Positioning error estimation models for horizontal-distributed PUU parallel mechanism

J. Ke, Yu-Jen Wang, Jhy-Cherng Tsai
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Abstract

In this paper, two models were proposed to estimate the positioning error of a 3-translational prismatic-universal-universal parallel kinematic mechanism. The two models were a kinematic error model (KEM) and a backpropagation neural network (BPNN) model, respectively. The KEM was constructed by incorporating three translational joint errors into the ideal kinematic model to describe the errors that occur during machining or assembly. Additionally, a sensitivity analysis was presented for each error parameter. The BPNN model was constructed to establish the relationship between the position of the end effector, the posture of each link, and the positioning error of the end effector using a neural network approach. Moreover, a hybrid method was proposed to decrease the final estimated residual error. The average errors of the KEM and BPNN model were 35% and 15% of the original error, respectively. The hybrid model reduced the final average error to less than 10% of its original value.
水平分布 PUU 并行机制的定位误差估计模型
本文提出了两个模型来估算三跨棱柱-通用-通用并联运动机构的定位误差。这两个模型分别是运动误差模型(KEM)和反向传播神经网络(BPNN)模型。KEM 是通过将三个平移关节误差纳入理想运动学模型来构建的,以描述加工或装配过程中出现的误差。此外,还对每个误差参数进行了灵敏度分析。构建了 BPNN 模型,利用神经网络方法建立了末端效应器的位置、每个链接的姿态和末端效应器定位误差之间的关系。此外,还提出了一种混合方法来减少最终估计的残余误差。KEM 和 BPNN 模型的平均误差分别为原始误差的 35% 和 15%。混合模型则将最终平均误差降低到原始误差的 10%以下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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