首页> 外文会议>Conference on Smart Materials, Adaptive Structures and Intelligent Systems >HYSTERESIS IDENTIFICATION OF SHAPE MEMORY ALLOY ACTUTORS USING A NOVEL ARTIFICIAL NEURAL NETWORK BASED PRESIACH MODEL
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HYSTERESIS IDENTIFICATION OF SHAPE MEMORY ALLOY ACTUTORS USING A NOVEL ARTIFICIAL NEURAL NETWORK BASED PRESIACH MODEL

机译:一种使用新型人工神经网络基于专尺模型的形状记忆合金致动器的滞后鉴定

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In systems with hysteresis behavior like Shape Memory Alloy (SMA) actuators and Piezo actuators, an accurate modeling of hysteresis behavior either for performance evaluation and identification or controller design is essentially needed. One of the most interesting hysteresis none-linearity identification methods is Preisach model which the hysteresis is modeled by linear combination of hysteresis operators. In spite of good ability of the Preisach model to extract the main features of system with hysteresis behavior, due to its numerical nature, it is not convenient to use in real time control applications. In this paper a novel artificial neural network (ANN) approach based on the Preisach model is presented which provides accurate hysteresis none-linearity modeling. It is shown that the proposed approach can represent hysteresis behavior more accurately in compare with the classical Preisach model and can be used for many applications such as hysteresis non-linearity control, hysteresis identification and realization for performance evaluation in some physical systems such as magnetic and SMA materials. It is also greatly decrease the extremely large amount of calculation needed to numerically implement the Preisach hysteresis model. For evaluation of the proposed approach an experimental apparatus consists of one-dimensional flexible aluminum beam actuated with a SMA wire is used. It is shown that the proposed ANN based Preisach model can identify hysteresis none-linearity more accurately than the classical Preisach model besides to its reduction in the simulation and computation time.
机译:在具有迟滞特性等形状记忆合金(SMA)致动器和压电致动器,的滞后行为性能评估和鉴定或控制器设计的一个精确的建模或者系统基本上需要。其中最有趣的滞后没有线性鉴别方法是滞后是由磁滞运营商的线性组合模型化Preisach模型。尽管有Preisach模型具有滞后行为提取系统的主要特征,良好的能力,由于其数值的性质,不便于在实时控制应用中使用。在本文中提出了一种基于在Preisach模型的新颖的人工神经网络(ANN)的方法,其提供了精确的滞后没有线性建模。结果表明,所提出的方法可以在与经典Preisach模型比较更准确地表示滞后行为,并且可以用于许多应用,例如迟滞非线性控制,滞后标识与实现性能评价在某些物理系统,例如磁性和SMA材料。这也大大降低了非常大的量数值实施的Preisach滞后模型所需要的计算。对于所提出的方法的评价的实验装置由具有SMA线致动使用一维柔性铝束。结果表明,所提出的基于人工神经网络Preisach模型能更准确地识别滞后没有线性比经典Preisach模型,除了其在模拟和计算时间减少。

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