Hysteretic system behavior is ubiquitous in science and engineering fields including measurement systems and applications. In this paper, we put forth a nonlinear state–space system identification method that combines the state–space equations to capture the system dynamics with a compact and exact artificial neural network (ANN) representation of the classical Prandtl–Ishlinskii (PI) hysteresis. These ANN representations called PI hysteresis operator neurons employ recurrent ANNs with classical activation functions, and thus can be trained with classical neural network learning algorithms. The structured nonlinear state–space model class proposed in this paper, for the first time, offers a flexible interconnection of PI hysteresis operator...
graficas, tablasThis research develops a framework for the modeling and identification of hysteretic...
Abstract: In this paper, a neural network based adaptive sliding mode control scheme for hysteretic ...
International audienceUnlike their biological counterparts, simple artificial neural networks are un...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
This article appeared in a journal published by Elsevier. The attached copy is furnished to the auth...
Developing a model based digital human meridian system is one of the interesting ways of understandi...
Hysteresis is a phenomenology commonly encountered in very diverse engineering and science disciplin...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
Several different data-driven strategies for nonlinear identification are applied to experimental da...
peer reviewedHysteresis is a nonlinear effect that shows up in a wide variety of engineering and sci...
graficas, tablasThis research develops a framework for the modeling and identification of hysteretic...
Abstract: In this paper, a neural network based adaptive sliding mode control scheme for hysteretic ...
International audienceUnlike their biological counterparts, simple artificial neural networks are un...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
This paper introduces explicit neural representations of fundamental hysteresis operators such as th...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
This article appeared in a journal published by Elsevier. The attached copy is furnished to the auth...
Developing a model based digital human meridian system is one of the interesting ways of understandi...
Hysteresis is a phenomenology commonly encountered in very diverse engineering and science disciplin...
Most studies tackling hysteresis identification in the technical literature follow white-box approac...
Several different data-driven strategies for nonlinear identification are applied to experimental da...
peer reviewedHysteresis is a nonlinear effect that shows up in a wide variety of engineering and sci...
graficas, tablasThis research develops a framework for the modeling and identification of hysteretic...
Abstract: In this paper, a neural network based adaptive sliding mode control scheme for hysteretic ...
International audienceUnlike their biological counterparts, simple artificial neural networks are un...