基于 GA-LSTM 的桁架机器人热误差建模方法

Long Li, Binyang Chen, Jiangli Yu
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引用次数: 0

摘要

目的 敏感温度测量点的选择是热误差建模和补偿的前提。然而,大多数敏感测温点选择方法都没有考虑热敏感点的变化对热误差建模和补偿的影响。设计/方法/途径以桁架机器人为实验对象,采用有限元法构建桁架机器人仿真模型,根据仿真模型设计温度测点布置方案,采集温度和热误差数据。研究结果通过与传统固定敏感测温点的热误差建模方法比较,证明本文提出的方法在敏感测温点的处理上更加灵活,预测精度更加稳定。独创性/价值本文提出的灰色注意力-长短期记忆(GA-LSTM)热误差预测模型,在长期处理过程中可以减少热敏感点的变异性对热误差建模精度的影响,提高热误差预测模型的精度,具有一定的应用价值。对热误差补偿预测具有指导意义。
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Thermal error modeling method of truss robot based on GA-LSTM

Purpose

The selection of sensitive temperature measurement points is the premise of thermal error modeling and compensation. However, most of the sensitive temperature measurement point selection methods do not consider the influence of the variability of thermal sensitive points on thermal error modeling and compensation. This paper considers the variability of thermal sensitive points, and aims to propose a sensitive temperature measurement point selection method and thermal error modeling method that can reduce the influence of thermal sensitive point variability.

Design/methodology/approach

Taking the truss robot as the experimental object, the finite element method is used to construct the simulation model of the truss robot, and the temperature measurement point layout scheme is designed based on the simulation model to collect the temperature and thermal error data. After the clustering of the temperature measurement point data is completed, the improved attention mechanism is used to extract the temperature data of the key time steps of the temperature measurement points in each category for thermal error modeling.

Findings

By comparing with the thermal error modeling method of the conventional fixed sensitive temperature measurement points, it is proved that the method proposed in this paper is more flexible in the processing of sensitive temperature measurement points and more stable in prediction accuracy.

Originality/value

The Grey Attention-Long Short Term Memory (GA-LSTM) thermal error prediction model proposed in this paper can reduce the influence of the variability of thermal sensitive points on the accuracy of thermal error modeling in long-term processing, and improve the accuracy of thermal error prediction model, which has certain application value. It has guiding significance for thermal error compensation prediction.

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