Long-time prediction of future states has been challenging in data-driven modeling of nonlinear dynamical systems as the prediction error accumulates over the prediction horizon. One of the potential reasons is the lack of robustness for the data-driven model. In this study we present a recurrent neural network (RNN) framework with an adaptive training strategy to model nonlinear dynamical systems from data for long-time prediction of future states. Specifically, we exploit the recurrence of network to improve the model robustness by explicitly incorporating the multi-step prediction with error accumulation into model training. Furthermore, we introduce an adaptive training strategy, where the prediction horizon gradually increases from a s...
The reliable prediction of the temporal behavior of complex systems is required in numerous scientif...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
Training recurrent neural networks (RNNs) is a long-standing open problem both in theoretical neuros...
Long-time prediction of future states has been challenging in data-driven modeling of nonlinear dyna...
We study the use of feedforward neural networks (FNN) to develop models of nonlinear dynamical syste...
We investigate the predictive power of recurrent neural networks for oscillatory systems not only on...
International audienceThis paper discusses the use of a recent boosting algorithm for recurrent neur...
New technologies in engineering, physics and biomedicine are demanding increasingly complex methods ...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
Current recurrent learning algorithms use a "trick" -- teacher forcing -- that is not theo...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
Recurrent neurons (and in particular LSTM cells) demonstrated to be efficient when used as basic blo...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
We examine the efficiency of Recurrent Neural Networks in forecasting the spatiotemporal dynamics of...
The reliable prediction of the temporal behavior of complex systems is required in numerous scientif...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
Training recurrent neural networks (RNNs) is a long-standing open problem both in theoretical neuros...
Long-time prediction of future states has been challenging in data-driven modeling of nonlinear dyna...
We study the use of feedforward neural networks (FNN) to develop models of nonlinear dynamical syste...
We investigate the predictive power of recurrent neural networks for oscillatory systems not only on...
International audienceThis paper discusses the use of a recent boosting algorithm for recurrent neur...
New technologies in engineering, physics and biomedicine are demanding increasingly complex methods ...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
Current recurrent learning algorithms use a "trick" -- teacher forcing -- that is not theo...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
Recurrent neurons (and in particular LSTM cells) demonstrated to be efficient when used as basic blo...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
We examine the efficiency of Recurrent Neural Networks in forecasting the spatiotemporal dynamics of...
The reliable prediction of the temporal behavior of complex systems is required in numerous scientif...
Abstract — In this paper we present a new continuous-time recurrent neurofuzzy network structure for...
Training recurrent neural networks (RNNs) is a long-standing open problem both in theoretical neuros...