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Research on a Real-Time Monitoring Method for the Wear State of a Tool Based on a Convolutional Bidirectional LSTM Model

机译:基于卷积双向LSTM模型的刀具磨损状态实时监测方法研究

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To monitor the tool wear state of computerized numerical control (CNC) machining equipment in real time in a manufacturing workshop, this paper proposes a real-time monitoring method based on a fusion of a convolutional neural network (CNN) and a bidirectional long short-term memory (BiLSTM) network with an attention mechanism (CABLSTM). In this method, the CNN is used to extract deep features from the time-series signal as an input, and then the BiLSTM network with a symmetric structure is constructed to learn the time-series information between the feature vectors. The attention mechanism is introduced to self-adaptively perceive the network weights associated with the classification results of the wear state and distribute the weights reasonably. Finally, the signal features of different weights are sent to a Softmax classifier to classify the tool wear state. In addition, a data acquisition experiment platform is developed with a high-precision CNC milling machine and an acceleration sensor to collect the vibration signals generated during tool processing in real time. The original data are directly fed into the depth neural network of the model for analysis, which avoids the complexity and limitations caused by a manual feature extraction. The experimental results show that, compared with other deep learning neural networks and traditional machine learning network models, the model can predict the tool wear state accurately in real time from original data collected by sensors, and the recognition accuracy and generalization have been improved to a certain extent.
机译:为了实时监测数控数控加工设备在制造车间的刀具磨损状态,提出了一种基于卷积神经网络(CNN)和双向长短距离融合的实时监测方法。注意机制(CABLSTM)的长期记忆(BiLSTM)网络。在这种方法中,使用CNN从时间序列信号中提取深度特征作为输入,然后构建具有对称结构的BiLSTM网络以学习特征向量之间的时间序列信息。引入注意机制以自适应地感知与磨损状态的分类结果关联的网络权重,并合理地分配权重。最后,将不同权重的信号特征发送到Softmax分类器以对工具磨损状态进行分类。此外,还开发了具有高精度CNC铣床和加速度传感器的数据采集实验平台,以实时收集刀具加工过程中产生的振动信号。原始数据直接输入到模型的深度神经网络中进行分析,避免了人工特征提取带来的复杂性和局限性。实验结果表明,与其他深度学习神经网络和传统的机器学习网络模型相比,该模型可以从传感器采集的原始数据中实时准确地预测刀具磨损状态,并将识别精度和泛化能力提高到在一定程度上。

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