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Solving a very large-scale sparse linear system with a parallel algorithm in the Gaia mission

机译:在Gaia Mission中解决具有并行算法的非常大规模的稀疏线性系统

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Gaia is a 5-year ESA (European Space Agency) cornerstone mission launched at the end of 2013. Its main goal is the production of a 5-parameter astrometric catalogue (i.e. positions, parallaxes and the two components of the proper motions) at the micro-arcsecond level for about 1 billion stars of our Galaxy by means of high-precision measurements. The main task of the code presented in this paper is the Gaia astrometric core solution, represented by a system of up to 72 billion linear observations equations and 600 million unknowns, resulting in a very large and sparse system matrix. This problem is solved by means of an ad-hoc implementation of the PC-LSQR iterative algorithm aimed at maximizing the number of adjustable stellar objects, which makes also use of a pre-conditioning technique consisting in a re-normalization of the columns of the system matrix to improve the convergence speed. After a description of the parallel algorithm, we present the results obtained on a IBM BlueGeneQ system using both the message-passing and OpenMP paradigms. We also report on the performances obtained from simulations of different stages of the mission from beginning to end.
机译:盖亚是一个5年的ESA(欧洲航天局)基石特派团于2013年底发布。其主要目标是生产5参数的星形目录(即位置,视差和适当运动的两个组成部分)通过高精度测量,微弧秒为大约10亿星的星系。本文呈现的代码的主要任务是Gaia Astromicric核心解决方案,由高达720亿线性观测方程和600百万个未知数表示的系统表示,导致系统矩阵非常大而稀疏的系统矩阵。通过PC-LSQR迭代算法的ad-hoc实现解决了该问题,该算法旨在最大化可调恒星物体的数量,这也可以使用预处理技术,该技术组成的重新标准化系统矩阵提高收敛速度。在对并行算法的描述之后,我们介绍了使用消息传递和OpenMP范例的IBM BlueGeneq系统上获得的结果。我们还报告了从开始到结束的不同阶段的模拟中获得的表演。

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