Empirical Mode Modeling: A data-driven approach to recover and forecast
nonlinear dynamics from noisy data
- URL: http://arxiv.org/abs/2103.07281v1
- Date: Wed, 10 Mar 2021 13:21:33 GMT
- Title: Empirical Mode Modeling: A data-driven approach to recover and forecast
nonlinear dynamics from noisy data
- Authors: Joseph Park, Gerald M Pao, Erik Stabenau, George Sugihara, Thomas
Lorimer
- Abstract summary: Methods that operate in the system state-space require either an explicit multidimensional state-space, or, one approximated from available observations.
Since observational data are frequently sampled with noise, it is possible that noise can corrupt the state-space representation degrading analytical performance.
Here, we evaluate the synthesis of empirical mode decomposition with empirical dynamic modeling, which we term empirical mode modeling, to increase the information content of state-space representations in the presence of noise.
- Score: 1.2599533416395765
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Data-driven, model-free analytics are natural choices for discovery and
forecasting of complex, nonlinear systems. Methods that operate in the system
state-space require either an explicit multidimensional state-space, or, one
approximated from available observations. Since observational data are
frequently sampled with noise, it is possible that noise can corrupt the
state-space representation degrading analytical performance. Here, we evaluate
the synthesis of empirical mode decomposition with empirical dynamic modeling,
which we term empirical mode modeling, to increase the information content of
state-space representations in the presence of noise. Evaluation of a
mathematical, and, an ecologically important geophysical application across
three different state-space representations suggests that empirical mode
modeling may be a useful technique for data-driven, model-free, state-space
analysis in the presence of noise.
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