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Modeling of rate-dependent hysteresis using extreme learning machine based neural model

机译:使用基于极限学习机的神经模型对速率相关的磁滞进行建模

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In this paper, a modified single hidden layer feedforward neural network (MSLFN) based model to describe the behavior of rate-dependent hysteresis inherent in piezoelectric actuators is proposed. In the proposed scheme, the improved SLFN model combining the weighted sum of simple backlash operators and the weighted sum of linear dynamic operators. According to the technique of the extreme learning machine, all the parameters of both backlash and linear dynamic operators are randomly assigned, while the output weights are determined by the least square (LS) algorithm. Then, the experimental results on a piezoceramic actuator are presented. It is shown that the improved model has obtained satisfactory approximation and generalization.
机译:本文提出了一种基于改进的单隐藏层前馈神经网络(MSLFN)的模型,用于描述压电执行器固有的速率相关磁滞行为。在提出的方案中,改进的SLFN模型结合了简单反冲算子的加权和与线性动态算子的加权和。根据极限学习机的技术,反冲和线性动态算子的所有参数都是随机分配的,而输出权重由最小二乘(LS)算法确定。然后,给出了在压电陶瓷致动器上的实验结果。结果表明,改进后的模型获得了令人满意的逼近和推广。

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