In this paper we propose a new way to compute a rough approximation solution, to be later used as a warm starting point in a more refined optimization process, for a challenging global optimization problem related to earth imaging in geophysics. The warm start consists of a velocity model that approximately solves a full-waveform inverse problem at low frequency. Our motivation arises from the availability of massively parallel computing platforms and the natural parallelization of evolution strategies as global optimization methods for continuous variables. Our first contribution consists of developing a new and efficient parametrization of the velocity models to significantly reduce the dimension of the original optimization space. Our se...
We present a distributed-memory parallel algorithm for 2D visco-acoustic full-waveform inversion of ...
We present a distributed-memory parallel algorithm for 2D visco-acoustic full-waveform inversion of ...
International audienceThis is the first paper in a two-part series that describes a massively parall...
International audienceIn this paper we propose a new way to compute a rough approximation solution, ...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
Finding an efficient procedure to solve a seismic inversion problem, such as Full Waveform Inversion...
We present a distributed-memory parallel algorithm for 2D visco-acoustic full-waveform inversion of ...
We present a distributed-memory parallel algorithm for 2D visco-acoustic full-waveform inversion of ...
International audienceThis is the first paper in a two-part series that describes a massively parall...
International audienceIn this paper we propose a new way to compute a rough approximation solution, ...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
In this paper we propose a new way to compute a rough approximation solution, to be later used as a ...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
International audienceWe present a massively parallel algorithm for distributed-memory platform to p...
Finding an efficient procedure to solve a seismic inversion problem, such as Full Waveform Inversion...
We present a distributed-memory parallel algorithm for 2D visco-acoustic full-waveform inversion of ...
We present a distributed-memory parallel algorithm for 2D visco-acoustic full-waveform inversion of ...
International audienceThis is the first paper in a two-part series that describes a massively parall...