基于机理-数据融合的刀具磨损在线监测方法研究

Investigation on tool wear monitoring method based on mechanism-data fusion

  • 摘要: 针对现有刀具磨损监测方法在复杂工况下适应性差、数据获取不完整、模型泛化能力弱等问题,提出一种融合机理模型与数据驱动模型的刀具磨损在线监测方法。首先,通过构建数字孪生数据采集与虚拟建模平台,实时采集加工过程中的振动信号与磨损数据;其次,从几何、物理、规则和行为4个维度构建数字孪生机理模型,同时将自注意力机制(self-attention mechanism)融入时序卷积网络(temporal convolutional network, TCN)搭建数据驱动模型,实现对传感器信号的深层特征提取。最后,通过粒子滤波(particle filter)算法对机理模型与数据驱动模型进行融合,提升模型在复杂加工环境中的稳定性和预测精度。实验结果表明,该方法所获得的磨损预测值与实测值高度吻合,验证了其在磨损监测方面的有效性与准确性。

     

    Abstract: To address the challenges of poor adaptability, incomplete data acquisition, and weak generalization in existing tool wear monitoring methods under complex working conditions, an online monitoring approach that integrates a mechanistic model with a data-driven model is proposed. Firstly, a digital twin platform for data acquisition and virtual modeling is established to collect vibration signals and wear data in real time during machining. Secondly, a digital twin mechanistic model is developed from four dimensions, namely geometry, physics, rules, and behavior. Concurrently, a data-driven model is constructed by embedding a self-attention mechanism into a temporal convolutional network (TCN) to extract deep features from sensor signals. Finally, a particle filter algorithm fuses the mechanistic and data-driven models, which enhances the model's robustness and prediction accuracy in complex machining environments. Experimental results demonstrate that the wear predictions obtained by the proposed method are in close agreement with actual measurements, confirming its effectiveness and accuracy for wear monitoring.

     

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