Theory and modeling of the magnetic field measurement in LISA PathFinder
M Diaz-Aguilo, E Garcia-Berro, A Lobo

TL;DR
This paper presents a neural network-based method to accurately interpolate magnetic field measurements at test mass locations in the LISA PathFinder, overcoming limitations of traditional linear methods.
Contribution
It introduces an innovative neural network approach for magnetic field interpolation, improving accuracy despite limited sensor data and large measurement regions.
Findings
Neural networks reduced estimation errors below 10%.
Pre-launch ground data enhances learning efficiency.
Method addresses interpolation challenges in space magnetometry.
Abstract
The magnetic diagnostics subsystem of the LISA Technology Package (LTP) on board the LISA PathFinder (LPF) spacecraft includes a set of four tri-axial fluxgate magnetometers, intended to measure with high precision the magnetic field at their respective positions. However, their readouts do not provide a direct measurement of the magnetic field at the positions of the test masses, and hence an interpolation method must be designed and implemented to obtain the values of the magnetic field at these positions. However, such interpolation process faces serious difficulties. Indeed, the size of the interpolation region is excessive for a linear interpolation to be reliable while, on the other hand, the number of magnetometer channels does not provide sufficient data to go beyond the linear approximation. We describe an alternative method to address this issue, by means of neural network…
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