Javascript must be enabled to continue!
Identification of Flux Rope Orientation via Neural Networks
View through CrossRef
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.
Title: Identification of Flux Rope Orientation via Neural Networks
Description:
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 Results
Effects of Broken Rope Components on Small-Scale Polyester Rope Response: Numerical Approach
Effects of Broken Rope Components on Small-Scale Polyester Rope Response: Numerical Approach
Abstract
In this paper, the effects of broken rope components on rope failure axial strain, failure axial load and rope stiffness is studied using 3D finite eleme...
International and National Standards for Large Synthetic-Fiber Ropes
International and National Standards for Large Synthetic-Fiber Ropes
ABSTRACT
Standards for large synthetic-fiber ropes are published by various national and international organizations. There are significant differences among thes...
Residual Strength Of Aramid Rope
Residual Strength Of Aramid Rope
ABSTRACT
Tensile fatigue test and residual strength test were carried out systematically on the strength reduction of braid-on-braid small size aramid rope in our...
Drifting of the line-tied footpoints of CME flux-ropes
Drifting of the line-tied footpoints of CME flux-ropes
Context. Bridging the gap between heliospheric and solar observations of eruptions requires the mapping of interplanetary coronal mass ejection (CME) footpoints down to the Sun’s s...
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...
Fundamental study on rope vibration suppression by middle transfer floor using risk information
Fundamental study on rope vibration suppression by middle transfer floor using risk information
Lifts are essential for means of vertical transportation. Recently, the lifts installed in the high-rise buildings are long travel, thus the lift ropes are becoming longer. The nat...
Rope on Rope: Reducing Residual Vibrations in Rope-Based Anchoring System and Rope-Driven Façade Operation Robot
Rope on Rope: Reducing Residual Vibrations in Rope-Based Anchoring System and Rope-Driven Façade Operation Robot
Maintenance of the exteriors of buildings with convex façades, such as skyscrapers, is in high demand in urban centers. However, manual maintenance is inherently dangerous due to t...

