Denoising and Reconstruction of Nonlinear Dynamics using Truncated Reservoir Computing
- URL: http://arxiv.org/abs/2504.13355v1
- Date: Thu, 17 Apr 2025 21:47:13 GMT
- Title: Denoising and Reconstruction of Nonlinear Dynamics using Truncated Reservoir Computing
- Authors: Omid Sedehi, Manish Yadav, Merten Stender, Sebastian Oberst,
- Abstract summary: This paper presents a novel Reservoir Computing (RC) method for noise filtering and reconstructing nonlinear dynamics.<n>The performance of the RC in terms of noise intensity, noise frequency content, and drastic shifts in dynamical parameters are studied.<n>It is shown that the denoising performance improves via truncating redundant nodes and edges of the computing reservoir.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 dynamics of the system has not been fully explored. This paper presents a novel RC method for noise filtering and reconstructing 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 are studied in two illustrative examples involving the nonlinear dynamics of the Lorenz attractor and adaptive exponential integrate-and-fire system (AdEx). It is shown that the denoising performance improves via truncating redundant nodes and edges of the computing reservoir, as well as properly optimizing the hyperparameters, e.g., the leakage rate, the spectral radius, the input connectivity, and the ridge regression parameter. Furthermore, the presented framework shows good generalization behavior when tested for reconstructing unseen attractors from the bifurcation diagram. Compared to the Extended Kalman Filter (EKF), the presented RC framework yields competitive accuracy at low signal-to-noise ratios (SNRs) and high-frequency ranges.
Related papers
- Generative System Dynamics in Recurrent Neural Networks [56.958984970518564]
We investigate the continuous time dynamics of Recurrent Neural Networks (RNNs)
We show that skew-symmetric weight matrices are fundamental to enable stable limit cycles in both linear and nonlinear configurations.
Numerical simulations showcase how nonlinear activation functions not only maintain limit cycles, but also enhance the numerical stability of the system integration process.
arXiv Detail & Related papers (2025-04-16T10:39:43Z) - Efficient Transformed Gaussian Process State-Space Models for Non-Stationary High-Dimensional Dynamical Systems [49.819436680336786]
We propose an efficient transformed Gaussian process state-space model (ETGPSSM) for scalable and flexible modeling of high-dimensional, non-stationary dynamical systems.<n>Specifically, our ETGPSSM integrates a single shared GP with input-dependent normalizing flows, yielding an expressive implicit process prior that captures complex, non-stationary transition dynamics.<n>Our ETGPSSM outperforms existing GPSSMs and neural network-based SSMs in terms of computational efficiency and accuracy.
arXiv Detail & Related papers (2025-03-24T03:19:45Z) - Efficient learning and optimizing non-Gaussian correlated noise in digitally controlled qubit systems [0.6138671548064356]
We show how to achieve higher-order spectral estimation for noise-optimized circuit design.<n>Remarkably, we find that the digitally driven qubit dynamics can be solely determined by the complexity of the applied control.
arXiv Detail & Related papers (2025-02-08T02:09:40Z) - Pressure Field Reconstruction with SIREN: A Mesh-Free Approach for Image Velocimetry in Complex Noisy Environments [44.99833362998488]
This work presents a novel approach for pressure field reconstruction from image velocimetry data using SIREN (Sinusoidal Representation Network)
It emphasizes its effectiveness as an implicit neural representation in noisy environments and its mesh-free nature.
arXiv Detail & Related papers (2025-01-29T20:49:59Z) - ADAM-SINDy: An Efficient Optimization Framework for Parameterized Nonlinear Dynamical System Identification [0.0]
This paper introduces a novel method within the SINDy framework, termed ADAM-SINDy.
ADAM-SINDy synthesizes the strengths of established approaches by employing the ADAM optimization algorithm.
Results demonstrate significant improvements in identifying parameterized dynamical systems.
arXiv Detail & Related papers (2024-10-21T21:36:17Z) - Physics-informed AI and ML-based sparse system identification algorithm for discovery of PDE's representing nonlinear dynamic systems [0.0]
The proposed method is demonstrated to discover various differential equations at various noise levels, including three-dimensional, fourth-order, and stiff equations.
The parameter estimation converges accurately to the true values with a small coefficient of variation, suggesting robustness to the noise.
arXiv Detail & Related papers (2024-10-13T21:48:51Z) - Realistic Noise Synthesis with Diffusion Models [44.404059914652194]
Deep denoising models require extensive real-world training data, which is challenging to acquire.<n>We propose a novel Realistic Noise Synthesis Diffusor (RNSD) method using diffusion models to address these challenges.
arXiv Detail & Related papers (2023-05-23T12:56:01Z) - Reduced order modeling of parametrized systems through autoencoders and
SINDy approach: continuation of periodic solutions [0.0]
This work presents a data-driven, non-intrusive framework which combines ROM construction with reduced dynamics identification.
The proposed approach leverages autoencoder neural networks with parametric sparse identification of nonlinear dynamics (SINDy) to construct a low-dimensional dynamical model.
These aim at tracking the evolution of periodic steady-state responses as functions of system parameters, avoiding the computation of the transient phase, and allowing to detect instabilities and bifurcations.
arXiv Detail & Related papers (2022-11-13T01:57:18Z) - A Priori Denoising Strategies for Sparse Identification of Nonlinear
Dynamical Systems: A Comparative Study [68.8204255655161]
We investigate and compare the performance of several local and global smoothing techniques to a priori denoise the state measurements.
We show that, in general, global methods, which use the entire measurement data set, outperform local methods, which employ a neighboring data subset around a local point.
arXiv Detail & Related papers (2022-01-29T23:31:25Z) - Asymmetric Heavy Tails and Implicit Bias in Gaussian Noise Injections [73.95786440318369]
We focus on the so-called implicit effect' of GNIs, which is the effect of the injected noise on the dynamics of gradient descent (SGD)
We show that this effect induces an asymmetric heavy-tailed noise on gradient updates.
We then formally prove that GNIs induce an implicit bias', which varies depending on the heaviness of the tails and the level of asymmetry.
arXiv Detail & Related papers (2021-02-13T21:28:09Z) - Multiplicative noise and heavy tails in stochastic optimization [62.993432503309485]
empirical optimization is central to modern machine learning, but its role in its success is still unclear.
We show that it commonly arises in parameters of discrete multiplicative noise due to variance.
A detailed analysis is conducted in which we describe on key factors, including recent step size, and data, all exhibit similar results on state-of-the-art neural network models.
arXiv Detail & Related papers (2020-06-11T09:58:01Z) - A Data-Driven Approach for Discovering Stochastic Dynamical Systems with
Non-Gaussian Levy Noise [5.17900889163564]
We develop a new data-driven approach to extract governing laws from noisy data sets.
First, we establish a feasible theoretical framework, by expressing the drift coefficient, diffusion coefficient and jump measure.
We then design a numerical algorithm to compute the drift, diffusion coefficient and jump measure, and thus extract a governing equation with Gaussian and non-Gaussian noise.
arXiv Detail & Related papers (2020-05-07T21:29:17Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.