Automatic Encoding of Unlabeled Two Dimensional Data Enabling Similarity Searches: Electron Diffusion Regions and Auroral Arcs

Author:

Smith A. W.1ORCID,Rae I. J.1ORCID,Stawarz J. E.1,Sun W. J.23,Bentley S.1ORCID,Koul A.4ORCID

Affiliation:

1. Department of Mathematics, Physics and Electrical Engineering Northumbria University Newcastle upon Tyne UK

2. Space Sciences Laboratory University of California Berkeley CA USA

3. Department of Climate and Space Sciences and Engineering University of Michigan Ann Arbor MI USA

4. Pinterest Inc San Francisco CA USA

Abstract

AbstractCritically important phenomena in Earth’s magnetosphere often occur briefly, or in small spatial regions. These processes are sampled with orbiting spacecraft or by fixed ground observatories and so rarely appear in data. Identifying such intervals can be an incredibly time consuming task. We apply a novel, powerful method by which two dimensional data can be automatically processed and embeddings created that contain key features of the data. The distance between embedding vectors serves as a measure of similarity. We apply the state‐of‐the‐art method to two example datasets: MMS electron velocity distributions and auroral all sky images. We show that the technique creates embeddings that group together visually similar observations. When provided with novel example images the method correctly identifies similar intervals: when provided with an electron distribution sampled during an encounter with an electron diffusion region the method recovers similar distributions obtained during two other known diffusion region encounters. Similarly, when provided with an interesting auroral structure the method highlights the same structure observed from an adjacent location and at other close time intervals. The method promises to be a useful tool to expand interesting case studies to multiple events, without requiring manual data labeling. Further, the models could be fine‐tuned with relatively small set of labeled example data to perform tasks such as classification. The embeddings can also be used as input to deep learning models, providing a key intermediary step—capturing the key features within the data.

Funder

Natural Environment Research Council

Royal Society

National Aeronautics and Space Administration

Publisher

American Geophysical Union (AGU)

Reference82 articles.

1. Agastya C. Ghebremusse S. Anderson I. Reed C. Vahabi H. &Todeschini A.(2021).Self‐supervised contrastive learning for irrigation detection in satellite imagery. InTackling Climate Change with Machine Learning Workshop at ICML 2021. Retrieved fromhttp://arxiv.org/abs/2108.05484

2. Angelopoulos V. Cruce P. Drozdov A. Grimes E. W. Hatzigeorgiu N. King D. A. et al. (2019).The Space Physics Environment Data Analysis System (SPEDAS)[Software].Space Science Reviews 215(1) 9.https://doi.org/10.1007/s11214‐018‐0576‐4

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