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An explainable neural network integrating Jiles-Atherton and nonlinear auto-regressive exogenous models for modeling universal hysteresis

Lei Ni, J. Chen, Guoqiang Chen, Dongmei Zhao, Geng Wang, Sumeet S. Aphale

2024Engineering Applications of Artificial Intelligence46 citationsDOIOpen Access PDF

Abstract

The inherent nonlinear and memory-dependent input-output characteristics of piezoelectric actuators pose challenges to the precision of piezoelectric positioning systems. In order to solve this problem, this paper firstly transforms the Jiles-Atherton (JA) model into a neural network structure, designs the Jiles-Atherton neural network (JANN), and combines JANN with nonlinear autoregressive exogenous input (NARX) neural network. A hybrid JA-NARX neural network model is proposed for the first time. This model has the advantages of simple structure, high modeling accuracy, and good interpretability. The effectiveness of the proposed JA-NARX neural network model is validated through a series of experiments, specifically assessing its capacity to accurately capture rate-dependent and asymmetric hysteresis characteristics. The results show that although the proposed neural network model has fewer layers and relatively simple structure, it can realize the high-precision modeling of piezoelectric hysteresis dynamics at a lower computational cost. The experimental data shows that, under the excitation of 60 Hz input signal, the model's PV error only accounts for 0.82% of the full scale range, and the modeling performance is far superior to other models.

Topics & Concepts

Computer scienceNonlinear systemArtificial neural networkHysteresisAutoregressive modelArtificial intelligenceEconometricsPhysicsEconomicsQuantum mechanicsNeural Networks and ApplicationsModel Reduction and Neural NetworksMagnetic Properties and Applications