A Fully-Connected and Area-Efficient Ising Model Annealing Accelerator for Combinatorial Optimization Problems

Yukang Huang, Dong Jiang, Yongkui Yang, Enyi Yao
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引用次数: 0

Abstract

The combinatorial optimization problem is ubiquitously in our daily life and typically inefficient for modern Von Neumann architecture-based computer. Targeting for various combinatorial optimization problems, this paper presents a 10K-bit area-efficient architecture of the domain specific accelerator based on fully-connected Ising model using an FPGA platform. The proposed system is based on simulated annealing algorithm with a spin preselection scheme to prevent the system to be trapped in the local minimum and increase the convergence efficiency, which is more easily and efficiently to be hardware implemented. Using max-cut problem as the experiment benchmark, the proposed hardware architecture achieves an acceleration of 50,000 × compared with the software simulation result.
一种用于组合优化问题的全连通和面积高效的Ising模型退火加速器
组合优化问题在我们的日常生活中无处不在,对于基于冯·诺依曼体系结构的现代计算机来说,组合优化问题通常效率低下。针对各种组合优化问题,本文提出了一种基于全连接Ising模型的10k位区域高效领域加速器架构。该系统基于模拟退火算法,采用自旋预选方案,避免了系统陷入局部极小值,提高了收敛效率,更易于硬件实现。以最大切割问题为实验基准,与软件仿真结果相比,所提出的硬件架构实现了5万倍的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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