Deep learning algorithm for data-driven simulation of noisy dynamical system

02/22/2018
by   Kyongmin Yeo, et al.
0

We present a deep learning model, DE-LSTM, for the simulation of a stochastic process with underlying nonlinear dynamics. The deep learning model aims to approximate the probability density function of a stochastic process via numerical discretization and the underlying nonlinear dynamics is modeled by the Long Short-Term Memory (LSTM) network. After the numerical discretization by a softmax function, the function estimation problem is solved by a multi-label classification problem. A penalized maximum log likelihood method is proposed to impose smoothness in the predicted probability distribution. It is shown that LSTM is a state space model, where the internal dynamics consists of a system of relaxation processes. A sequential Monte Carlo method is outlined to compute the time evolution of the probability distribution. The behavior of DE-LSTM is investigated by using the Ornstein-Uhlenbeck process and noisy observations of Mackey-Glass equation and forced Van der Pol oscillators. While the probability distribution computed by the conventional maximum log likelihood method makes a good prediction of the first and second moments, the Kullback-Leibler divergence shows that the penalized maximum log likelihood method results in a probability distribution closer to the ground truth. It is shown that DE-LSTM makes a good prediction of the probability distribution without assuming any distributional properties of the noise. For a multiple-step forecast, it is found that the prediction uncertainty, denoted by the 95 system, Mackey-Glass time series, the 95 exhibits an oscillatory behavior, instead of growing indefinitely, while for the forced Van der Pol oscillator, the prediction uncertainty does not grow in time even for 3,000-step forecast.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/26/2020

A GRU-based Mixture Density Network for Data-Driven Dynamic Stochastic Programming

The conventional deep learning approaches for solving time-series proble...
research
11/04/2021

Generative Adversarial Network for Probabilistic Forecast of Random Dynamical System

We present a deep learning model for data-driven simulations of random d...
research
10/12/2022

Fitting State-space Model for Long-term Prediction of the Log-likelihood of Nonstationary Time Series Models

The goodness of the long-term prediction in the state-space model was ev...
research
07/15/2020

The Monte Carlo Transformer: a stochastic self-attention model for sequence prediction

This paper introduces the Sequential Monte Carlo Transformer, an origina...
research
12/15/2020

Maximum log_q Likelihood Estimation for Parameters of Weibull Distribution and Properties: Monte Carlo Simulation

The maximum log_q likelihood estimation method is a generalization of th...
research
01/23/2020

A Bayesian Long Short-Term Memory Model for Value at Risk and Expected Shortfall Joint Forecasting

Value-at-Risk (VaR) and Expected Shortfall (ES) are widely used in the f...
research
08/29/2022

PGNAA Spectral Classification of Metal with Density Estimations

For environmental, sustainable economic and political reasons, recycling...

Please sign up or login with your details

Forgot password? Click here to reset