Direct and indirect classification of high frequency LNA gain performance – a comparison between SVMS and MLPS

dc.contributor.authorHung, Peter C.
dc.contributor.authorMcLoone, Seán F.
dc.contributor.authorFarrell, Ronan
dc.date.accessioned2018-12-05T09:29:50Z
dc.date.available2018-12-05T09:29:50Z
dc.date.issued2009
dc.description.abstractThe task of determining low noise amplifier (LNA) high-frequency performance in functional testing is as challenging as designing the circuit itself due to the difficulties associated with bringing high frequency signals off- chip. One possible strategy for circumventing these difficulties is to inferentially estimate the high frequency performance measures from measurements taken at lower, more accessible, frequencies. This paper investigates the effectiveness of this strategy for classifying the high frequency gain of the amplifier, a key LNA performance parameter. An indirect Multilayer Perceptron (MLP) and direct support vector machine (SVM) classification strategy are considered. Extensive Monte-Carlo simulations show promising results with both methods, with the indirect MLP classifiers marginally outperforming SVMs.uk_UA
dc.identifier.citationHung, P. C. Direct and indirect classification of high frequency LNA gain performance – a comparison between SVMS and MLPS [Text] / Peter C. Hung, Seán F. McLoone, Ronan Farrell // Computing = Комп’ютинг. - 2009. - Vol. 8, is. 1. - P. 24-31.uk_UA
dc.identifier.urihttp://dspace.tneu.edu.ua/handle/316497/32005
dc.publisherТНЕУuk_UA
dc.subjectLNAuk_UA
dc.subjectFunctional testinguk_UA
dc.subjectClassificationuk_UA
dc.subjectSupport Vector Machinesuk_UA
dc.subjectMultilayer Perceptronsuk_UA
dc.titleDirect and indirect classification of high frequency LNA gain performance – a comparison between SVMS and MLPSuk_UA
dc.typeArticleuk_UA

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