6533b852fe1ef96bd12aa3e8
RESEARCH PRODUCT
Neural Sensorless Control of Linear Induction Motors by a Full-Order Luenberger Observer Considering the End Effects
Marcello PucciMaurizio CirrincioneGianpaolo VitaleAngelo Accettasubject
EngineeringLinear Induction Motor (LIM)Neural NetworksArtificial neural networkBasis (linear algebra)Observer (quantum physics)business.industryState ModelTotal Least-SquaresLeast squaresEnd effectsIndustrial and Manufacturing EngineeringMatrix (mathematics)Control and Systems EngineeringControl theoryLuenberger ObserverLinear induction motorState observerElectrical and Electronic EngineeringTotal least squaresbusinessRepresentation (mathematics)MRASInduction motorMachine controldescription
This paper proposes a neural based full-order Luenberger adaptive speed observer for sensorless linear induction motor (LIM) drives, where the linear speed is estimated with the total least squares (TLS) EXIN neuron. A novel state space-vector representation of the LIM has been deduced, taking into consideration its dynamic end effects. The state equations of the LIM have been rearranged into a matrix form to be solved, in terms of the LIM linear speed, by any least squares technique. The TLS EXIN neuron has been used to compute online, in recursive form, the machine linear speed. A new gain matrix choice of the Luenberger observer, specifically taking into consideration the LIM dynamic end effects, has been proposed, overcoming the limits of the gain matrix choice based on the rotating-induction-machine model. The proposed TLS full-order Luenberger adaptive speed observer has been tested experimentally on an experimental rig. Results have been compared with those achievable with the TLS EXIN MRAS, the classic MRAS, and the sliding-mode MRAS observers. © 2014 IEEE.
year | journal | country | edition | language |
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2012-09-01 | IEEE Transactions on Industry Applications |