首页> 外文会议>ASME conference on smart materials, adaptive structures and intelligent systems >A HYBRID MASTER-SLAVE GENETIC ALGORITHM-NEURAL NETWORK APPROACH FOR MODELING A PIEZOELECTRIC ACTUATOR
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A HYBRID MASTER-SLAVE GENETIC ALGORITHM-NEURAL NETWORK APPROACH FOR MODELING A PIEZOELECTRIC ACTUATOR

机译:一种用于建模压电执行器的混合母从遗传算法 - 神经网络方法

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This work presents an approach for developing the model of a smart fin dynamics that is activated by a fully-enclosed piezoelectric (PZT) bimorph actuator, which is created by bonding two Macro Fiber Composites (MFCs). Observing the dynamics of the fin indicates that the use of a linear dynamic model does not adequately describe its behavior. An earlier work proposed incorporating a proportional damping matrix as well as Bouc-Wen hysteresis model and backlash operators to create a more accurate model. However, the number of parameters describing the expanded model is large, which limits its use. Therefore, there is a need for a different approach for developing an alternative model of the fin. In this work, a hybrid master-slave Genetic Algorithm (GA)-Neural Network (NN) model is proposed to identify the optimal set of parameters for the damping matrix constants, the Bouc-Wen hysteresis model and the backlash operators. A total of nine sinusoidal input voltage cases that resemble a grid of three different amplitudes excited at three different frequencies are used to train and validate the model. Three input cases are considered for training the NN architecture, connection weights, bias weights and learning rules using GA. The NN consists of three layers: an input layer that has two nodes for the amplitude and the frequency of the input voltage, an output layer that has seven nodes for the backlash, hysteresis, and damping operators, and a hidden layer that is free to have any number of nodes between two and nine. The GA constantly performs natural selection of chromosomes that propagate best compilation of NN parameters. Simulation results show that the proposed model can predict the damping, hysteresis and backlash of the smart fin-actuator system under various operational conditions.
机译:该工作提出了一种方法,用于开发由全封闭的压电(PZT)双芯片致动器激活的智能鳍动力学模型,该致动器通过键合两个宏纤维复合材料(MFC)而产生。观察鳍的动态表明使用线性动态模型不会充分描述其行为。提出了一种与比例阻尼矩阵以及BOUC-WEN滞后模型和反弹操作者的工作提出,以创建更准确的模型。但是,描述扩展模型的参数数量很大,这限制了其使用。因此,需要一种用于开发鳍片的替代模型的不同方法。在这项工作中,提出了一种混合主从遗传算法(GA) - 网络(NN)模型,用于识别阻尼矩阵常数,BOUC-WEN滞后模型和反弹运算符的最佳参数集。共有九个正弦输入电压壳,其在三种不同频率下兴奋的三种不同幅度的网格用于培训和验证模型。考虑使用三个输入案例用于使用GA训练NN架构,连接权重,偏置权重和学习规则。 NN由三层组成:一个输入层,其具有两个节点,用于幅度和输入电压的频率,输出层具有七个节点,用于间隙,滞后和阻尼算子,以及自由的隐藏层有两到九个之间的任何数量的节点。 GA不断执行染色体的自然选择,其传播了NN参数的最佳汇编。仿真结果表明,该模型可以在各种操作条件下预测智能翅片致动器系统的阻尼,滞后和间隙。

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