Topological information in artificial spin ice with random vacancies
Abstract
In this work, we perform a numerical study on artificial spin ice systems formed by square arrays of ferromagnetic nano-islands. Inspired by topological studies, we consider absent nano-islands at random positions throughout the array. The system is described by a Hamiltonian that includes anisotropy energy as well as dipolar interaction among the islands in the Heisenberg spin model approach. The simulations were done in the framework of the Monte-Carlo method with the Metropolis algorithm. We focus on the effect of the vacancies on the magnetic vertices configurations. In particular, we calculate the distribution of all possible magnetic configurations of the vertices as a function of the percentage of vacancies. The absent nano-islands generate a loss of geometric frustration, and the system evolves faster than the system without vacancies to a lower energy state. However, the system shows the difficulty of reaching the ground state because the vacancies generate different sub-regions that evolve towards one of the two possible orientations of the magnetic moments with the minimum energy state. Furthermore, we show this system to be stable up to room temeperature when a state with local minimal energy is initially considered. Consequently, the system retains its information in a wide range of temperatures. The introduction of vacancies breaks with any translational symmetry and allows diversifications of the number of magnetic configurations with minimum energy. Therefore, this kind of systems can be used to store information.
Más información
Título según WOS: | Topological information in artificial spin ice with random vacancies |
Título de la Revista: | CHINESE JOURNAL OF PHYSICS |
Volumen: | 70 |
Editorial: | Elsevier |
Fecha de publicación: | 2021 |
Página de inicio: | 343 |
Página final: | 354 |
DOI: |
10.1016/j.cjph.2021.01.005 |
Notas: | ISI |