Recurrent neural networks (RNNs) have been widely used to model nonlinear dynamic systems using time-series data. While the training error of neural networks can be rendered sufficiently small in many cases, there is a lack of a general framework to guide construction and determine the generalization accuracy of RNN models to be used in model predictive control systems. In this work, we employ statistical machine learning theory to develop a methodological framework of generalization error bounds for RNNs. The RNN models are then utilized to predict state evolution in model predictive controllers (MPC), under which closed-loop stability is established in a probabilistic manner. A nonlinear chemical process example is used to investigate the...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) i...
The high computational requirements of nonlinear model predictive control (NMPC) are a long-standing...
The pharmaceutical industry has witnessed exponential growth in transforming operations towards cont...
Big data is a cornerstone component of the fourth industrial revolution, which calls onengineers and...
This work focuses on applying machine learning modeling on predictive control of nonlinear processes...
This paper aims to discuss and analyze the potentialities of Recurrent Neural Networks (RNN) in cont...
This work discusses three methods that incorporate a priori process knowledge into recurrent neural ...
Learning-based controllers, and especially learning-based model predictive controllers, have been us...
Autonomous operation of industrial plants requires a cheap and efficient way of creating dynamic pro...
This paper develops a model predictive controller (MPC) for constrained nonlinear MIMO systems subje...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) ...
This work focuses on the development of a Lyapunov-based economic model predictive control (LEMPC) s...
This paper presents stabilizing Model Predictive Controllers (MPC) in which prediction models are in...
This paper aims to discuss and analyze the potentialities of Recurrent Neural Networks (RNN) in cont...
[[abstract]]This paper presents a design methodology for generalized predictive control (GPC) using ...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) i...
The high computational requirements of nonlinear model predictive control (NMPC) are a long-standing...
The pharmaceutical industry has witnessed exponential growth in transforming operations towards cont...
Big data is a cornerstone component of the fourth industrial revolution, which calls onengineers and...
This work focuses on applying machine learning modeling on predictive control of nonlinear processes...
This paper aims to discuss and analyze the potentialities of Recurrent Neural Networks (RNN) in cont...
This work discusses three methods that incorporate a priori process knowledge into recurrent neural ...
Learning-based controllers, and especially learning-based model predictive controllers, have been us...
Autonomous operation of industrial plants requires a cheap and efficient way of creating dynamic pro...
This paper develops a model predictive controller (MPC) for constrained nonlinear MIMO systems subje...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) ...
This work focuses on the development of a Lyapunov-based economic model predictive control (LEMPC) s...
This paper presents stabilizing Model Predictive Controllers (MPC) in which prediction models are in...
This paper aims to discuss and analyze the potentialities of Recurrent Neural Networks (RNN) in cont...
[[abstract]]This paper presents a design methodology for generalized predictive control (GPC) using ...
In this paper an efficient algorithm to train general differential recurrent neural network (DRNN) i...
The high computational requirements of nonlinear model predictive control (NMPC) are a long-standing...
The pharmaceutical industry has witnessed exponential growth in transforming operations towards cont...