A Particle Swarm Optimization Approach for Routing in VLSI

M. N. Ayob, Z. Yusof, Asrul Adam, A. F. Z. Abidin, I. Ibrahim, Z. Ibrahim, S. Sudin, N. Shaikh-Husin, M. Hani
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引用次数: 24

Abstract

The performance of very large scale integration (VLSI) circuits is depends on the interconnected routing in the circuits. In VLSI routing, wire sizing, buffer sizing, and buffer insertion are techniques to improve power dissipation, area usage, noise, crosstalk, and time delay. Without considering buffer insertion, the shortest path in routing is assumed having the minimum delay and better performance. However, the interconnect delay can be further improved if buffers are inserted at proper locations along the routing path. Hence, this paper proposes a heuristic technique to simultaneously find the optimal routing path and buffer location for minimal interconnect delay in VLSI based on particle swarm optimization (PSO). PSO is a robust stochastic optimization technique based on the movement and information sharing of swarms. In this study, location of doglegs is employed to model the particles that represent the routing solutions in VLSI. The proposed approach has a good potential in VLSI routing and can be further extended in future
超大规模集成电路中路由的粒子群优化方法
超大规模集成电路(VLSI)的性能取决于电路中的互连路由。在VLSI路由中,导线尺寸、缓冲器尺寸和缓冲器插入是改善功耗、面积使用、噪声、串扰和时间延迟的技术。在不考虑缓冲区插入的情况下,假设路由中的最短路径具有最小的延迟和更好的性能。但是,如果在路由路径的适当位置插入缓冲区,则可以进一步改善互连延迟。因此,本文提出了一种基于粒子群优化(PSO)的启发式方法,同时寻找VLSI中互连延迟最小的最优路由路径和缓冲区位置。粒子群优化是一种基于群体运动和信息共享的鲁棒随机优化技术。在这项研究中,狗腿的位置被用来建模粒子,代表VLSI的路由解决方案。该方法在超大规模集成电路路由中具有良好的应用潜力,并可在未来进一步推广
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