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首页> 外文期刊>Physica, B. Condensed Matter >Neural networks dynamic hysteresis model for piezoceramic actuator based on hysteresis operator of first-order differential equation
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Neural networks dynamic hysteresis model for piezoceramic actuator based on hysteresis operator of first-order differential equation

机译:基于一阶微分方程滞后算子的压电陶瓷执行器神经网络动态滞后模型

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摘要

A new neural networks dynamic hysteresis model for piezoceramic actuator is proposed by combining the Preisach model with diagonal recurrent neural networks. The Preisach model is based on elementary rate-independent operators and is not suitable for modeling piezoceramic actuator across a wide frequency band because of the rate-dependent hysteresis characteristic of the piezoceramic actuator. The structure of the developed model is based on the structure of the Preisach model, in which the rate-independent relay hysteresis operators (cells) are replaced by the rate-dependent hysteresis operators of first-order differential equation. The diagonal recurrent neural networks being modified by an adjustable factor can be used to model the hysteresis behavior of the pizeoceramic actuator because its structure is similar to the structure of the modified Preisach model. Therefore, the proposed model not only possesses that of the Preisach model, but also can be used for describing its dynamic hysteresis behavior. Through the experimental results of both the approximation and the prediction, the effectiveness of the neural networks dynamic hysteresis model for the piezoceramic actuator is demonstrated. (c) 2005 Elsevier B.V. All rights reserved.
机译:通过将Preisach模型与对角递归神经网络相结合,提出了一种新的压电陶瓷执行器神经网络动态滞后模型。 Preisach模型基于基本速率无关的算子,并且由于压电陶瓷促动器的速率相关滞后特性,因此不适用于在宽频带上对压电促动器建模。所开发模型的结构基于Preisach模型的结构,其中速率无关的继电器磁滞算子(单元)被一阶微分方程的速率无关的磁滞算子代替。由于对角递归神经网络的结构与修改后的Preisach模型的结构相似,因此可通过对因子进行调整的对角线递归神经网络可用于对微晶陶瓷促动器的磁滞行为进行建模。因此,所提出的模型不仅具有Preisach模型的模型,而且可以用于描述其动态滞后行为。通过近似和预测的实验结果,证明了压电陶瓷执行器的神经网络动态滞后模型的有效性。 (c)2005 Elsevier B.V.保留所有权利。

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