Induction Motor Modelling Using Multi-Layer Perceptrons (Special Section on Neural Nets, Chaos and Numerics)
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概要
- 論文の詳細を見る
Asynchronous machines are a topic of great interest in the research area of actuators. Due to the complexity of these systems and to the required performance, the modeling and control of asynchronous machines are complex questions. Problems arise when the control goals require accurate descriptions of the electric machine or when we need to identify some electrical parameters; in the models employed it becomes very hard to take into account all the phenomena involved and therefore to make the error amplitude adequately small. Moreover, it is well known that, though an efficient control strategy requires knowledge of the flux vector, direct measurement of this quantity, using ad hoc transducers, does not represent a suitable approach, because it results in expensive machines. It is therefore necessary to perform an estimation of this vector, based on adequate dynamic non-linear models. Several different strategies have been proposed in literature to solve the items in a suitable manner. In this paper the authors propose a neural approach both to derive NARMAX models for asynchronous machines and to design non-linear observers: the need to use complex models that may be inefficient for control aims is therefore avoided. The results obtained with the strategy proposed were compared with simulations obtained by considering a classical fifth-order non-linear model.
- 社団法人電子情報通信学会の論文
- 1993-05-25
著者
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Graziani Salvatore
The Dipartimento Elettrico Elettronico E Sistemistico University Of Catania
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Fortuna L
Dipartimento Elettrico Elettronico E Sistemistico Universita Degli Studi Di Catania
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Arena P
Univ. Catania
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Arena Paolo
the Dipartimento Elettrico, Elettronico e Sistemistico, University of Catania
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Fortuna Luigi
the Dipartimento Elettrico, Elettronico e Sistemistico, University of Catania
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Gallo Antonio
the Dipartimento Elettrico, Elettronico e Sistemistico, University of Catania
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Muscato Giovanni
the Dipartimento Elettrico, Elettronico e Sistemistico, University of Catania
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Gallo Antonio
The Dipartimento Elettrico Elettronico E Sistemistico University Of Catania
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Arena Paolo
The Dipartimento Elettrico Elet-tronico E Sistemistico Of The University Of Catania
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Fortuna Luigi
The Dipartimento Elettrico Elet-tronico E Sistemistico Of The University Of Catania
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Muscato Giovanni
The Dipartimento Elettrico Elettronico E Sistemistico Faculty Of Engineering University Of Catania
関連論文
- Induction Motor Modelling Using Multi-Layer Perceptrons (Special Section on Neural Nets, Chaos and Numerics)
- State Controlled CNN : A New Strategy for Generating High Complex Dynamics (Special Section on Nonlinear Theory and its Applications)
- Quaternionic Multilayer Perceptrons for Chaotic Time Series Prediction (Special Section on Nonlinear Theory and its Applications)
- Spatial Disorder in Complex Neuro-Fuzzy Dynamics