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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Tool wear state prediction based on feature-based transfer learning
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Tool wear state prediction based on feature-based transfer learning

机译:基于基于特征的转移学习的刀具磨损状态预测

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摘要

Accurate identification of the tool wear state during the machining process is of great significance to improve product quality and benefit. The wear states of the same tool type and machining material have similarities during the machining process. By mining the data value of the historical machining process and analyzing the similarity of the procedure, the subsequent machining process can be predicted with the help of transfer learning. Therefore, this study proposes a tool wear prediction scheme based on feature-based transfer learning to realize the accurate prediction of the tool wear state. The genetic algorithm (GA) is used to select a subset of sensor features that are highly correlated with tool wear. Then, the source domain and target domain are constructed on the basis of the selected sensor features of the historical tool and the new tool during the machining process, respectively. In addition, features in the life cycle of the new tool are completed by feature-based transfer learning. After feature transfer, the maximum mean square discrepancy (MMD) method is used to evaluate the similarity of features, and the optimal feature subset is selected according to the evaluation result. Finally, the particle swarm-optimized support vector machine (PSO-SVM) model is applied to predict the tool wear states during the new tool machining. The effectiveness of the proposed tool wear scheme is verified by the cutting force and wear data of the tool life cycle under three different milling parameter combinations. Results with high accuracy show the advantages of the feature-based transfer learning method for tool wear state prediction.
机译:加工过程中刀具磨损状态的准确识别对提高产品质量和效益具有重要意义。同一刀具类型和加工材料在加工过程中的磨损状态具有相似性。通过挖掘历史加工过程的数据值,分析加工过程的相似性,借助迁移学习对后续加工过程进行预测。因此,本研究提出了一种基于特征转移学习的刀具磨损预测方案,以实现对刀具磨损状态的准确预测。遗传算法(GA)用于选择与刀具磨损高度相关的传感器特征子集。然后,根据加工过程中历史刀具和新刀具的选定传感器特征,分别构建源域和目标域。此外,新工具生命周期中的特征通过基于特征的迁移学习来完成。特征转移后,采用最大均方误差(MMD)方法对特征的相似性进行评估,并根据评估结果选择最佳特征子集。最后,应用粒子群优化支持向量机(PSO-SVM)模型预测新刀具加工过程中的刀具磨损状态。通过三种不同铣削参数组合下刀具寿命周期的切削力和磨损数据,验证了所提出刀具磨损方案的有效性。结果表明,基于特征的迁移学习方法在刀具磨损状态预测中具有较高的精度。

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