Title of article :
Stator Fault Detection in Induction Machines by Parameter Estimation Using Adaptive Kalman Filter
Author/Authors :
Bagheri, F k.n.toosi university of technology, تهران, ايران , Khaloozadeh, H k.n.toosi university of technology, تهران, ايران , Abbaszadeh, K k.n.toosi university of technology, تهران, ايران
From page :
72
To page :
82
Abstract :
This paper presents a parametric low differential order model, suitable for mathematically analysis for Induction Machines with faulty stator. An adaptive Kalman filter is proposed for recursively estimating the states and parameters of continuous-time model with discrete measurements for fault detection ends. Typical motor faults as inter-turn short circuit and increased winding resistance are taken into account. The models are validated against winding function induction motor modeling which is well known in machine modeling field. The validation shows very good agreement between proposed method simulations and winding function method, for short-turn stator fault detection.
Keywords :
Adaptive Kalman Filter , Fault Detection , Induction Machine , Parameter Estimation , Stator Faults
Journal title :
Iranian Journal of Electrical and Electronic Engineering(IJEEE)
Journal title :
Iranian Journal of Electrical and Electronic Engineering(IJEEE)
Record number :
2551181
Link To Document :
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