2016
DOI: 10.1016/j.egypro.2016.06.112
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Phase-phase Short Fault Analysis of Permanent Magnet Synchronous Motor in Electric Vehicles

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Cited by 8 publications
(7 citation statements)
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“…The analysis of the literature presented in Table VIII shows that the largest number of works related to the design of neural damage detectors of PMSMs concerns the application of the MLP structure. The MLP network is characterized by an extremely simple mathematical description, thanks to which it is used in the case of mechanical damages: bearing damage [121,231], eccentricity [231], and in the case of the damage to the stator electrical circuits [215][216][217][218], [224], [225], [232], supply voltage unbalance [219], [221], [227] or stator phase loss [221], [226], and demagnetization faults [232].…”
Section: B Shallow Neural Network Application In Pmsm Drivesmentioning
confidence: 99%
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“…The analysis of the literature presented in Table VIII shows that the largest number of works related to the design of neural damage detectors of PMSMs concerns the application of the MLP structure. The MLP network is characterized by an extremely simple mathematical description, thanks to which it is used in the case of mechanical damages: bearing damage [121,231], eccentricity [231], and in the case of the damage to the stator electrical circuits [215][216][217][218], [224], [225], [232], supply voltage unbalance [219], [221], [227] or stator phase loss [221], [226], and demagnetization faults [232].…”
Section: B Shallow Neural Network Application In Pmsm Drivesmentioning
confidence: 99%
“…In addition, the feedback affects the dynamics of the network, in which a change in the state of one of the neurons affects the operation of the entire network. The main representative of recursive structures in the field of technical diagnostics is the Elman network [225] which is characterized by partial recursion (one-step delays).…”
Section: B Shallow Neural Network Application In Pmsm Drivesmentioning
confidence: 99%
“…The use of classic neural structures, the training process of which is based on the results of mathematical modeling while verification takes place on a real PMSM, is rarely described in the literature [31][32][33]. This results from the difficulties in the development of NN input vectors that are resistant to motor operating conditions and measurement noise.…”
Section: Pmsm Fault Classifiers Based On Shallow Neural Networkmentioning
confidence: 99%
“…This results from the difficulties in the development of NN input vectors that are resistant to motor operating conditions and measurement noise. In most cases, these systems include only PMSM damage detection [32,33] without fault classification. Furthermore, the analyses presented in the literature mainly cover cases of very serious failures that, in practice, result in the shutdown of PMSM [31], for example, phase failure [32] or phase-to-phase short circuits [33].…”
Section: Pmsm Fault Classifiers Based On Shallow Neural Networkmentioning
confidence: 99%
“…Accordingly, during the development of NN-based fault detectors, one should have empirical knowledge about the selection and preparation of training and testing data. Currently, the most commonly used diagnostic applications are based on classic neural structures, such as a multilayer perceptron [13][14][15], self-organising Kohonen networks [9,17], recurrent NNs [14,18] and a radial-basis function NN [12,14,19]. Although this approach to the diagnostic system design provides a relatively high accuracy in detecting damages, expanding the neural structures with the analytical methods to isolate the symptoms of damage does not eliminate the disadvantages resulting from the preprocessing of the measured signal.…”
Section: Introductionmentioning
confidence: 99%