Maps || 10:54 || Dayside
 +
|-
 +
| 5 || Connor O'Brien || BU || PRIME-SH: A Data-Driven Probabilistic Model of Earth’s Magnetosheath || 11:02 || Dayside
 +
|-
 +
| 6 || Sai Gowtam Valluri || UAF || Machine Learning-based Particle Precipitation Model (ML-PPM) || 11:10 || Ionosphere
 +
|-
 +
| 7 || Matthew Blandin || UAF || Residual Convolutional Neural Networks for Global Geomagnetic Field Predictions || 11:18 || GIC
 +
|-
 +
| 8 || Jonathan Mellina || LASP || Tidal Effects in Earth's Plasmasphere Using a Machine Learning Model || 11:26 || Plasmasphere
 +
|-
 +
| 9 || Wen Li || BU || Integrate Deep Learning into Physics-Based Simulation: Modeling Global Electron Precipitation Driven by Whistler Mode Waves || 11:34 || Inner Mag
 +
|-
 +
| 10 || Evan McPherson || LASP || Imbalanced Regressive Model of Electron Fluxes in the Earth's Outer Radiation Belt || 11:42 || Inner Mag
 +
|-
 +
| 11 || Xiangning Chu || LASP || Imbalanced regressive neural network model for whistler-mode hiss waves: spatial and temporal evolution || 11:50 || Inner Mag
 +
|-
 +
| 12 || Drew Turner || APL/JHU || Unsupervised clustering and a generative model for Earth's bow shock using MMS data || 11:58 || Dayside
 +
|}
  
ML models have multiple broader impacts. Firstly, ML models can supply realistic inputs for physics-based models, such as solar wind input for the global MHD models and high-latitude forcing for upper atmosphere models. Secondly, they can serve as valuable validation tools for physics-based calculations of geospace systems, facilitating comparisons between MHD-based (or physics-based) and ML-based (or statistical) outputs, such as global auroral precipitation patterns and cross polar cap potentials. Thirdly, ML techniques offer excellent data-mining tools, aiding in event selection, such as magnetopause crossings and substorm onsets. Lastly, despite the time-
+
'''2. ML-GEM joint session with the Inner Magnetosphere Focus Groups (3:30 - 05:00 PM on 06/27 Thursday):''' ML efforts particularly in the inner magnetosphere research area are invited. We will discuss how to align ML efforts with current science associated with the SCIMM/RB/CP Focus Groups. An outcome will be to identify an open question, pair ML and data analysts, and create a plan to pursue answers for the next GEM Workshop.
consuming training of ML models, once trained, they promptly generate outputs from inputs, allowing them to nowcast space weather without the massive computations typically required in physics-based models.
 
  
The GEM community has accumulated various ML models that cover a range of systems from the solar wind to the magnetosphere and ionosphere. Some ML models predict solar wind and IMF based on solar EUV images (Upendran et al. 2020; Raju & Das 2021), while others ensure accurate SW/IMF propagation from solar wind monitors to the Earth’s bow shock nose (Baumann & McCloskey 2021; O’Brien et al. 2023). Furthermore, certain models replicate responses in the magnetosheath, cusp, ring current, radiation belt, plasmasphere, ionosphere, and thermosphere concerning time-varying solar wind/IMF conditions and geomagnetic indices (Li et al., 2023; Ma et al., 2023; Chu et al., 2017, 2021; Cao et al., 2023; Raptis et al., 2020; Gowtam et al., 2019; Licata et al., 2022). There are also models designed explicitly for mining interesting events from vast heliophysics datasets (Stephens et al., 2019; Arnold et al., 2023). However, there have been no community-wide efforts to interconnect the existing ML models, develop an ML-based geospace environment model, and investigate how each individual geospace system collectively
+
Zoom Link: https://unh.zoom.us/j/93264767597?pwd=tjaJrNendpMdMGP8aaYbRKrIGnCVbO.1. Password: 435443
responds to the incoming solar wind drivers. Our focus group proposes to integrate growing ML efforts within the GEM community across all applicable topics and fields, aiming to pioneer a new generation of space weather prediction models and conduct system-of-systems science research.
 
