2022
DOI: 10.1007/s00209-022-03135-z
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Degeneration of natural Lagrangians and Prymian integrable systems

Abstract: Starting from an anti-symplectic involution on a K3 surface, one can consider a natural Lagrangian subvariety inside the moduli space of sheaves over the K3. One can also construct a Prymian integrable system following a construction of Markushevich–Tikhomirov, extended by Arbarello–Saccà–Ferretti, Matteini and Sawon–Shen. In this article we address a question of Sawon, showing that these integrable systems and their associated natural Lagrangians degenerate, respectively, into fix loci of involutions consider… Show more

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Cited by 2 publications
(1 citation statement)
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“…Noise generators [11], [12] using FPGA technology [13] are designed based on applied mathematics in probability and statistics, mainly focused on random number generation [14], [15]. This article presents an appropriate method for designing noise generators on an FPGA, utilizing the generation of pseudo-random numbers using linear feedback shift registers (LFSR) [16], [17], and applying the Central Limit Theorem [18] for obtaining random signals with a normal or Gaussian distribution.…”
Section: Developmentmentioning
confidence: 99%
“…Noise generators [11], [12] using FPGA technology [13] are designed based on applied mathematics in probability and statistics, mainly focused on random number generation [14], [15]. This article presents an appropriate method for designing noise generators on an FPGA, utilizing the generation of pseudo-random numbers using linear feedback shift registers (LFSR) [16], [17], and applying the Central Limit Theorem [18] for obtaining random signals with a normal or Gaussian distribution.…”
Section: Developmentmentioning
confidence: 99%