International audienceTrajectory optimization is an efficient approach for solving optimal control problems for complex robotic systems. It relies on two key components: first the transcription into a sparse nonlinear program, and second the corresponding solver to iteratively compute its solution. On one hand, differential dynamic programming (DDP) provides an efficient approach to transcribe the optimal control problem into a finite-dimensional problem while optimally exploiting the sparsity induced by time. On the other hand, augmented Lagrangian methods make it possible to formulate efficient algorithms with advanced constraint-satisfaction strategies. In this paper, we propose to combine these two approaches into an efficient optimal c...
Abstract. The global and local convergence properties of a class of augmented Lagrangian methods for...
International audienceWe present a primal–dual augmented Lagrangian method to solve an equality cons...
The method of programmed constraints has recently been proposed as an executable specification lang...
International audienceTrajectory optimization is an efficient approach for solving optimal control p...
International audienceOver the past decade, the Differential Dynamic Programming (DDP) method has ga...
Abstract — Trajectory optimizers are a powerful class of methods for generating goal-directed robot ...
In this thesis, the development of the differential dynamic programming (DDP) algorithm is extensive...
AbstractIn this paper, a discounted dynamic programming problem with convex constraints is investiga...
Differential dynamic programming (DDP) is a direct single shooting method for trajectory optimizatio...
This letter introduces a differential dynamic programming (DDP) based framework for polynomial traje...
Workshop paper at the 6th Legged Robots Workshop, at the IEEE International Conference on Robotics a...
Nonlinearly constrained optimization problems can be solved by minimizing a sequence of simpler unco...
Constrained Optimal Control Problems are notoriously difficult to solve accurately. Preliminary inve...
In this thesis we present practical tools and techniques to numerically solve optimal control proble...
Abstract. The global and local convergence properties of a class of augmented Lagrangian methods for...
International audienceWe present a primal–dual augmented Lagrangian method to solve an equality cons...
The method of programmed constraints has recently been proposed as an executable specification lang...
International audienceTrajectory optimization is an efficient approach for solving optimal control p...
International audienceOver the past decade, the Differential Dynamic Programming (DDP) method has ga...
Abstract — Trajectory optimizers are a powerful class of methods for generating goal-directed robot ...
In this thesis, the development of the differential dynamic programming (DDP) algorithm is extensive...
AbstractIn this paper, a discounted dynamic programming problem with convex constraints is investiga...
Differential dynamic programming (DDP) is a direct single shooting method for trajectory optimizatio...
This letter introduces a differential dynamic programming (DDP) based framework for polynomial traje...
Workshop paper at the 6th Legged Robots Workshop, at the IEEE International Conference on Robotics a...
Nonlinearly constrained optimization problems can be solved by minimizing a sequence of simpler unco...
Constrained Optimal Control Problems are notoriously difficult to solve accurately. Preliminary inve...
In this thesis we present practical tools and techniques to numerically solve optimal control proble...
Abstract. The global and local convergence properties of a class of augmented Lagrangian methods for...
International audienceWe present a primal–dual augmented Lagrangian method to solve an equality cons...
The method of programmed constraints has recently been proposed as an executable specification lang...