Our focus group will advance our understanding of heliophysics by integrating cutting-edge ML techniques and coupling them with other toolkits within the GEM community. For example, explainable ML techniques can unveil the relative contribution factors to radiation belt acceleration and loss processes (Ma et al., 2022). Solving theoretical equations, such as a current continuity equation, with physical parameters derived from ML models reveals how ionospheric electrodynamics responds to time-varying solar wind/IMF drivers (Gowtam et al. 2023). Coupling first-principle simulations with ML models, such as a global MHD model coupled with a ML inner-magnetosphere model, can reproduce the unstable and eruptive nature of geospace system, offering insights distant from the more conserved system response seen in typical modeling (Sciola, 2022).
 
  
Our FG activities will transform the perception of ML within the community, shifting it from being seen as a black box to being recognized as a fundamental toolkit for geospace physicist, alongside numerical simulations, theoretical approaches, and observation analysis. Coupling among these tool kits would be innovative and at the frontier of physical discoveries in the next decade. GEM should commence this transformative step now.
+
'''The discussion-only session with inner MAG focus groups.'''
 +
{| class="wikitable"
 +
|+ style="caption-side:top; text-align:middle | MLGEM-RB-SCIMM-CP Joint Session: 3:30 - 5:00pm on Thursday, Jun 27
 +
! !! Name !! Affiliation !! Title !! Time !! Topic
 +
|-
 +
| 1 || FG/RG Chairs || || Science questions for MLGEM, RB, SCIMM, and CP fields || ||
 +
|-
 +
| 2 || Everyone || || Discussion ||  ||
 +
|-
 +
|  ||  ||  || - Identify an open question, pair ML and data analysis, and create a plan to pursue answers for the next GEM Workshop. ||  ||
 +
|}
  
==3. Timeliness==
 
  
ML activities within the heliophysics community are mature enough to take the next innovative step. In past years, GEM convened an annual machine learning session during a summer workshop, but it was not categorized under a focus group. Consequently, there is a limitation for this session to collectively set a common goal and maintain the community’s momentum toward that goal. Our focus group is timely in overcoming this limitation. We will address the community’s growing  interest in ML techniques and steer the community toward a common goal: developing a ML-based geospace environment model and conducting systems science research from a data-driven perspective.
+
'''3. ML-GEM discussion session (10:30am - 12:00pm on 06/28 Friday):''' We will showcase currently available AI models in the heliophysics community and discuss how to unify them into a single AI modeling framework for understanding and predicting the geospace environment.
  
==4. Goals and Objectives==
+
Zoom Link: https://unh.zoom.us/j/99110890924?pwd=LsvPTw5LtrTwQVeprH8uQZCbLp4DEF.1. Password: 034895
  
Our overarching goals are to develop an ML-based geospace environment model and advance
+
The session will host three talks from the standalone session (10:30 to 10:54am) and then move to the discussion sessions (10:54am -12:00pm).
system-of-systems science in Sun-Earth interaction. Over the 4-year focus group period, we will
 
implement the following objectives to achieve these goals:
 
