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Open Quantum Systems Decoherence
Quantum Simulation
Quantum Thermodynamics
Haldane-Inspired Generalized Statistics
arXiv
Authors: M. H. Naghizadeh Ardabili, Omid Yahyayi Monem, Morteza Nattagh Najafi, Hosein Mohammadzadeh
Year
2025
Paper ID
17657
Status
Preprint
Abstract Read
~2 min
Abstract Words
163
Citations
N/A
Abstract
We propose and study a generalized quantum statistical framework, referred to as alpha statistics, that continuously interpolates between Bose--Einstein and Fermi--Dirac statistics and naturally extends into the hyperbosonic regime for α< 0. Inspired by Haldane's exclusion statistics, this formulation introduces a modified occupation weight function that encodes effective statistical interactions via the parameter α. Using thermodynamic geometry, we analyze the sign and singular behavior of the thermodynamic curvature as a diagnostic of underlying interactions and phase structures. A crossover temperature T*, at which the curvature changes sign, marks the transition between effectively attractive (Bose-like) and repulsive (Fermi-like) statistical regimes. When expressed relative to the Bose--Einstein condensation temperature Tc, the ratio T*/Tc depends universally on α. For negative α, corresponding to hyperbosonic statistics, we find curvature singularities at specific fugacities, indicating modified condensation phenomena distinct from conventional Bose condensation. These results highlight the geometric and thermodynamic consequences of alpha statistics and establish a link between fractional exclusion principles and curvature-induced interaction signatures in statistical thermodynamics.
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- We propose and study a generalized quantum statistical framework, referred to as alpha statistics, that continuously interpolates between Bose--Einstein and Fermi--Dirac...
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