The classical XY model has been consistently studied since it was introduced more than six decades ago. Of particular interest has been the two-dimensional spin model's exhibition of the Berezinskii-Kosterlitz-Thouless (BKT) transition. This topological phenomenon describes the transition from bound vortex-antivortex pairs at low temperatures to unpaired or isolated vortices and antivortices above some critical temperature. In this work we propose a machine learning based method to determine the emergence of this phase transition. Generating unique states can be difficult due to the U(1) symmetry present. We introduce an auxiliary field (analogous to a vortex density field) corresponding to a given state in order to eliminate the unwanted symmetry. An autoencoder was used to map these auxiliary fields into a lower-dimensional latent space. Samples were taken from this latent space to determine the thermal average of the vortex density, which was then used to determine the critical temperature of the phase transition.
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http://dx.doi.org/10.1103/PhysRevE.111.015305 | DOI Listing |
Glob Health Action
December 2025
Department of Epidemiology and Global Health, Medical Faculty, Umeå University, Umeå, Sweden.
The balls are rolling for climate change, with increasing vulnerability to women and children related to climate extreme events. Recent evidence has shown that acute exposure to heat wave during pregnancy can be associated with adverse health outcomes in childhood, with the risk being significantly higher among socially disadvantaged population, despite their lack of contribution to global carbon dioxide emissions and the rising global ambient temperature. This unequal impact requires utmost attention to develop tools, establish interdisciplinary teams, and to implement evidence-based interventions for the betterment of women and children in climate-vulnerable populations.
View Article and Find Full Text PDFAnesth Pain Med
December 2024
Anesthesiology, Critical Care and Pain Management Research Center, Hormozgan University of Medical Sciences, Bandar Abbas, Iran.
Objectives: The primary objective was to test the hypothesis that the preemptive/preventive effect of Dexmedetomidine would attenuate the post-operative pain more effectively compared to ketorolac and control groups.
Methods: This study was conducted in Shahid Mohamadi Hospital. Sixty patients undergoing appendectomy operations were randomized in 3 groups.
ACS Appl Nano Mater
March 2025
Department of Chemistry, University of Massachusetts Lowell, Lowell, Massachusetts 01854, United States.
We report a fast and straightforward preparation of centimeter-sized Cu(111) from polycrystalline Cu foil by the strain-free abnormal grain growth method and the subsequent growth of monolayer graphene by chemical vapor deposition (CVD). The fabrication of Cu(111) and graphene was streamlined into a straightforward process using a CVD system consisting of a tube furnace and a quartz boat. It was found that the annealing temperature and time are critical in the growth of Cu(111).
View Article and Find Full Text PDFEnviron Microbiol Rep
April 2025
Department of Biology, Arctic Research Center, Aarhus University, Aarhus, Denmark.
The Arctic is warming faster than the global average, making it critical to understand how this affects ecological structure and function in streams, which are key Arctic ecosystems. Microbial biofilms are crucial for primary production and decomposition in Arctic streams and support higher trophic levels. However, comprehensive studies across Arctic regions, and in particular within Greenland, are scarce.
View Article and Find Full Text PDFChem Asian J
March 2025
Thammasat University Sirindhorn International Institute of Technology, Bio-Chemical Engineering and Technology, Phahonyothin Rd., 12120, Khlong Nueng, THAILAND.
Graphene has emerged as a promising support material for Cu-Zn catalysts in CO2 hydrogenation to methanol due to its high surface area and potential for functionalization with heteroatoms like nitrogen and oxygen, with nitrogen believed to contribute to the reaction. In this study, we combined machine learning and data analysis with experimental work to investigate this effect. Machine learning (using a decision tree model) identified copper particle size, average pore diameter, reduction time, surface area, and metal loading content as the most impactful features for catalyst design, while nitrogen doping showed negligible influence on methanol space-time yield.
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