  
1. Invite community-wide ML efforts: Extend invitations to a diverse community, including GEM, CEDAR, SHINE, and ML communities, fostering broader participation and collaboration.
+
{| class="wikitable"
 +
|+ style="caption-side:top; text-align:middle | ML-GEM Standalone/Discussion Session: 10:30 - 12:00pm on Friday, Jun 28
 +
!  !! Name !! Affiliation !! Title !! Time !! Topic
 +
|-
 +
| 1 || Jacob Bortnik || UCLA || Using interpretable AI to discover the drivers of acceleration vs depletion radiation belt events || 10:30 || Inner Mag
 +
|-
 +
| 2 || Qusai Al Shidi || WVU || Reduced Order Probabilistic Emulator of RAM-SCB: Towards Non-linearity with Deep Learning || 10:38 || Inner Mag
 +
|-
 +
| 3 || Man Hua || UCLA || Machine‐learning based identification of the critical driving factors controlling storm‐time outer radiation belt electron flux dropouts || 10:46 || Inner Mag
 +
|-
 +
| 4 || Hyunju Connor || NASA/GSFC || Overview of ML-GEL goals, plan, and discussion topics || 10:54 ||
 +
|-
 +
| 5 || '''Everyone''' || || '''Presentation of current ML models (2min/model) : Submit slide format''' [https://docs.google.com/presentation/d/1qzgn880hCaDHLkEhL6GUEcEI3m5SJjQK/edit#slide=id.g2e728881d58_0_266] || 11:00 ||
 +
|-
 +
|  ||  ||  || '''Discussion''' ||  ||
 +
|-
 +
|  ||  || || 1. Integrate the ML models into a unified AI framework of Heliophysics Modeling ||
 +
|-
 +
| || || || 2. Select a common testing dataset (year, storms, substorms) for the framework validation ||
 +
|-
 +
| || || || 3. Determine action items for the next ML-GEM meeting ||
 +
|}
  
2. Share ML advancements: Disseminate the latest ML techniques, including their advantages and disadvantages, and lessons learned. This knowledge-sharing will support community-wide geospace environment modeling efforts.
+
'''4. ML-GEM tutorial session (1:30 - 3:00pm on 06/28 Friday):'''  A hands-on tutorial on the Long Short-Term Memory (LSTM) technique that models time-series data. This tutorial will use the LSTM model and the SuperMAG geomagnetic field data, published in Blandin et al. (2022; https://doi.org/10.3389/fspas.2022.846291).
  
3. Facilitate integration discussions: Stimulate discussions on integrating diverse ML models across geospace systems, such as solar wind, magnetosheath, cusp, ring current, radiation belt, plasmasphere, and ionosphere.
+
Zoom Link: https://unh.zoom.us/j/97969090948?pwd=KRF3SEW7E5GELUn8DXozlvTYbKsvMa.1. Password: 074062.
  
4. Develop ML-based models: Initiate the development of an ML-based geospace environment model and encourage the strategic creation and inclusion of ML components in ML-GEM for enhanced performance.
+
{| class="wikitable"
 +
|+ style="caption-side:top; text-align:middle | ML-GEM Tutorial Session: 1:30 - 3:00pm on Friday, Jun 28
 +
!  !! Name !! Affiliation !! Title !! Time !! Topic
 +
|-
 +
| 1 || Hyunju Connor || NASA/GSFC || Long Short-TERM Memory Model of Alaska geomagnetic field variation || 1:30 ||
 +
|-
 +
| 2 || Matt Blandin || UAF || Introduction of the LSTM code || 1:40 ||
 +
|-
 +
| 3 || Everyone || - || Hands-on Activities: Follow the '''instructions below''' to get started. || 1:50 ||
 +
|}
  
5. Explore systematic responses: Investigate system-of-systems science in the solar wind – Earth interaction by leveraging ML-GEM and other ML models.
+
'''Instructions for the ML-GEM Tutorial Session:'''
  
6. Compile a catalog of ML-ready dataset: Cleaning and preparing datasets constitute a substantial portion of machine learning model development. We will curate a list of existing ML-ready datasets in heliophysics for various scientific purposes.
+
Welcome to the ML-GEM tutorial session! We will be using the Python programming language and the Google Colab platform for our exercises. There’s no need to download or install anything. Just follow these simple steps:
  
==GEM-2024 Activities==
+
'''Step 1:''' Download the tutorial Jupyter notebook and the data files via the provided link:https://drive.google.com/drive/u/1/folders/1CflXlSi5KZ4Iy0f4MkWRrR_j8t6mmLO1
  
ML-GEM chairs have scheduled 4 sessions for the upcoming 2024 GEM Summer workshop held in Fort Collins, Colorado during June 23-28:
+
'''Step 2:''' Sign in to your Google Drive account.
  
