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首页> 外文期刊>Transactions of the Canadian Society for Mechanical Engineering >DESIGN, FABRICATION, AND PREDICTIVE MODEL OF A 1-DOF TRANSLATIONAL, FLEXIBLE BEARING FOR HIGH PRECISION MECHANISM
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DESIGN, FABRICATION, AND PREDICTIVE MODEL OF A 1-DOF TRANSLATIONAL, FLEXIBLE BEARING FOR HIGH PRECISION MECHANISM

机译:高精度机构的一自由度可转换柔性轴承的设计,制造和预测模型

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摘要

Flexible bearing is significantly associated with high precision manipulators, actuators, and positioning stages. In this paper, a flexible bearing is designed for such applications. The life of a flexible bearing is very sensitively influenced by the stress concentration. The Taguchi method is applied to find the best combination of design variables to reduce the stress concentration. Multivariable linear regression (MLR) is established to model the relationship between the design variables and the stress response. In addition, to enhance the predictive efficiency for predicting, a radial basic function (RBF) neural network is used for this relationship. The effectiveness of all models is compared using statistical methods. It is evident that the relationship derived from RBF neural network is more accurate than that derived from MLR models. The confirmation experiments are conducted to verify the predicted results. The combined methodology in this paper is likely be used for various practical applications.
机译:柔性轴承与高精度机械手,执行器和定位平台显着相关。本文针对此类应用设计了柔性轴承。柔性轴承的寿命受应力集中的影响非常敏感。 Taguchi方法用于找到设计变量的最佳组合以减少应力集中。建立多变量线性回归(MLR)以对设计变量和应力响应之间的关系进行建模。另外,为了提高预测的预测效率,将径向基本函数(RBF)神经网络用于此关系。使用统计方法比较所有模型的有效性。显然,从RBF神经网络得出的关系比从MLR模型得出的关系更准确。进行确认实验以验证预测结果。本文中的组合方法可能会用于各种实际应用。

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