An FPGA based floating point Gauss-Seidel iterative solver

ieee india conference(2017)

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摘要
In this paper, an FPGA-based single precision floating point hybrid iterative architecture for solving a linear system of equations is proposed. The novel architecture implements Gauss-Seidel method using a Jacobi method based building block. The design takes advantage of the fast convergence of Gauss-Seidel Method conflated with parallel, pipelined architecture of Jacobi Iterative solver resulting in a much efficient architecture with acceptable hardware augmentation. The whole design has been implemented in Verilog HDL, having Virtex 7 XCV2000T as targeted device. Other design optimizations include using modified high-speed radix 4 multiplier and optimized high-speed 2's complementer. The efficacy of the design is tested and implemented in solving nonsingular, exactly determined and strictly diagonally dominant coefficient matrix based dense and sparse linear system of equations with different number of variables. The design results in reduced number of iterations and equivalent speedups are presented, which are calculated factoring in, the increased delay effects.
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关键词
Jacobi method,Gauss-Seidel method,diagonally dominant matrix,direct methods,iterative methods
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