1. ML-GEM stand-alone session : All ML efforts across the GEM research areas are invited.
+
'''Step 3:''' Create a new folder named “LSTM_tutorial” in your Google Drive.
  
2. ML-GEM joint session with the Inner Magnetosphere Focus Groups : ML efforts particularly in the inner magnetosphere research area are invited.  
+
'''Step 4:''' Upload the Jupyter notebook and the data files into the “LSTM_tutorial” folder.
  
3. ML-GEM discussion session : Please submit a summary of your ML model (1-2 slides) — the slide format to be announced — and join the discussion on how to integrate your model into a unified, data-driven geospace environment model.  
+
'''Step 5:''' Open the tutorial file by double-clicking on it. It will launch in the Google Colab platform.
  
4. ML-GEM tutorial session: A hands-on tutorial on the Long Short-Term Memory (LSTM) technique that models time-series data. This tutorial will use the LSTM model and the SuperMAG geomagnetic field data, published in Blandin et al. (2022; https://doi.org/10.3389/fspas.2022.846291).
+
'''Step 6:''' By default, the code will execute using the “CPU” option. To change this, locate the dropdown menu next to the “Connect” button in the top-right corner. Select “Change runtime type,” then choose the “T4 GPU” option.
  
If you are interested in giving a talk in these sessions, please submit your talk at the following website: https://forms.gle/fmsU2eeBFFwD4tDQ8.
+
You’re now fully prepared for the tutorial. If you run into any issues during the setup process, don’t hesitate to reach out. One of the co-chairs will be available to assist you. We’re excited to have you join us for the tutorial!

Latest revision as of 07:23, 23 October 2024

Chairs

Table 1: RG Chairs.
Name Affiliation Email
1. Hyunju Connor NASA GSFC [1]
2. Matthew Argall UNH [2]
3. Xiangning Chu LASP, CU Boulder [3]
4. Bashi Ferdousi AFRL [4]
5. Valluri Sai Gowtam NASA GSFC/CUA [5]

mini-GEM 2024

At the 2024 GEM summer workshop, ML-GEM participants selected three challenge storms to facilitate community-wide, AI-driven research activities over the coming years:

1. January 4, 2023 (minimum Sym-H :-74nT at 09:04UT)

2. May 6, 2023 (minimum Sym-H : -108 nT at 05:11 UT)

3. May 11, 2024 (minimum Sym-H : -518nT at 02:14 UT)

The goals of this initiative are to 1) Understand the current status of AI-driven heliophysics models, 2) Share new AI techniques and lessons learned, 3) Compile a catalog of ML-ready dataset, and 3) Unify community-wide AI efforts under a single modeling framework, AIMFAHR.

The ML-GEM resource group invites AI-driven studies on the challenge storms to a mini-GEM session, which will be scheduled in the afternoon of Sunday, December 8, prior to AGU, as well as to the regular ML-GEM session during the 2025 GEM summer workshop.

We look forward to your participation.

About the ML-GEM Resource Group

Machine Learning based Geospace Environment Modeling (ML-GEM) is a new resource group selected by the GEM Steering Committee, with two primary goals: advancing system-of-systems science in Sun-Earth interaction from a data-driven perspective and developing an ML-based Geospace Environment Modeling by integrating community-wide ML efforts.

Goals and Objectives

1. Invite community-wide ML efforts: Extend invitations to a diverse community, including GEM, CEDAR, SHINE, and ML communities, fostering broader participation and collaboration.

2. Share ML advancements: Disseminate the latest ML techniques, including their advantages and disadvantages, and lessons learned. This knowledge-sharing will support community-wide geospace environment modeling efforts.

