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Dive into the research topics where Daniel Ankelhed is active.

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Featured researches published by Daniel Ankelhed.


conference on decision and control | 2013

Low-rank modifications of Riccati factorizations with applications to Model Predictive Control

Isak Nielsen; Daniel Ankelhed; Daniel Axehill

In optimization algorithms used for on-line Model Predictive Control (MPC), the main computational effort is spent while solving linear systems of equations to obtain search directions. Hence, it is of greatest interest to solve them efficiently, which commonly is performed using Riccati recursions or generic sparsity exploiting algorithms. The focus in this work is efficient search direction computation for active-set methods. In these methods, the system of equations to be solved in each iteration is only changed by a low-rank modification of the previous one. This highly structured change of the system of equations from one iteration to the next one is an important ingredient in the performance of active-set solvers. It seems very appealing to try to make a structured update of the Riccati factorization, which has not been presented in the literature so far. The main objective of this paper is to present such an algorithm for how to update the Riccati factorization in a structured way in an active-set solver. The result of the work is that the computational complexity of the step direction computation can be significantly reduced for problems with bound constraints on the control signal. This in turn has important implications for the computational performance of active-set solvers used for linear, nonlinear as well as hybrid MPC.


IEEE Transactions on Automatic Control | 2011

A Quasi-Newton Interior Point Method for Low Order H-Infinity Controller Synthesis

Daniel Ankelhed; Anders Helmersson; Anders Hansson

This technical note proposes a method for low order H-infinity synthesis where the constraint on the order of the controller is formulated as a rational equation. The resulting nonconvex optimization problem is then solved by applying a quasi-Newton primal-dual interior point method. The proposed method is evaluated together with a well-known method from the literature. The results indicate that the proposed method has comparable performance and speed.


IEEE Transactions on Automatic Control | 2012

A Partially Augmented Lagrangian Method for Low Order

Daniel Ankelhed; Anders Helmersson; Anders Hansson

This technical note proposes a method for low order H-infinity synthesis where the constraint on the order of the controller is formulated as a rational equation. The resulting nonconvex optimization problem is then solved by applying a partially augmented Lagrangian method. The proposed method is evaluated together with two well-known methods from the literature. The results indicate that the proposed method has comparable performance and speed.


conference on decision and control | 2011

{\rm H}

Daniel Ankelhed; Anders Helmersson; Anders Hansson

When designing robust controllers, H-infinity synthesis is a common tool to use. The controllers that result from these algorithms are typically of very high order, which complicates implementation. However, if a constraint on the maximum order of the controller is set, that is lower than the order of the (augmented) system, the problem becomes nonconvex and it is relatively hard to solve. These problems become very complex, even when the order of the system is low.


conference on decision and control | 2010

-Infinity Controller Synthesis Using Rational Constraints

Daniel Ankelhed; Anders Helmersson; Anders Hansson

When designing robust controllers, H∞ synthesis is a common tool to use. The controllers that result from these algorithms are typically of very high order, which complicates implementation. However, if a constraint on the maximum order of the controller is set, that is lower than the order of the (augmented) system, the problem becomes nonconvex and it is relatively hard to solve. These problems become very complex, even when the order of the system is low.


conference on decision and control | 2009

A partially augmented Lagrangian method for low order H-infinity controller synthesis using rational constraints

Daniel Ankelhed; Anders Helmersson; Anders Hansson

When designing robust controllers, H∞ synthesis is a common tool to use. The controllers that result from these algorithms are typically of very high order, which complicates implementation. However, if a constraint on the maximum order of the controller is set, that is lower than the order of the (augmented) system, the problem becomes nonconvex and it is relatively hard to solve. These problems become very complex, even when the order of the system is low.


Archive | 2009

A Primal-Dual Method for Low Order H-Infinity Controller Synthesis

Daniel Ankelhed


Archive | 2011

A Primal-Dual method for low order H ∞ controller synthesis

Daniel Ankelhed


Archive | 2006

On low order controller synthesis using rational constraints

Daniel Ankelhed; Anders Helmersson; Anders Hansson


Archive | 2010

On design of low order H-infinity controllers

Daniel Ankelhed; Anders Helmersson; Anders Hansson

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