Denoising and reconstruction of nonlinear dynamics using truncated reservoir computing.

IF 3.2 2区 数学 Q1 MATHEMATICS, APPLIED
Chaos Pub Date : 2025-09-01 DOI:10.1063/5.0273505
Omid Sedehi, Manish Yadav, Merten Stender, Sebastian Oberst
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引用次数: 0

Abstract

Measurements acquired from distributed physical systems are often sparse and noisy. Therefore, signal processing and system identification tools are required to mitigate noise effects and reconstruct unobserved dynamics from limited sensor data. However, this process is particularly challenging because the fundamental equations governing the dynamics are largely unavailable in practice. Reservoir Computing (RC) techniques have shown promise in efficiently simulating dynamical systems through an unstructured and efficient computation graph comprising a set of neurons with random connectivity. However, the potential of RC to operate in noisy regimes and distinguish noise from the primary smooth or non-smooth deterministic dynamics of the system has not been fully explored. This paper presents a novel RC method for noise filtering and reconstructing unobserved nonlinear dynamics, offering a novel learning protocol associated with hyperparameter optimization. The performance of the RC in terms of noise intensity, noise frequency content, and drastic shifts in dynamical parameters is studied in two illustrative examples involving the nonlinear dynamics of the Lorenz attractor and the adaptive exponential integrate-and-fire system. It is demonstrated that denoising performance improves by truncating redundant nodes and edges of the reservoir, as well as by properly optimizing hyperparameters, such as the leakage rate, spectral radius, input connectivity, and ridge regression parameter. Furthermore, the presented framework shows good generalization behavior when tested for reconstructing unseen and qualitatively different attractors. Compared to the extended Kalman filter, the presented RC framework yields competitive accuracy at low signal-to-noise ratios and high-frequency ranges.

截断油藏计算非线性动力学去噪与重建。
从分布式物理系统中获得的测量结果通常是稀疏的和有噪声的。因此,需要信号处理和系统识别工具来减轻噪声影响,并从有限的传感器数据中重建未观察到的动态。然而,这个过程特别具有挑战性,因为控制动力学的基本方程在实践中大部分是不可用的。储层计算(RC)技术通过由一组随机连接的神经元组成的非结构化和高效的计算图,在有效地模拟动力系统方面显示出了前景。然而,RC在噪声环境下工作的潜力,以及从系统的主要平滑或非光滑确定性动力学中区分噪声的潜力尚未得到充分探索。本文提出了一种新的RC方法用于噪声滤波和非观测非线性动力学重构,提供了一种新的与超参数优化相关的学习协议。本文以Lorenz吸引子和自适应指数积分-火系统的非线性动力学为例,研究了RC在噪声强度、噪声频率含量和动态参数剧烈变化方面的性能。结果表明,截断油藏冗余节点和边缘,以及适当优化泄漏率、谱半径、输入连通性和脊回归参数等超参数,可以提高去噪性能。此外,该框架在重建未见和定性不同的吸引子时表现出良好的泛化行为。与扩展卡尔曼滤波器相比,所提出的RC框架在低信噪比和高频范围内具有竞争力的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chaos
Chaos 物理-物理:数学物理
CiteScore
5.20
自引率
13.80%
发文量
448
审稿时长
2.3 months
期刊介绍: Chaos: An Interdisciplinary Journal of Nonlinear Science is a peer-reviewed journal devoted to increasing the understanding of nonlinear phenomena and describing the manifestations in a manner comprehensible to researchers from a broad spectrum of disciplines.
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