2005
DOI: 10.1109/tpwrd.2004.843399
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Disturbance Classification Using Hidden Markov Models and Vector Quantization

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Cited by 52 publications
(31 citation statements)
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“…Finally, to evaluate the practical performance of the proposed algorithm, a comparison among each method in Table 4 is performed, except for [4,9,10,22,23], by using measured data. The classification accuracy of [6,14,15] for measured data is 98.3, 96.3, and 95.2%, respectively, whereas the classification accuracy of this study is 98.6%.…”
Section: Performance Comparison and Discussionmentioning
confidence: 99%
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“…Finally, to evaluate the practical performance of the proposed algorithm, a comparison among each method in Table 4 is performed, except for [4,9,10,22,23], by using measured data. The classification accuracy of [6,14,15] for measured data is 98.3, 96.3, and 95.2%, respectively, whereas the classification accuracy of this study is 98.6%.…”
Section: Performance Comparison and Discussionmentioning
confidence: 99%
“…As abovementioned, the number of linguistic values in its universe is 11, corresponding to the values of F1 for all patterns of disturbances. Therefore, depending on the minimum and maximum features of each pattern, the membership function of this linguistic value can be calculated by (9). For example, the minimum and maximum features of sag (shown as the ordinate value 1 in Fig.…”
Section: Membership Functionmentioning
confidence: 99%
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“…(6) Information gain is calculated by (7). (7) Split information is calculated by (8) (8) Information gain ratio is determined by (9), the split with maximum gain ratio selected. (9) Power quality disturbances can be classifies using a deterministic decision tree by sorting them from the root to some leaf node; this node identifies a class value (disturbance).…”
Section: S-transformmentioning
confidence: 99%
“…The first focusing in obtaining a suitable pattern that allow distinguish clearly each disturbance, by the use of time-frequency transforms for feature extraction, as Wavelet transform (WT) [2] and Stransform (ST) [3]. The second is oriented to use a classifier able to assign each disturbance correctly in its class, so the most of the artificial intelligent techniques have been combined with WT or ST, as Artificial Neural Networks (ANN) [4], [5], Decision Tree [6], [7], Fuzzy Logic [8], Hidden Markov Model [9] or Support Vector Machines [10], [11]. Many works consider power quality disturbances as signals that contain a unique given event in a time interval.…”
Section: Introductionmentioning
confidence: 99%