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Main Authors: López, Cristian, Naranjo, Ángel, Salazar, Diego, Moore, Keegan J.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.17838
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author López, Cristian
Naranjo, Ángel
Salazar, Diego
Moore, Keegan J.
author_facet López, Cristian
Naranjo, Ángel
Salazar, Diego
Moore, Keegan J.
contents Identifying nonlinear dynamics and characterizing noise from data is critical across science and engineering for understanding and modeling the behavior of the systems accurately. The modified sparse identification of nonlinear dynamics (mSINDy) has emerged as an effective framework for identifying systems embedded in heavy noise; however, further improvements can expand its capabilities and robustness. By integrating the weak SINDy (WSINDy) into mSINDy, we introduce the weak mSINDy (WmSINDy) to improve the system identification and noise modeling by harnessing the strengths of both approaches. The proposed algorithm simultaneously identifies parsimonious nonlinear dynamics and extracts noise probability distributions using automatic differentiation. We evaluate WmSINDy using several nonlinear systems and it demonstrates improved accuracy and noise characterization over baselines for systems embedded in relatively strong noise.
format Preprint
id arxiv_https___arxiv_org_abs_2410_17838
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Weak-form modified sparse identification of nonlinear dynamics
López, Cristian
Naranjo, Ángel
Salazar, Diego
Moore, Keegan J.
Dynamical Systems
Identifying nonlinear dynamics and characterizing noise from data is critical across science and engineering for understanding and modeling the behavior of the systems accurately. The modified sparse identification of nonlinear dynamics (mSINDy) has emerged as an effective framework for identifying systems embedded in heavy noise; however, further improvements can expand its capabilities and robustness. By integrating the weak SINDy (WSINDy) into mSINDy, we introduce the weak mSINDy (WmSINDy) to improve the system identification and noise modeling by harnessing the strengths of both approaches. The proposed algorithm simultaneously identifies parsimonious nonlinear dynamics and extracts noise probability distributions using automatic differentiation. We evaluate WmSINDy using several nonlinear systems and it demonstrates improved accuracy and noise characterization over baselines for systems embedded in relatively strong noise.
title Weak-form modified sparse identification of nonlinear dynamics
topic Dynamical Systems
url https://arxiv.org/abs/2410.17838