Identification of Flux Rope Orientation via Neural Networks
- URL: http://arxiv.org/abs/2202.05901v1
- Date: Fri, 11 Feb 2022 20:59:26 GMT
- Title: Identification of Flux Rope Orientation via Neural Networks
- Authors: Thomas Narock, Ayris Narockm Luiz F. G. Dos Santos, Teresa
Nieves-Chinchilla
- Abstract summary: We explore a convolutional neural network's (CNN) ability to predict the embedded magnetic flux rope's orientation.
Our work uses CNNs trained with magnetic field vectors from analytical flux rope data.
Results from evaluating the trained network against observed ICMEs from Wind during 1995-2015 are presented.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Geomagnetic disturbance forecasting is based on the identification of solar
wind structures and accurate determination of their magnetic field orientation.
For nowcasting activities, this is currently a tedious and manual process.
Focusing on the main driver of geomagnetic disturbances, the twisted internal
magnetic field of interplanetary coronal mass ejections (ICMEs), we explore a
convolutional neural network's (CNN) ability to predict the embedded magnetic
flux rope's orientation once it has been identified from in situ solar wind
observations. Our work uses CNNs trained with magnetic field vectors from
analytical flux rope data. The simulated flux ropes span many possible
spacecraft trajectories and flux rope orientations. We train CNNs first with
full duration flux ropes and then again with partial duration flux ropes. The
former provides us with a baseline of how well CNNs can predict flux rope
orientation while the latter provides insights into real-time forecasting by
exploring how accuracy is affected by percentage of flux rope observed. The
process of casting the physics problem as a machine learning problem is
discussed as well as the impacts of different factors on prediction accuracy
such as flux rope fluctuations and different neural network topologies.
Finally, results from evaluating the trained network against observed ICMEs
from Wind during 1995-2015 are presented.
Related papers
- Forecasting Geoffective Events from Solar Wind Data and Evaluating the Most Predictive Features through Machine Learning Approaches [0.0]
This study addresses the prediction of geomagnetic disturbances by exploiting machine learning techniques.
The problem is approached as a binary classification aiming to predict one hour in advance a decrease in the SYM-H geomagnetic activity index below the threshold of $-50$ nT.
The optimal performance of the adopted neural network in properly forecasting the onset of geomagnetic storms is shown.
arXiv Detail & Related papers (2024-03-14T20:13:26Z) - A Bionic Data-driven Approach for Long-distance Underwater Navigation with Anomaly Resistance [59.21686775951903]
Various animals exhibit accurate navigation using environment cues.
Inspired by animal navigation, this work proposes a bionic and data-driven approach for long-distance underwater navigation.
The proposed approach uses measured geomagnetic data for the navigation, and requires no GPS systems or geographical maps.
arXiv Detail & Related papers (2024-02-06T13:20:56Z) - Forecasting Fold Bifurcations through Physics-Informed Convolutional
Neural Networks [0.0]
This study proposes a physics-informed convolutional neural network (CNN) for identifying dynamical systems' time series near a fold bifurcation.
The CNN is trained with a relatively small amount of data and on a single, very simple system.
A similar task requires significant extrapolation capabilities, which are obtained by exploiting physics-based information.
arXiv Detail & Related papers (2023-12-21T10:07:52Z) - Forecasting subcritical cylinder wakes with Fourier Neural Operators [58.68996255635669]
We apply a state-of-the-art operator learning technique to forecast the temporal evolution of experimentally measured velocity fields.
We find that FNOs are capable of accurately predicting the evolution of experimental velocity fields throughout the range of Reynolds numbers tested.
arXiv Detail & Related papers (2023-01-19T20:04:36Z) - Forecasting large-scale circulation regimes using deformable
convolutional neural networks and global spatiotemporal climate data [86.1450118623908]
We investigate a supervised machine learning approach based on deformable convolutional neural networks (deCNNs)
We forecast the North Atlantic-European weather regimes during extended boreal winter for 1 to 15 days into the future.
Due to its wider field of view, we also observe deCNN achieving considerably better performance than regular convolutional neural networks at lead times beyond 5-6 days.
arXiv Detail & Related papers (2022-02-10T11:37:00Z) - Prediction of Large Magnetic Moment Materials With Graph Neural Networks
and Random Forests [0.0]
We use state-of-the-art machine learning methods to scan the Inorganic Crystal Structure Database for ferromagnetic materials.
For random forests, we use a method to select nearly one hundred relevant descriptors based on chemical composition and crystal structure.
We find 15 materials that are likely to have large magnetic moments and have not been yet studied experimentally.
arXiv Detail & Related papers (2021-11-29T17:09:37Z) - Simultaneous boundary shape estimation and velocity field de-noising in
Magnetic Resonance Velocimetry using Physics-informed Neural Networks [70.7321040534471]
Magnetic resonance velocimetry (MRV) is a non-invasive technique widely used in medicine and engineering to measure the velocity field of a fluid.
Previous studies have required the shape of the boundary (for example, a blood vessel) to be known a priori.
We present a physics-informed neural network that instead uses the noisy MRV data alone to infer the most likely boundary shape and de-noised velocity field.
arXiv Detail & Related papers (2021-07-16T12:56:09Z) - Real-time gravitational-wave science with neural posterior estimation [64.67121167063696]
We demonstrate unprecedented accuracy for rapid gravitational-wave parameter estimation with deep learning.
We analyze eight gravitational-wave events from the first LIGO-Virgo Gravitational-Wave Transient Catalog.
We find very close quantitative agreement with standard inference codes, but with inference times reduced from O(day) to a minute per event.
arXiv Detail & Related papers (2021-06-23T18:00:05Z) - Identifying Flux Rope Signatures Using a Deep Neural Network [0.0]
This paper applies machine learning and a current physical flux rope analytical model to identify and further understand the internal structures of ICMEs.
We trained an image recognition artificial neural network with analytical flux rope data, generated from the range of many possible trajectories.
The trained network was then evaluated against the observed ICMEs from WIND during 1995-2015.
arXiv Detail & Related papers (2020-08-30T23:23:57Z) - Time-dependent atomic magnetometry with a recurrent neural network [0.0]
We show that an encoder-decoder architecture neural network can process measurement data and learn an accurate map between recorded signals and the time-dependent magnetic field.
arXiv Detail & Related papers (2020-07-27T13:41:13Z) - Revisiting Initialization of Neural Networks [72.24615341588846]
We propose a rigorous estimation of the global curvature of weights across layers by approximating and controlling the norm of their Hessian matrix.
Our experiments on Word2Vec and the MNIST/CIFAR image classification tasks confirm that tracking the Hessian norm is a useful diagnostic tool.
arXiv Detail & Related papers (2020-04-20T18:12:56Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.