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A Novel Preisach Based Neural Network Approach to Hysteresis Non-Linearity Modeling

机译:基于Preisach的滞后非线性建模的新型Preisach基于Preisach的神经网络方法

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In some systems with hysteresis behavior like Shape Memory Alloy (SMA) actuators and Piezo actuators, we essentially need an accurate modeling of hysteresis either for controller design or performance evaluation. One of the most interesting Hysteresis non-linearity identification methods is Preisach model in which hysteresis is modeled by linear combination of elemental operators. Despite good ability of Preisach modeling to extract main features of system with hysteresis behavior, cause of tough numerical nature of Preisach, it is not convenient to use in real-time control applications. In this paper we present a novel method based on Artificial Neural Network. For evaluation of proposed approach we use experimental apparatus consists of one-dimensional flexible aluminum structure with SMA wire as deflection controller actuator which has hysteresis characteristic.
机译:在一些具有形状记忆合金(SMA)执行器和压电致动器等滞后行为的一些系统中,我们基本上需要一种精确的控制器设计或性能评估的滞后建模。最有趣的滞后非线性识别方法是Preisach模型,其中滞后由元素运算符的线性组合进行建模。尽管Preisach建模具有良好的能力,以提取系统的主滞行为的主要特征,但Preisach的强硬数量的原因,在实时控制应用中使用是不方便的。本文介绍了一种基于人工神经网络的新方法。为了评估所提出的方法,我们使用实验装置包括具有SMA线的一维柔性铝结构,作为具有滞后特性的偏转控制器致动器。

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