Parameter Estimation with Dense and Convolutional Neural Networks
Applied to the FitzHugh-Nagumo ODE
- URL: http://arxiv.org/abs/2012.06691v3
- Date: Tue, 4 May 2021 16:27:18 GMT
- Title: Parameter Estimation with Dense and Convolutional Neural Networks
Applied to the FitzHugh-Nagumo ODE
- Authors: Johann Rudi, Julie Bessac, Amanda Lenzi
- Abstract summary: We present deep neural networks using dense and convolutional layers to solve an inverse problem, where we seek to estimate parameters of a Fitz-Nagumo model.
We demonstrate that deep neural networks have the potential to estimate parameters in dynamical models and processes, and they are capable of predicting parameters accurately for the framework.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine learning algorithms have been successfully used to approximate
nonlinear maps under weak assumptions on the structure and properties of the
maps. We present deep neural networks using dense and convolutional layers to
solve an inverse problem, where we seek to estimate parameters of a
FitzHugh-Nagumo model, which consists of a nonlinear system of ordinary
differential equations (ODEs). We employ the neural networks to approximate
reconstruction maps for model parameter estimation from observational data,
where the data comes from the solution of the ODE and takes the form of a time
series representing dynamically spiking membrane potential of a biological
neuron. We target this dynamical model because of the computational challenges
it poses in an inference setting, namely, having a highly nonlinear and
nonconvex data misfit term and permitting only weakly informative priors on
parameters. These challenges cause traditional optimization to fail and
alternative algorithms to exhibit large computational costs. We quantify the
prediction errors of model parameters obtained from the neural networks and
investigate the effects of network architectures with and without the presence
of noise in observational data. We generalize our framework for neural
network-based reconstruction maps to simultaneously estimate ODE parameters and
parameters of autocorrelated observational noise. Our results demonstrate that
deep neural networks have the potential to estimate parameters in dynamical
models and stochastic processes, and they are capable of predicting parameters
accurately for the FitzHugh-Nagumo model.
Related papers
- SimPINNs: Simulation-Driven Physics-Informed Neural Networks for
Enhanced Performance in Nonlinear Inverse Problems [0.0]
This paper introduces a novel approach to solve inverse problems by leveraging deep learning techniques.
The objective is to infer unknown parameters that govern a physical system based on observed data.
arXiv Detail & Related papers (2023-09-27T06:34:55Z) - Quantifying uncertainty for deep learning based forecasting and
flow-reconstruction using neural architecture search ensembles [0.8258451067861933]
We present an automated approach to deep neural network (DNN) discovery and demonstrate how this may also be utilized for ensemble-based uncertainty quantification.
We highlight how the proposed method not only discovers high-performing neural network ensembles for our tasks, but also quantifies uncertainty seamlessly.
We demonstrate the feasibility of this framework for two tasks - forecasting from historical data and flow reconstruction from sparse sensors for the sea-surface temperature.
arXiv Detail & Related papers (2023-02-20T03:57:06Z) - A predictive physics-aware hybrid reduced order model for reacting flows [65.73506571113623]
A new hybrid predictive Reduced Order Model (ROM) is proposed to solve reacting flow problems.
The number of degrees of freedom is reduced from thousands of temporal points to a few POD modes with their corresponding temporal coefficients.
Two different deep learning architectures have been tested to predict the temporal coefficients.
arXiv Detail & Related papers (2023-01-24T08:39:20Z) - Learning to Learn with Generative Models of Neural Network Checkpoints [71.06722933442956]
We construct a dataset of neural network checkpoints and train a generative model on the parameters.
We find that our approach successfully generates parameters for a wide range of loss prompts.
We apply our method to different neural network architectures and tasks in supervised and reinforcement learning.
arXiv Detail & Related papers (2022-09-26T17:59:58Z) - An advanced spatio-temporal convolutional recurrent neural network for
storm surge predictions [73.4962254843935]
We study the capability of artificial neural network models to emulate storm surge based on the storm track/size/intensity history.
This study presents a neural network model that can predict storm surge, informed by a database of synthetic storm simulations.
arXiv Detail & Related papers (2022-04-18T23:42:18Z) - Mixed Effects Neural ODE: A Variational Approximation for Analyzing the
Dynamics of Panel Data [50.23363975709122]
We propose a probabilistic model called ME-NODE to incorporate (fixed + random) mixed effects for analyzing panel data.
We show that our model can be derived using smooth approximations of SDEs provided by the Wong-Zakai theorem.
We then derive Evidence Based Lower Bounds for ME-NODE, and develop (efficient) training algorithms.
arXiv Detail & Related papers (2022-02-18T22:41:51Z) - Combining data assimilation and machine learning to estimate parameters
of a convective-scale model [0.0]
Errors in the representation of clouds in convection-permitting numerical weather prediction models can be introduced by different sources.
In this work, we look at the problem of parameter estimation through an artificial intelligence lens by training two types of artificial neural networks.
arXiv Detail & Related papers (2021-09-07T09:17:29Z) - Physics-constrained deep neural network method for estimating parameters
in a redox flow battery [68.8204255655161]
We present a physics-constrained deep neural network (PCDNN) method for parameter estimation in the zero-dimensional (0D) model of the vanadium flow battery (VRFB)
We show that the PCDNN method can estimate model parameters for a range of operating conditions and improve the 0D model prediction of voltage.
We also demonstrate that the PCDNN approach has an improved generalization ability for estimating parameter values for operating conditions not used in the training.
arXiv Detail & Related papers (2021-06-21T23:42:58Z) - Stochastic analysis of heterogeneous porous material with modified
neural architecture search (NAS) based physics-informed neural networks using
transfer learning [0.0]
modified neural architecture search method (NAS) based physics-informed deep learning model is presented.
A three dimensional flow model is built to provide a benchmark to the simulation of groundwater flow in highly heterogeneous aquifers.
arXiv Detail & Related papers (2020-10-03T19:57:54Z) - Provably Efficient Neural Estimation of Structural Equation Model: An
Adversarial Approach [144.21892195917758]
We study estimation in a class of generalized Structural equation models (SEMs)
We formulate the linear operator equation as a min-max game, where both players are parameterized by neural networks (NNs), and learn the parameters of these neural networks using a gradient descent.
For the first time we provide a tractable estimation procedure for SEMs based on NNs with provable convergence and without the need for sample splitting.
arXiv Detail & Related papers (2020-07-02T17:55:47Z) - Probabilistic solution of chaotic dynamical system inverse problems
using Bayesian Artificial Neural Networks [0.0]
Inverse problems for chaotic systems are numerically challenging.
Small perturbations in model parameters can cause very large changes in estimated forward trajectories.
Bizarre Artificial Neural Networks can be used to simultaneously fit a model and estimate model parameter uncertainty.
arXiv Detail & Related papers (2020-05-26T20:35:02Z)
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.