一种基于网络结构搜索的不同切削条件下刀具磨损精确预测方法

Jianmin Wang , Yingguang Li , Jiaqi Hua , Changqing Liu , Xiaozhong Hao
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引用次数: 4

摘要

刀具磨损预测是保证零件质量、提高加工效率、降低加工成本的重要手段,在先进制造业中具有重要意义。现有的刀具磨损监测和预测方法主要采用固定架构的神经网络模型,依赖于研究人员的经验,不能保证不同切削条件下的精度。提出了一种基于网络结构搜索的刀具磨损预测方法。可以在不同的切削条件下学习到合适的网络结构。实验表明,与现有方法相比,该方法预测刀具磨损的精度有了较大的提高。
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An accurate tool wear prediction method under different cutting conditions based on network architecture search

Tool wear prediction is of significance in advanced manufacturing industries, as it aims to ensure the quality of parts, improve machining efficiency and reduce machining costs. Existing tool wear monitoring and prediction methods mainly adopt neural network model with fixed architecture, which rely on the researchers’ experience and cannot guarantee accuracy under different cutting conditions. This paper proposes a tool wear prediction method based on network architecture search. which can learn a suitable network structure under different cutting conditions. Experiments shows sufficient improvement in the accuracy of predicting tool wear compared with existing methods.

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