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Constitutive Model of Shape Memory Alloy Wavelet Neural Network Based on Improved Bat Algorithm

机译:基于改进蝙蝠算法的形状记忆合金小波神经网络本构模型

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Based on the experiment of austenite SMA wire properties, the influence of strain amplitude on the dynamic properties of SMA wire is studied, and a constitutive model of SMA wire based on a chaotic Gaussian bat (GS-BA) optimized wavelet neural network (GS-BA-WNN) is proposed. In view of such shortcomings as easy early-maturing and low diversity in late period of the basic bat algorithm (BA), the Gaussian disturbance is used to enhance algorithm’s ability to escape local optimum and promote the bat population chaos optimization to improve the population diversity. GS-BA is combined with wavelet neural network to obtain the initial parameter configuration of WNN, and the model of GS-BA-WNN is used to simulate the constitutive relationship of SMA wire under different amplitudes of strain, and at the same time it is compared with the model of WNN and model of WNN (BA-WNN) optimized by BA. The results show that the GS-BA-WNN model established using experimental data as model training data has higher prediction precision and smaller error than other models, and has advantages in predicting the constitutive relationship of SMA wire.
机译:在奥氏体SMA线性能实验的基础上,研究了应变幅度对SMA线动力学性能的影响,并基于混沌高斯蝙蝠(GS-BA)优化小波神经网络(GS-BA)建立了SMA线本构模型。 BA-WNN)。针对基本蝙蝠算法(BA)的早期成熟,后期多样性低等缺点,利用高斯扰动增强算法逃脱局部最优的能力,促进蝙蝠种群混沌优化,以提高种群多样性。 。 GS-BA与小波神经网络相结合,得到WNN的初始参数配置,并用GS-BA-WNN模型来模拟SMA线在不同应变幅度下的本构关系,同时与WNN模型和BA优化的WNN模型(BA-WNN)进行了比较。结果表明,以实验数据为模型训练数据建立的GS-BA-WNN模型比其他模型具有更高的预测精度和较小的误差,在预测SMA线的本构关系方面具有优势。

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