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A hybrid information model based on long short-term memory network for tool condition monitoring

机译:一种基于长短期内存网络的混合信息模型,用于工具条件监控

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摘要

Excessive tool wear leads to the damage and eventual breakage of the tool, workpiece, and machining center. Therefore, it is crucial to monitor the condition of tools during processing so that appropriate actions can be taken to prevent catastrophic tool failure. This paper presents a hybrid information system based on a long short-term memory network (LSTM) for tool wear prediction. First, a stacked LSTM is used to extract the abstract and deep features contained within the multi-sensor time series. Subsequently, the temporal features extracted are combined with process information to form a new input vector. Finally, a nonlinear regression model is designed to predict tool wear based on the new input vector. The proposed method is validated on both NASA Ames milling data set and the 2010 PHM Data Challenge data set. Results show the outstanding performance of the hybrid information model in tool wear prediction, especially when the experiments are run under various operating conditions.
机译:过度的工具磨损导致工具,工件和加工中心的损坏和最终破损。因此,监测处理过程中的工具条件至关重要,以便可以采取适当的动作以防止灾难性的工具故障。本文介绍了一种基于用于刀具磨损预测的长短期内存网络(LSTM)的混合信息系统。首先,使用堆叠的LSTM来提取多传感器时间序列中包含的抽象和深度特征。随后,提取的时间特征与过程信息组合以形成新的输入向量。最后,设计非线性回归模型以基于新输入向量预测工具磨损。所提出的方法在NASA AMES铣削数据集和2010 PHM数据挑战数据集上验证。结果显示了刀具磨损预测中的混合信息模型的出色性能,尤其是在各种操作条件下运行实验时。

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