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(Referência obtida automaticamente do Web of Science, por meio da informação sobre o financiamento pela FAPESP e o número do processo correspondente, incluída na publicação pelos autores.)

A Multi-Model Engine for High-Level Power Estimation Accuracy Optimization

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Autor(es):
Klein, Felipe [1] ; Leao, Roberto [2] ; Araujo, Guido [1] ; Santos, Luiz [3] ; Azevedo, Rodolfo [1]
Número total de Autores: 5
Afiliação do(s) autor(es):
[1] Univ Estadual Campinas, Inst Comp, BR-13084971 Sao Paulo - Brazil
[2] Suntech Intelligent Solut, BR-88015400 Florianopolis, SC - Brazil
[3] Univ Fed Santa Catarina, Dept Comp Sci, BR-88010970 Florianopolis, SC - Brazil
Número total de Afiliações: 3
Tipo de documento: Artigo Científico
Fonte: IEEE TRANSACTIONS ON VERY LARGE SCALE INTEGRATION (VLSI) SYSTEMS; v. 17, n. 5, p. 660-673, MAY 2009.
Citações Web of Science: 11
Resumo

Register transfer level (RTL) power macromodeling is a mature research topic with a variety of equation and table-based approaches. Despite its maturity, macromodeling is not yet Widely accepted as a de facto industrial standard for power estimation at the RT level. Each approach has many variants depending upon the parameters chosen to capture power variation. Every macromodeling technique has some intrinsic limitation affecting either its performance or its accuracy. Therefore, alternative macromodeling methods can be envisaged as part of a power modeling toolkit from which multiple models for a given component could be exploited so as to reduce the estimation errors resulting from conventional single-model approaches. This paper describes two different approaches for a new multi-model power estimation engine. The first one selects the macromodeling technique that leads to the least estimation error, for a given system component, depending on the properties of its input-vector stream. A proper selection function is built after component characterization and used during estimation. Though simple, this approach has revealed a substantial improvement in estimation accuracy. The second one builds a power estimate function that captures the correlation between individual macromodel estimates and input-stream properties. Experimental results show that our multi-model engine improves the robustness of power analysis with negligible usage overhead. Accuracy becomes seven times better on average, as compared to conventional single-model estimators, while the overall maximum estimation error is divided by 9. (AU)

Processo FAPESP: 05/02565-9 - Analise/otimização de potência de SoCs heterogêneos ponderando componentes de hardware/software
Beneficiário:Felipe Vieira Klein
Modalidade de apoio: Bolsas no Brasil - Doutorado