3. Facilitate integration discussions: Stimulate discussions on integrating diverse ML models across geospace systems, such as solar wind, magnetosheath, cusp, ring current, radiation belt, plasmasphere, and ionosphere.

4. Develop ML-based models: Initiate the development of an ML-based geospace environment model and encourage the strategic creation and inclusion of ML components in ML-GEM for enhanced performance.

5. Explore systematic responses: Investigate system-of-systems science in the solar wind – Earth interaction by leveraging ML-GEM and other ML models.

6. Compile a catalog of ML-ready dataset: Cleaning and preparing datasets constitute a substantial portion of machine learning model development. We will curate a list of existing ML-ready datasets in heliophysics for various scientific purposes.

GEM-2024 Activities

ML-GEM chairs have scheduled 4 sessions for the upcoming 2024 GEM Summer workshop held in Fort Collins, Colorado during June 23-28.


1. ML-GEM stand-alone session (10:30am - 12:00pm on 06/27 Thursday): All ML efforts across the GEM research areas are invited.

Zoom Link: https://unh.zoom.us/j/92641406400?pwd=ghwL2kuHUr4ZUCcZZVd8rVFk1Q5XGn.1, Password: 452277.

8min/presentation. We recommend 6min presentation, 1min question, and 1min transition.

ML-GEM Standalone Session Schedule: 10:30am - 12:00pm on Thursday, Jun 27
Name Affiliation Title Time Topic
1 Mikhail Sitnov APL/JHU Data mining of the cislunar magnetotail 10:30 Tail/nightside
2 Savvas Raptis APL/JHU Modeling Earth's Plasma Sheet with Machine learning 10:38 Tail/nightside
3 Xiaofei Shi UCLA Data mining-based reconstruction of the transition region in the nightside magnetosphere validated through ELFIN isotropic boundaries 10:46 Tail/nightside
4 James Edmond/Jimmy Raeder UNH Clustering of Plasma Region Observations using Self-Organizing Maps 10:54 Dayside
5 Connor O'Brien BU PRIME-SH: A Data-Driven Probabilistic Model of Earth’s Magnetosheath 11:02 Dayside
6 Sai Gowtam Valluri UAF Machine Learning-based Particle Precipitation Model (ML-PPM) 11:10 Ionosphere
7 Matthew Blandin UAF Residual Convolutional Neural Networks for Global Geomagnetic Field Predictions 11:18 GIC
8 Jonathan Mellina LASP Tidal Effects in Earth's Plasmasphere Using a Machine Learning Model 11:26 Plasmasphere
9 Wen Li BU Integrate Deep Learning into Physics-Based Simulation: Modeling Global Electron Precipitation Driven by Whistler Mode Waves 11:34 Inner Mag
10 Evan McPherson LASP Imbalanced Regressive Model of Electron Fluxes in the Earth's Outer Radiation Belt 11:42 Inner Mag
11 Xiangning Chu LASP Imbalanced regressive neural network model for whistler-mode hiss waves: spatial and temporal evolution 11:50 Inner Mag
12 Drew Turner APL/JHU Unsupervised clustering and a generative model for Earth's bow shock using MMS data 11:58 Dayside

2. ML-GEM joint session with the Inner Magnetosphere Focus Groups (3:30 - 05:00 PM on 06/27 Thursday): ML efforts particularly in the inner magnetosphere research area are invited. We will discuss how to align ML efforts with current science associated with the SCIMM/RB/CP Focus Groups. An outcome will be to identify an open question, pair ML and data analysts, and create a plan to pursue answers for the next GEM Workshop.

Zoom Link: https://unh.zoom.us/j/93264767597?pwd=tjaJrNendpMdMGP8aaYbRKrIGnCVbO.1. Password: 435443

The discussion-only session with inner MAG focus groups.

