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Modeling of piezoelectric actuator based on genetic neural network

机译:基于遗传神经网络的压电执行器建模

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Piezoelectric actuator is widely used in precision positioning mechanism for the advantages of ultra high resolution, high response frequency and rapid dynamic performance. But the displacement error is conducted for the inherent hysteretic nonlinear characteristics, and the tracking precision is limited. A modified modeling method combining the neural network with the genetic algorithm (GA) is designed in this paper to improve the modeling performance. The mechanical structure is analyzed, and a Bouc-Wen model is introduced to express the nonlinear kinetics. A three-layer neural network is applied to identify the parameters including the weight and threshold values by Levenberg-Marquardt algorithm. GA is used to achieve the optimized solution of the network parameters. The data pairs including actuating voltage and corresponding displacement are regarded as the samples to train the network off-line. A low frequency triangle voltage with variable amplitude is applied to validate the effectiveness of the proposed method. The results show that the mean positioning error is reduced from 0.39µm to 0.24µm, and the maximum error from 0.76µm to 0.33µm respectively compared with the static neural network. A more accurate model is established for the control system design in the future.
机译:压电致动器广泛用于精密定位机构,用于超高分辨率,高响应频率和快速动态性能的优点。但是对固有的滞后非线性特性进行了位移误差,并且跟踪精度受到限制。在本文中设计了一种与遗传算法(GA)结合神经网络的修改建模方法,以提高建模性能。分析机械结构,并引入BOUC-WEN模型以表达非线性动力学。应用三层神经网络以识别由Levenberg-Marquardt算法的重量和阈值的参数。 GA用于实现网络参数的优化解决方案。包括致动电压和相应位移的数据对被视为用于训练网络的样本。应用具有可变幅度的低频三角电压以验证所提出的方法的有效性。结果表明,与静态神经网络相比,平均定位误差从0.39μm降低至0.24μm,最大误差分别为0.76μm至0.33μm。为未来控制系统设计建立了更准确的模型。

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