Correlation of Magnetic State Configurations in Nanotubes with FMR spectrum
Abhishek Kumar, Chirag Kalouni, Raghvendra Posti, Vivek K Malik,, Dhananjay Tiwari, and Debangsu Roy

TL;DR
This paper uses RFMR spectroscopy and micromagnetic simulations to characterize magnetic configurations in nanotubes, revealing distinct spin states and their evolution under different magnetic field orientations.
Contribution
It introduces a combined experimental and simulation approach to identify and analyze various magnetic states in nanotubes using RFMR and FMR spectra.
Findings
Distinct spin configurations identified, including vortex, onion, and curling states.
RFMR spectra correspond to specific magnetic configurations and their evolution.
Magnetic states depend on field orientation and bias, with corroboration from FORC measurements.
Abstract
Magnetic nanotubes have garnered immense attention for their potential in high-density magnetic memory, owing to their stable flux closure configuration and fast, reproducible reversal processes. However, characterizing their magnetic configuration through straightforward methodologies remains a challenge in both scope and detail. Here, we elucidate the magnetic state details using Remanence Field Ferromagnetic Resonance Spectroscopy (RFMR) for arrays of electrodeposited nanotubes. Micromagnetic simulations revealed distinct spin configurations while coming from saturation, including the edge vortex, onion, uniform and curling states, with chirality variations depending on the preparation field direction. Dynamic measurements, coupled with RFMR spectra analysis, unveiled multiple FMR modes corresponding to these spin configurations. The evolution of spin configurations under bias fields…
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Taxonomy
TopicsMachine Learning in Materials Science
