Reviews existing particle-based modeling methods for anisotropic magnetic colloids, emphasizing how dipole-particle misalignment controls interaction landscapes and self-assembly.
From Knots to Crystals: Machine-Learned Potentials for Self-Assembling Topological Solitons in Liquid Crystals
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abstract
Knotted fields in classical and quantum systems have long been recognized for their non-trivial topologies and particle-like behavior, but practical applications have been limited by the difficulty of stabilizing them. Recently, stable knotted solitonic textures--heliknotons--were discovered in chiral liquid crystals, forming adaptive crystal assemblies via elastic distortion-mediated interactions. We use machine learning to develop single-site coarse-grained potentials that accurately capture these chiral anisotropic effective interactions. The resulting potentials accurately reproduce experimentally observed heliknoton assemblies and enable simulations at length and time scales far beyond the range of fine-grained continuum models. This general framework is readily transferable to other topological solitons, providing a powerful route to understand, predict, and ultimately control their collective behavior and dynamics.
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cond-mat.soft 1years
2026 1verdicts
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Advanced Modelling Methodologies for Anisotropic Magnetic Colloids
Reviews existing particle-based modeling methods for anisotropic magnetic colloids, emphasizing how dipole-particle misalignment controls interaction landscapes and self-assembly.