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Model-free inference of unseen attractors: Reconstructing phase space
  features from a single noisy trajectory using reservoir computing

Model-free inference of unseen attractors: Reconstructing phase space features from a single noisy trajectory using reservoir computing

6 August 2021
André Röhm
D. Gauthier
Ingo Fischer
ArXivPDFHTML

Papers citing "Model-free inference of unseen attractors: Reconstructing phase space features from a single noisy trajectory using reservoir computing"

17 / 17 papers shown
Title
Denoising and Reconstruction of Nonlinear Dynamics using Truncated Reservoir Computing
Denoising and Reconstruction of Nonlinear Dynamics using Truncated Reservoir Computing
Omid Sedehi
Manish Yadav
M. Stender
S. Oberst
18
0
0
17 Apr 2025
How more data can hurt: Instability and regularization in next-generation reservoir computing
How more data can hurt: Instability and regularization in next-generation reservoir computing
Yuanzhao Zhang
Edmilson Roque dos Santos
Sean P. Cornelius
85
2
0
28 Jan 2025
Unsupervised Learning in Echo State Networks for Input Reconstruction
Unsupervised Learning in Echo State Networks for Input Reconstruction
Taiki Yamada
Yuichi Katori
Kantaro Fujiwara
31
0
0
20 Jan 2025
Thermodynamic limit in learning period three
Thermodynamic limit in learning period three
Yuichiro Terasaki
Kohei Nakajima
40
1
0
12 May 2024
Chaotic attractor reconstruction using small reservoirs -- the influence
  of topology
Chaotic attractor reconstruction using small reservoirs -- the influence of topology
Lina Jaurigue
AI4TS
18
9
0
23 Feb 2024
Attractor reconstruction with reservoir computers: The effect of the
  reservoir's conditional Lyapunov exponents on faithful attractor
  reconstruction
Attractor reconstruction with reservoir computers: The effect of the reservoir's conditional Lyapunov exponents on faithful attractor reconstruction
J. D. Hart
22
6
0
30 Dec 2023
Inferring Attracting Basins of Power System with Machine Learning
Inferring Attracting Basins of Power System with Machine Learning
Yao Du
Qing Li
Huawei Fan
Mengyuan Zhan
Jinghua Xiao
Xingang Wang
20
5
0
20 May 2023
Learning unidirectional coupling using echo-state network
Learning unidirectional coupling using echo-state network
S. Mandal
M. Shrimali
19
6
0
23 Mar 2023
Reservoir Computing with Noise
Reservoir Computing with Noise
Chad Nathe
C. Pappu
N. Mecholsky
Joseph D. Hart
Thomas L. Carroll
F. Sorrentino
36
14
0
28 Feb 2023
Effect of temporal resolution on the reproduction of chaotic dynamics
  via reservoir computing
Effect of temporal resolution on the reproduction of chaotic dynamics via reservoir computing
Kohei Tsuchiyama
André Röhm
Takatomo Mihana
R. Horisaki
Makoto Naruse
17
6
0
27 Jan 2023
Stabilizing Machine Learning Prediction of Dynamics: Noise and
  Noise-inspired Regularization
Stabilizing Machine Learning Prediction of Dynamics: Noise and Noise-inspired Regularization
Alexander Wikner
Joseph Harvey
M. Girvan
Brian R. Hunt
Andrew Pomerance
Thomas Antonsen
Edward Ott
21
6
0
09 Nov 2022
Catch-22s of reservoir computing
Catch-22s of reservoir computing
Yuanzhao Zhang
Sean P. Cornelius
21
10
0
18 Oct 2022
Learning unseen coexisting attractors
Learning unseen coexisting attractors
D. Gauthier
Ingo Fischer
André Röhm
21
22
0
28 Jul 2022
Continual Learning of Dynamical Systems with Competitive Federated
  Reservoir Computing
Continual Learning of Dynamical Systems with Competitive Federated Reservoir Computing
Leonard Bereska
E. Gavves
26
6
0
27 Jun 2022
Exploring the limits of multifunctionality across different reservoir
  computers
Exploring the limits of multifunctionality across different reservoir computers
Andrew Flynn
O. Heilmann
Daniel Köglmayr
V. Tsachouridis
Christoph Räth
Andreas Amann
30
4
0
23 May 2022
Learn one size to infer all: Exploiting translational symmetries in
  delay-dynamical and spatio-temporal systems using scalable neural networks
Learn one size to infer all: Exploiting translational symmetries in delay-dynamical and spatio-temporal systems using scalable neural networks
Mirko Goldmann
C. Mirasso
Ingo Fischer
Miguel C. Soriano
AI4CE
32
7
0
05 Nov 2021
Master memory function for delay-based reservoir computers with
  single-variable dynamics
Master memory function for delay-based reservoir computers with single-variable dynamics
F. Köster
S. Yanchuk
K. Lüdge
28
5
0
28 Aug 2021
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