Document details

FUZYE: A Fuzzy C-Means Analog IC Yield Optimization using Evolutionary-based Algorithms

Author(s): Canelas, António ; Póvoa, Ricardo ; Martins, Ricardo ; Lourenço, Nuno ; Guilherme, Jorge ; Carvalho, João Paulo ; Horta, Nuno

Date: 2020

Persistent ID: http://hdl.handle.net/10400.26/57796

Origin: Escola Superior Náutica Infante D. Henrique

Subject(s): Optimization; Integrated circuit modeling; Yield estimation; Sociology; Statistics; Analytical models


Description

This paper presents fuzzy c-means-based yield estimation (FUZYE), a methodology that reduces the time impact caused by Monte Carlo (MC) simulations in the context of analog integrated circuits (ICs) yield estimation, enabling it for yield optimization with population-based algorithms, e.g., the genetic algorithm (GA). MC analysis is the most general and reliable technique for yield estimation, yet the considerable amount of time it requires has discouraged its adoption in population-based optimization tools. The proposed methodology reduces the total number of MC simulations that are required, since, at each GA generation, the population is clustered using a fuzzy c-means (FCMs) technique, and, only the representative individual (RI) from each cluster is subject to MC simulations. This paper shows that the yield for the rest of the population can be estimated based on the membership degree of FCM and RIs yield values alone. This new method was applied on two real circuit-sizing optimization problems and the obtained results were compared to the exhaustive approach, where all individuals of the population are subject to MC analysis. The FCM approach presents a reduction of 89% in the total number of MC simulations, when compared to the exhaustive MC analysis over the full population. Moreover, a k-means-based clustering algorithm was also tested and compared with the proposed FUZYE, with the latest showing an improvement up to 13% in yield estimation accuracy

Document Type Journal article
Language English
Contributor(s) Repositório Comum
CC Licence
facebook logo  linkedin logo  twitter logo 
mendeley logo

Related documents

No related documents