This paper aims to improve the reliability of optimal control using models constructed by machine learning methods. Optimal control problems based on such models are generally non-convex and difficult to solve online. In this paper, we propose a model that combines the Hammerstein-Wiener model with input convex neural networks, which have recently been proposed in the field of machine learning. An important feature of the proposed model is that resulting optimal control problems are effectively solvable exploiting their convexity and partial linearity while retaining flexible modeling ability. The practical usefulness of the method is examined through its application to the modeling and control of an engine airpath system
There are very few controller design techniques that can be proven to stabilize processes in the pre...
In control design, the goal is to synthesize policies which map observations to controlactions. Two ...
Abstract—This paper describes two methodologies for implementation of Hammerstein model by using dif...
Solving complex optimal control problems have confronted computational challenges for a long time. R...
This book thoroughly discusses computationally efficient (suboptimal) Model Predictive Control (MPC)...
The high computational requirements of nonlinear model predictive control (NMPC) are a long-standing...
Abstract—The H ∞ control design problem is considered for nonlinear systems with unknown internal sy...
Model predictive control (MPC) provides a useful means for controlling systems with constraints, but...
Model predictive control or MPC can provide robust control for processes with variable gain and dyna...
The paper presents a systematic design procedure for approximate explicit model predictive control f...
© 2015 by World Scientific Publishing Co. Pte. Ltd. Model predictive control is an optimization-base...
Block-oriented models (BOMs) have shown to be appealing and efficient as nonlinear representations f...
The paper presents a systematic design procedure for approximate explicit model predictive control f...
Since last 40 years, the theory and technology of model predictive control (MPC) have been developed...
In this work a nonlinear model predictive control based on Wiener model has been developed and used...
There are very few controller design techniques that can be proven to stabilize processes in the pre...
In control design, the goal is to synthesize policies which map observations to controlactions. Two ...
Abstract—This paper describes two methodologies for implementation of Hammerstein model by using dif...
Solving complex optimal control problems have confronted computational challenges for a long time. R...
This book thoroughly discusses computationally efficient (suboptimal) Model Predictive Control (MPC)...
The high computational requirements of nonlinear model predictive control (NMPC) are a long-standing...
Abstract—The H ∞ control design problem is considered for nonlinear systems with unknown internal sy...
Model predictive control (MPC) provides a useful means for controlling systems with constraints, but...
Model predictive control or MPC can provide robust control for processes with variable gain and dyna...
The paper presents a systematic design procedure for approximate explicit model predictive control f...
© 2015 by World Scientific Publishing Co. Pte. Ltd. Model predictive control is an optimization-base...
Block-oriented models (BOMs) have shown to be appealing and efficient as nonlinear representations f...
The paper presents a systematic design procedure for approximate explicit model predictive control f...
Since last 40 years, the theory and technology of model predictive control (MPC) have been developed...
In this work a nonlinear model predictive control based on Wiener model has been developed and used...
There are very few controller design techniques that can be proven to stabilize processes in the pre...
In control design, the goal is to synthesize policies which map observations to controlactions. Two ...
Abstract—This paper describes two methodologies for implementation of Hammerstein model by using dif...