This overview paper reviews numerical methods for solution of optimal control problems in real-time, as they arise in nonlinear model pre-dictive control (NMPC) as well as in moving horizon estimation (MHE). In the first part, we review numerical optimal control solution methods, focussing exclusively on a discrete time setting. We discuss several algorith-mic ”building blocks” that can be combined to a multitude of algorithms. We start by discussing the sequential and simultaneous approaches, the first leading to smaller, the second to more structured optimization problems. The two big families of Newton type optimization methods, Sequential Quadratic Programming (SQP) and Interior Point (IP) methods, are presented, and we discuss how to e...
Abstract. Sensitivity-based strategies for on-line moving horizon estimation (MHE) and nonlinear mod...
This paper provides a review of computationally efficient approaches to nonlinear model predictive c...
Nonlinear model predictive control (NMPC) and real-time dynamic optimization (RTDO) both based on a ...
In this paper we present a moving horizon estimation (MHE) formulation suitable to easily describe t...
Abstract: This paper investigates application of SQP optimization algorithms to nonlinear model pred...
This paper investigates application of SQP optimization algorithms to nonlinear model pre-dictive co...
This paper investigates application of SQP optimization algorithm to nonlinear model predictive cont...
This thesis develops efficient optimization methods for Model Predictive Control (MPC) to enable its...
© 2017 IEEE. We present PANOC, a new algorithm for solving optimal control problems arising in nonli...
This thesis deals with the development and analysis of novel time-optimal model predictive control c...
The concepts of Model Predictive Control (MPC)¨ and Moving Horizon Estimation (MHE) received wides p...
MHE problems are typically solved by general purpose (sparse) optimization algorithms. Thereby, the ...
This paper presents a Model Predictive Control (MPC) algorithm for Nonlinear systems represented thr...
In Moving Horizon Estimation (MHE) the computed estimate is found by solving a constrained finite-ti...
We present a structured interior-point method for the efficient solution of the optimal control prob...
Abstract. Sensitivity-based strategies for on-line moving horizon estimation (MHE) and nonlinear mod...
This paper provides a review of computationally efficient approaches to nonlinear model predictive c...
Nonlinear model predictive control (NMPC) and real-time dynamic optimization (RTDO) both based on a ...
In this paper we present a moving horizon estimation (MHE) formulation suitable to easily describe t...
Abstract: This paper investigates application of SQP optimization algorithms to nonlinear model pred...
This paper investigates application of SQP optimization algorithms to nonlinear model pre-dictive co...
This paper investigates application of SQP optimization algorithm to nonlinear model predictive cont...
This thesis develops efficient optimization methods for Model Predictive Control (MPC) to enable its...
© 2017 IEEE. We present PANOC, a new algorithm for solving optimal control problems arising in nonli...
This thesis deals with the development and analysis of novel time-optimal model predictive control c...
The concepts of Model Predictive Control (MPC)¨ and Moving Horizon Estimation (MHE) received wides p...
MHE problems are typically solved by general purpose (sparse) optimization algorithms. Thereby, the ...
This paper presents a Model Predictive Control (MPC) algorithm for Nonlinear systems represented thr...
In Moving Horizon Estimation (MHE) the computed estimate is found by solving a constrained finite-ti...
We present a structured interior-point method for the efficient solution of the optimal control prob...
Abstract. Sensitivity-based strategies for on-line moving horizon estimation (MHE) and nonlinear mod...
This paper provides a review of computationally efficient approaches to nonlinear model predictive c...
Nonlinear model predictive control (NMPC) and real-time dynamic optimization (RTDO) both based on a ...