Design of magnetic lattices with a quantum-inspired evolutionary optimization algorithm
Article 2026 en
Authors
ZE
Zekeriya Ender Eğer
WK
Waris Khan
PM
Priyabrata Maharana
Abstract
1 min read
This article investigates the identification of magnetic spin distributions in ferromagnetic materials by minimizing the system’s free energy. The magnetic lattices of varying sizes are constructed, and the free energy is computed using an Ising model that accounts for spin-to-spin neighbor interactions and the influence of an external magnetic field. The problem reduces to determining the state of each spin, either up or down, leading to an optimization problem with 2n×n design variables for a n × n lattice. To address the high-dimensional and computationally intractable nature of this problem, particularly for large domains, we employ a quantum-inspired evolutionary optimization (QIEO) algorithm, part of the BQPhy® QuantumNOW™ solver. QIEO results are first validated against solutions obtained using a genetic algorithm for smaller lattices. Finally, the approach is extended to large-scale systems, including 50 × 50 lattices, where conventional methods become impractical.
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