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Hybrid data-driven physics-based model fusion framework for tool wear prediction

机译:基于混合数据驱动的基于物理的刀具磨损预测模型融合框架

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摘要

An integral part of modern manufacturing process management is to acquire useful information from machining processes to monitor machine and tool condition. Various models have been introduced to detect, classify, and predict tool wear, as a key parameter of the machining process. In more recent developments, sensor-based approaches have been attempted to infer the tool wear condition from real-time processing of the measurement data. Experiments show that the physics-based prediction models can include large uncertainties. Likewise, the measurement-based (or sensor-based) inference techniques are affected by sensor noise and measurement model uncertainties. To manage uncertainties and noise of both methods, a hybrid framework is proposed to fuse together the results of the prediction model and the measurement-based inference data in a stepwise manner. The fusion framework is an extension to the regularized particle filtering technique, used to facilitate updating the state prediction with a numerical inference model, when measurement models alone are not satisfactory. The results show significant improvement in tool wear state estimation, reducing the prediction errors by almost half, compared to the prediction model and sensor-based monitoring method used independently.
机译:现代制造过程管理的一个组成部分是从加工过程中获取有用的信息来监控机器和工具条件。已经引入了各种模型来检测,分类和预测工具磨损,作为加工过程的关键参数。在更新的发展中,已经尝试从测量数据的实时处理推断出基于传感器的方法。实验表明,基于物理的预测模型可以包括大的不确定性。同样地,基于测量的(或基于传感器的)推理技术受传感器噪声和测量模型不确定性的影响。为了管理两种方法的不确定性和噪声,提出了一种混合框架以逐步地将预测模型和基于测量的推断数据的结果融合在一起。融合框架是正规化粒子滤波技术的扩展,用于促进用数值推理模型更新状态预测,当单独的测量模型不令人满意时。结果表现出刀具磨损状态估计的显着改善,与独立使用的预测模型和基于传感器的监测方法相比,几乎一半的预测误差降低了预测误差。

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