Multi-GPU Development of a Neural Networks Based Reconstructor for Adaptive Optics

作者:Gonzalez Gutierrez Carlos; Luisa Sanchez Rodriguez Maria; Luis Calvo Rolle Jose; de Cos Juez Francisco Javier
来源:Complexity, 2018, 2018: 5348265.
DOI:10.1155/2018/5348265

摘要

Aberrations introduced by the atmospheric turbulence in large telescopes are compensated using adaptive optics systems, where the use of deformable mirrors andmultiple sensors relies on complex control systems. Recently, the development of larger scales of telescopes as the E-ELT or TMT has created a computational challenge due to the increasing complexity of the new adaptive optics systems. The Complex Atmospheric Reconstructor based on Machine Learning (CARMEN) is an algorithm based on artificial neural networks, designed to compensate the atmospheric turbulence. During recent years, the use of GPUs has been proved to be a great solution to speed up the learning process of neural networks, and different frameworks have been created to ease their development. The implementation of CARMEN in different Multi-GPU frameworks is presented in this paper, along with its development in a language originally developed for GPU, like CUDA. This implementation offers the best response for all the presented cases, although its advantage of using more than one GPU occurs only in large networks.

  • 出版日期2018