MLGEM-RB-SCIMM-CP Joint Session: 3:30 - 5:00pm on Thursday, Jun 27
Name Affiliation Title Time Topic
1 FG/RG Chairs Science questions for MLGEM, RB, SCIMM, and CP fields
2 Everyone Discussion
- Identify an open question, pair ML and data analysis, and create a plan to pursue answers for the next GEM Workshop.


3. ML-GEM discussion session (10:30am - 12:00pm on 06/28 Friday): We will showcase currently available AI models in the heliophysics community and discuss how to unify them into a single AI modeling framework for understanding and predicting the geospace environment.

Zoom Link: https://unh.zoom.us/j/99110890924?pwd=LsvPTw5LtrTwQVeprH8uQZCbLp4DEF.1. Password: 034895

The session will host three talks from the standalone session (10:30 to 10:54am) and then move to the discussion sessions (10:54am -12:00pm).

ML-GEM Standalone/Discussion Session: 10:30 - 12:00pm on Friday, Jun 28
Name Affiliation Title Time Topic
1 Jacob Bortnik UCLA Using interpretable AI to discover the drivers of acceleration vs depletion radiation belt events 10:30 Inner Mag
2 Qusai Al Shidi WVU Reduced Order Probabilistic Emulator of RAM-SCB: Towards Non-linearity with Deep Learning 10:38 Inner Mag
3 Man Hua UCLA Machine‐learning based identification of the critical driving factors controlling storm‐time outer radiation belt electron flux dropouts 10:46 Inner Mag
4 Hyunju Connor NASA/GSFC Overview of ML-GEL goals, plan, and discussion topics 10:54
5 Everyone Presentation of current ML models (2min/model) : Submit slide format [6] 11:00
Discussion
1. Integrate the ML models into a unified AI framework of Heliophysics Modeling
2. Select a common testing dataset (year, storms, substorms) for the framework validation
3. Determine action items for the next ML-GEM meeting

4. ML-GEM tutorial session (1:30 - 3:00pm on 06/28 Friday): A hands-on tutorial on the Long Short-Term Memory (LSTM) technique that models time-series data. This tutorial will use the LSTM model and the SuperMAG geomagnetic field data, published in Blandin et al. (2022; https://doi.org/10.3389/fspas.2022.846291).

Zoom Link: https://unh.zoom.us/j/97969090948?pwd=KRF3SEW7E5GELUn8DXozlvTYbKsvMa.1. Password: 074062.

ML-GEM Tutorial Session: 1:30 - 3:00pm on Friday, Jun 28
Name Affiliation Title Time Topic
1 Hyunju Connor NASA/GSFC Long Short-TERM Memory Model of Alaska geomagnetic field variation 1:30
2 Matt Blandin UAF Introduction of the LSTM code 1:40
3 Everyone - Hands-on Activities: Follow the instructions below to get started. 1:50

Instructions for the ML-GEM Tutorial Session:

Welcome to the ML-GEM tutorial session! We will be using the Python programming language and the Google Colab platform for our exercises. There’s no need to download or install anything. Just follow these simple steps:

Step 1: Download the tutorial Jupyter notebook and the data files via the provided link:https://drive.google.com/drive/u/1/folders/1CflXlSi5KZ4Iy0f4MkWRrR_j8t6mmLO1

Step 2: Sign in to your Google Drive account.

Step 3: Create a new folder named “LSTM_tutorial” in your Google Drive.

Step 4: Upload the Jupyter notebook and the data files into the “LSTM_tutorial” folder.

Step 5: Open the tutorial file by double-clicking on it. It will launch in the Google Colab platform.

Step 6: By default, the code will execute using the “CPU” option. To change this, locate the dropdown menu next to the “Connect” button in the top-right corner. Select “Change runtime type,” then choose the “T4 GPU” option.

You’re now fully prepared for the tutorial. If you run into any issues during the setup process, don’t hesitate to reach out. One of the co-chairs will be available to assist you. We’re excited to have you join us for the tutorial!