Literature DB >> 31906641

Hybrid forecasting of chaotic processes: Using machine learning in conjunction with a knowledge-based model.

Jaideep Pathak1, Alexander Wikner2, Rebeckah Fussell3, Sarthak Chandra1, Brian R Hunt1, Michelle Girvan1, Edward Ott1.   

Abstract

A model-based approach to forecasting chaotic dynamical systems utilizes knowledge of the mechanistic processes governing the dynamics to build an approximate mathematical model of the system. In contrast, machine learning techniques have demonstrated promising results for forecasting chaotic systems purely from past time series measurements of system state variables (training data), without prior knowledge of the system dynamics. The motivation for this paper is the potential of machine learning for filling in the gaps in our underlying mechanistic knowledge that cause widely-used knowledge-based models to be inaccurate. Thus, we here propose a general method that leverages the advantages of these two approaches by combining a knowledge-based model and a machine learning technique to build a hybrid forecasting scheme. Potential applications for such an approach are numerous (e.g., improving weather forecasting). We demonstrate and test the utility of this approach using a particular illustrative version of a machine learning known as reservoir computing, and we apply the resulting hybrid forecaster to a low-dimensional chaotic system, as well as to a high-dimensional spatiotemporal chaotic system. These tests yield extremely promising results in that our hybrid technique is able to accurately predict for a much longer period of time than either its machine-learning component or its model-based component alone.

Year:  2018        PMID: 31906641     DOI: 10.1063/1.5028373

Source DB:  PubMed          Journal:  Chaos        ISSN: 1054-1500            Impact factor:   3.642


  7 in total

1.  A machine-learning approach for long-term prediction of experimental cardiac action potential time series using an autoencoder and echo state networks.

Authors:  Shahrokh Shahi; Flavio H Fenton; Elizabeth M Cherry
Journal:  Chaos       Date:  2022-06       Impact factor: 3.741

2.  Hierarchical deep learning of multiscale differential equation time-steppers.

Authors:  Yuying Liu; J Nathan Kutz; Steven L Brunton
Journal:  Philos Trans A Math Phys Eng Sci       Date:  2022-06-20       Impact factor: 4.019

3.  Prediction of chaotic time series using recurrent neural networks and reservoir computing techniques: A comparative study.

Authors:  Shahrokh Shahi; Flavio H Fenton; Elizabeth M Cherry
Journal:  Mach Learn Appl       Date:  2022-04-09

4.  Model-size reduction for reservoir computing by concatenating internal states through time.

Authors:  Yusuke Sakemi; Kai Morino; Timothée Leleu; Kazuyuki Aihara
Journal:  Sci Rep       Date:  2020-12-11       Impact factor: 4.379

5.  Short- and long-term predictions of chaotic flows and extreme events: a physics-constrained reservoir computing approach.

Authors:  N A K Doan; W Polifke; L Magri
Journal:  Proc Math Phys Eng Sci       Date:  2021-09-01       Impact factor: 2.704

6.  Comparing and linking machine learning and semi-mechanistic models for the predictability of endemic measles dynamics.

Authors:  Max S Y Lau; Alex Becker; Wyatt Madden; Lance A Waller; C Jessica E Metcalf; Bryan T Grenfell
Journal:  PLoS Comput Biol       Date:  2022-09-08       Impact factor: 4.779

7.  Time series reconstructing using calibrated reservoir computing.

Authors:  Yeyuge Chen; Yu Qian; Xiaohua Cui
Journal:  Sci Rep       Date:  2022-09-29       Impact factor: 4.996

  7 in total

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