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Using neural networks in the identification of Preisach-type hysteresis models

机译:在识别Preisach型磁滞模型中使用神经网络

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The identification process of the classical Preisach-type hysteresis model reduces to the determination of the weight function of elementary hysteresis operators upon which the model is built. It is well known that the classical Preisach model can exactly represent hysteretic nonlinearities which exhibit wiping-out and congruency properties. In that case, the model identification can be analytically and systematically accomplished by using first-order reversal curves. If the congruency property is not exactly valid, the Preisach model can only be used as an approximation. It is possible to improve the model accuracy in this situation by incorporating more appropriate experimental data during the identification stage. However, performing this process using the traditional systematic techniques becomes almost impossible. In this paper, the machinery of neural networks is proposed as a tool to accomplish this identification task. The suggested identification approach has been numerically implemented and carried out for a magnetic tape sample that does not possess the congruency property. A comparison between measured data and model predictions suggests that the proposed identification approach yields more accurate results.
机译:经典的Preisach型磁滞模型的识别过程简化为确定基于该模型的基本磁滞算子的权函数。众所周知,经典的Preisach模型可以精确地表示滞后非线性,该非线性表现出擦除和一致性特性。在那种情况下,可以通过使用一阶反转曲线来分析和系统地完成模型识别。如果congruency属性不是完全正确,则Preisach模型只能用作近似值。通过在识别阶段合并更多合适的实验数据,可以提高这种情况下的模型准确性。但是,使用传统的系统技术执行此过程几乎变得不可能。在本文中,提出了神经网络的机制作为完成此识别任务的工具。所建议的识别方法已经在数值上实现,并且对不具有一致性特性的磁带样品进行了识别。测量数据与模型预测之间的比较表明,所提出的识别方法可产生更准确的结果。

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