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Keywords: Support vector machine
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Journal Articles
Fault location using mathematical analysis and database approach
Available to Purchase
COMPEL (2019) 38 (1): 415–430.
Published: 28 November 2018
... is proposed. Design/methodology/approach The work uses voltage sag data measured at a primary substation. Support vector machine estimates the data which are not simulated. The possible faulty section is determined using matching approach and fault distance using mathematical analysis. Findings...
Journal Articles
Exploration of noisy data in differential electronic nose
Available to Purchase
COMPEL (2016) 35 (4): 1382–1392.
Published: 04 July 2016
... electronic nose is its resistance to the noise corrupting the measurement. The authors will analyze and compare the performance of the nose in the noisy environment by applying two classifier systems: the support vector machine (SVM) and random forest (RF) of decision trees. Findings – On the basis...
