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Prediction of Operating Characteristics of Electrotechnical Devices using Artificial Neural Networks

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Academic year: 2017

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Fig. 1. Physical model of the inductive proximity transducer
Fig. 3. Particularities of the mesh associated with computation  domain  COIL AIR  PLATE  INFINITE REGION
Fig. 6. The chart of magnetic flux density in the case of steel  plate and D=14 mm (a), respectively, D=56 mm (b)
Fig. 9. The variation of transducer sensibility with the distance  to the surface of aluminium plate
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