Parallel-in-time methods are developed to accelerate the direct-adjoint looping procedure. Particularly, we utilize the Paraexp algorithm, previously developed to integrate equations forward in time, to accelerate the direct-adjoint looping that arises from gradient-based optimization. We consider both linear and non-linear governing equations and exploit the linear, time-varying nature of the adjoint equations. Gains in efficiency are seen across all cases, showing that a Paraexp based parallel-in-time approach is feasible for the acceleration of direct-adjoint studies. This signifies a possible approach to further increase the run-time performance for optimization studies that either cannot be parallelized in space or are at their limit o...
International audienceThe time parallel solution of optimality systems arising in PDE constrained op...
The leapfrog scheme is a commonly used second-order dierence scheme for solving dierential equations...
Forecasts made by 4-D Var involves forward integration of model before proceeding for the minimisati...
AbstractThis paper presents a new ‘Parareal-algorithm’ to solve time-dependent ODEs parallel in time...
This thesis proposes and analyzes a new parallel-in-time gradient-type method for time-dependent opt...
Simulations aid in many scientific and industrial applications. A general ambition for these simulat...
International audienceA computational fluid dynamics code is differentiated using algorithmic differ...
To solve optimization problems with parabolic PDE constraints, often methods working on the reduced ...
PhDSimulations are used in science and industry to predict the performance of technical systems. Ad...
The parareal algorithm seeks to extract parallelism in the time-integration direction of time-depend...
International audienceA computational fluid dynamics code relying on a high-order spatial discretiza...
4th International Conference on Computational Engineering (ICCE 2017), 28-29 September 2017, Darmsta...
In this paper we present an adjoint solver for the multigrid in time software library XBraid. XBraid...
We propose a modified parallel-in-time - Parareal - multi-level time integration method which, in co...
This review article serves to summarize the many advances in time-parallel computations since the ex...
International audienceThe time parallel solution of optimality systems arising in PDE constrained op...
The leapfrog scheme is a commonly used second-order dierence scheme for solving dierential equations...
Forecasts made by 4-D Var involves forward integration of model before proceeding for the minimisati...
AbstractThis paper presents a new ‘Parareal-algorithm’ to solve time-dependent ODEs parallel in time...
This thesis proposes and analyzes a new parallel-in-time gradient-type method for time-dependent opt...
Simulations aid in many scientific and industrial applications. A general ambition for these simulat...
International audienceA computational fluid dynamics code is differentiated using algorithmic differ...
To solve optimization problems with parabolic PDE constraints, often methods working on the reduced ...
PhDSimulations are used in science and industry to predict the performance of technical systems. Ad...
The parareal algorithm seeks to extract parallelism in the time-integration direction of time-depend...
International audienceA computational fluid dynamics code relying on a high-order spatial discretiza...
4th International Conference on Computational Engineering (ICCE 2017), 28-29 September 2017, Darmsta...
In this paper we present an adjoint solver for the multigrid in time software library XBraid. XBraid...
We propose a modified parallel-in-time - Parareal - multi-level time integration method which, in co...
This review article serves to summarize the many advances in time-parallel computations since the ex...
International audienceThe time parallel solution of optimality systems arising in PDE constrained op...
The leapfrog scheme is a commonly used second-order dierence scheme for solving dierential equations...
Forecasts made by 4-D Var involves forward integration of model before proceeding for the minimisati...