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Autori principali: Qu, Xiang, Zhao, Hui, Cai, Wenjie, Wang, Gongyi, Huang, Zihan
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2403.04273
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author Qu, Xiang
Zhao, Hui
Cai, Wenjie
Wang, Gongyi
Huang, Zihan
author_facet Qu, Xiang
Zhao, Hui
Cai, Wenjie
Wang, Gongyi
Huang, Zihan
contents Mittag-Leffler correlated noise (M-L noise) plays a crucial role in the dynamics of complex systems, yet the scientific community has lacked tools for its direct generation. Addressing this gap, our work introduces GenML, a Python library specifically designed for generating M-L noise. We detail the architecture and functionalities of GenML and its underlying algorithmic approach, which enables the precise simulation of M-L noise. The effectiveness of GenML is validated through quantitative analyses of autocorrelation functions and diffusion behaviors, showcasing its capability to accurately replicate theoretical noise properties. Our contribution with GenML enables the effective application of M-L noise data in numerical simulation and data-driven methods for describing complex systems, moving beyond mere theoretical modeling.
format Preprint
id arxiv_https___arxiv_org_abs_2403_04273
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle GenML: A Python Library to Generate the Mittag-Leffler Correlated Noise
Qu, Xiang
Zhao, Hui
Cai, Wenjie
Wang, Gongyi
Huang, Zihan
Mathematical Software
Statistical Mechanics
Computational Physics
Mittag-Leffler correlated noise (M-L noise) plays a crucial role in the dynamics of complex systems, yet the scientific community has lacked tools for its direct generation. Addressing this gap, our work introduces GenML, a Python library specifically designed for generating M-L noise. We detail the architecture and functionalities of GenML and its underlying algorithmic approach, which enables the precise simulation of M-L noise. The effectiveness of GenML is validated through quantitative analyses of autocorrelation functions and diffusion behaviors, showcasing its capability to accurately replicate theoretical noise properties. Our contribution with GenML enables the effective application of M-L noise data in numerical simulation and data-driven methods for describing complex systems, moving beyond mere theoretical modeling.
title GenML: A Python Library to Generate the Mittag-Leffler Correlated Noise
topic Mathematical Software
Statistical Mechanics
Computational Physics
url https://arxiv.org/abs/2403.04273