Neural Network Based Transfer Learning for Robot Path Generation

Houcheng Tang, L. Notash
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Abstract

In this paper, an artificial neural network (ANN) based transfer learning approach of inverse displacement analysis of robot manipulators is studied. ANNs with different structures are applied utilizing data from different end effector paths of a manipulator for training purposes. Four transfer learning methods are proposed by applying pretrained initial parameters. Final training results of ANN with transfer learning are compared with those of ANN with random initialization. To investigate the rate of convergence of data fitting comprehensively, different values of performance targets are defined. The computing epochs and performance measures are compared. It is presented that, depending on the structure of ANN, the proposed transfer learning methods can accelerate the training process and achieve higher accuracy. Depending on the method, the transfer learning improves the performance differently.
基于神经网络的机器人路径生成迁移学习
本文研究了一种基于人工神经网络的机器人机械手逆位移分析迁移学习方法。采用不同结构的人工神经网络,利用机械手不同末端执行器路径的数据进行训练。利用预训练的初始参数,提出了四种迁移学习方法。将迁移学习神经网络的最终训练结果与随机初始化神经网络的训练结果进行比较。为了全面考察数据拟合的收敛速度,定义了不同的性能目标值。比较了计算周期和性能指标。研究表明,根据人工神经网络的结构,所提出的迁移学习方法可以加快训练过程并达到更高的准确率。根据迁移学习方法的不同,迁移学习对性能的提高也不同。
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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