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Grey relational clustering associated with CAPRI applied to FPGA placement

机译:与CAPRI关联的灰色关系聚类应用于FPGA布局

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摘要

Grey relational clustering is used to minimise wire length during field programmable gate arrays (FPGA) placement and routing. The proposed Grey Relational Clustering Apply to Placement (GRAP) algorithm combines grey relational clustering and convex assigned placement for regular ICs method to construct a placement netlist, which was successfully used to solve the problem of minimising wire length in an FPGA placement. Upon calculating the grey relational grade, GRAP can rank the sequence and analyse the minimal distance in configuration logic blocks based on the grey relational sequence and combined connection-based approaches. The experimental results demonstrate that the GRAP effectively compares the Hibert, Z and Snake with bounding box (BB) cost function in the space-filling curve. The GRAP improved BB cost by 0.753%, 0.324% and 0.096% for the Hilbert, Z and Snake, respectively. This study also compares the critical path with the space-filling curve. The GRAP approach improved the critical path for Snake by 1.3% in the space-filling curve; however, the GRAP increased critical path wire by 1.38% and 0.03% over that of the Hilbert and Z of space-filling curve, respectively.
机译:灰色关联聚类用于在现场可编程门阵列(FPGA)放置和布线期间最小化导线长度。拟议的灰色关联聚类应用于布局(GRAP)算法结合了灰色关联聚类和针对常规IC的凸分配布局,构造了一个布局网表,已成功用于解决FPGA布局中线长最小的问题。通过计算灰色关联度,GRAP可以对顺序进行排序,并基于灰色关联顺序和组合的基于连接的方法来分析配置逻辑块中的最小距离。实验结果表明,GRAP在空间填充曲线中有效地将Hibert,Z和Snake与边界框(BB)成本函数进行了比较。 GRAP使希尔伯特,Z和Snake的BB成本分别降低了0.753%,0.324%和0.096%。这项研究还比较了关键路径和空间填充曲线。 GRAP方法在空间填充曲线中将Snake的关键路径改善了1.3%;但是,GRAP的关键路径导线分别比空间填充曲线的Hilbert和Z分别增加了1.38%和0.03%。

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