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GPU-accelerated Poincar#x00E9; map method for harmonic-oriented analyses of power systems

机译:GPU加速的庞加莱映射方法,用于电力系统的谐波分析

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A parallel Poincaré map method based on graphic processing units (GPU), suitable for harmonic-oriented studies, is presented in this paper. It relies on a Newton method and a transition matrix computed by columns on the GPU. A parallel kernel for the Trapezoidal Rule integration routine allows solving the set of ordinary differential equations, whilst sparse matrices involved in the Trapezoidal Rule are stored at the GPU using a Compressed Sparse Row (CSR) format. Direct and iterative solvers based on LU decomposition and Krylov subspace methods are used to solve system of equations arising from the Newton-Raphson algorithm. Results in terms of convergence to the periodic steady-state and speedup factors of order 7 confirm that this novel GPU-based approach is an efficient parallel version of the Poincaré map method. An advanced memory optimization approach based on pinned memory and asynchronous transfers provides further computational savings of the order of 20%.
机译:本文提出了一种基于图形处理单元(GPU)的并行庞加莱地图方法,适用于谐波研究。它依赖于Newton方法和由GPU上的列计算的转换矩阵。梯形规则集成例程的并行内核允许求解常微分方程组,而梯形规则中涉及的稀疏矩阵则使用压缩稀疏行(CSR)格式存储在GPU中。基于LU分解和Krylov子空间方法的直接和迭代求解器用于求解由Newton-Raphson算法产生的方程组。关于收敛到阶数为7的周期性稳态和加速因子的结果证实,这种新颖的基于GPU的方法是庞加莱映射方法的高效并行版本。基于固定内存和异步传输的高级内存优化方法可进一步节省约20%的计算量。

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