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Sean P. Cornelius
Person
1
#679877
Assistant Professor in the Department of Physics at Toronto Metropolitan University.
Research Interests
Complex Networks
Nonlinear Dynamics
Cascading Failures
Computational Ecology
Smart Infrastructure
Nonlinear Control
Tag: Sean Cornelius, Sean Paul Cornelius, Ryerson University
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EIDM ☜The Emerging Infectious Diseases Modelling Initiative (EIDM) – by the Public Health Agency of Canada and NSERC – aims to establish multi-disciplinary network(s) of specialists across the country in modelling infectious diseases to be applied to public needs associated with emerging infectious diseases and pandemics such as COVID-19. [1]☜F1CEB7
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People☜Learn more about the participants in the EIDM network.☜D3ABAB
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Sean P. Cornelius
Sean P. Cornelius☜Assistant Professor in the Department of Physics at Toronto Metropolitan University.☜D3ABAB
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CANMOD – People☜CANMOD is a national network, with members located across the country and associated with a broader Emerging Infectious Disease Modelling (EIDM) initiative. We are a community of modellers, statisticians, epidemiologists, public health decision-makers, and those implementing and delivering interventions.☜FFFACD
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Toronto Metropolitan University »
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+Citations (
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[1]
Sean P. Cornelius - Home Page
Cited by:
David Price
3:38 PM 10 October 2022 GMT
URL:
https://www.torontomu.ca/physics/our-people/sean-cornelius/
Link
[2]
Catch-22s of reservoir computing
Author:
Yuanzhao Zhang, Sean P. Cornelius
Publication date:
25 September 2023
Publication info:
Physical Review Research 5, 033213, 25 September 2023
Cited by:
David Price
3:52 PM 11 December 2023 GMT
Citerank:
(1)
701020
CANMOD – Publications
Publications by CANMOD Members
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URL:
https://debategraph.org/handler.ashx?path=ROOT%2fu2928%2fPhysRevResearch.5.033213.pdf&att=1
DOI:
https://doi.org/10.1103/PhysRevResearch.5.033213
Excerpt / Summary
[Physical Review Research, 25 September 2023]
Reservoir computing (RC) is a simple and efficient model-free framework for forecasting the behavior of nonlinear dynamical systems from data. Here, we show that there exist commonly-studied systems for which leading RC frameworks struggle to learn the dynamics unless key information about the underlying system is already known. We focus on the important problem of basin prediction—determining which attractor a system will converge to from its initial conditions. First, we show that the predictions of standard RC models (echo state networks) depend critically on warm-up time, requiring a warm-up trajectory containing almost the entire transient in order to identify the correct attractor. Accordingly, we turn to next-generation reservoir computing (NGRC), an attractive variant of RC that requires negligible warm-up time. By incorporating the exact nonlinearities in the original equations, we show that NGRC can accurately reconstruct intricate and high-dimensional basins of attraction, even with sparse training data (e.g., a single transient trajectory). Yet, a tiny uncertainty in the exact nonlinearity can render prediction accuracy no better than chance. Our results highlight the challenges faced by data-driven methods in learning the dynamics of multistable systems and suggest potential avenues to make these approaches more robust.
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David Price
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Entry date (GMT):
6/4/2021 6:50:00 PM
Last edit date (GMT):
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