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A Novel Approach to Condition Monitoring of the Cutting Process Using Recurrent Neural Networks

机译:一种新的方法对使用复发神经网络的切割过程的方法

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摘要

Condition monitoring is a fundamental part of machining, as well as other manufacturing processes where, generally, there are parts that wear out and have to be replaced. Devising proper condition monitoring has been a concern of many researchers, but there is still a lack of robustness and efficiency, most often hindered by the system’s complexity or otherwise limited by the inherent noisy signals, a characteristic of industrial processes. The vast majority of condition monitoring approaches do not take into account the temporal sequence when modelling and hence lose an intrinsic part of the context of an actual time-dependent process, fundamental to processes such as cutting. The proposed system uses a multisensory approach to gather information from the cutting process, which is then modelled by a recurrent neural network, capturing the evolutive pattern of wear over time. The system was tested with realistic cutting conditions, and the results show great effectiveness and accuracy with just a few cutting tests. The use of recurrent neural networks demonstrates the potential of such an approach for other time-dependent industrial processes under noisy conditions.
机译:状态监测是加工的基本部分,以及其他制造工艺,通常,有些部件磨损并且必须更换。设计了适当的条件监测是许多研究人员的关注,但仍然缺乏稳健性和效率,最常受到系统的复杂性或受到固有的嘈杂信号的影响,是工业过程的特征的阻碍。绝大多数条件监测方法在建模时,不会考虑时间序列,从而丢失实际时间依赖过程的内在部分,对切割等过程的基础。所提出的系统使用多症方法来收集来自切割过程的信息,然后通过经常性神经网络建模,随着时间的推移,捕获磨损的发展模式。该系统进行了现实的切割条件,结果表现出很大的有效性和准确性,只需几个切割测试。经常性神经网络的使用表明,在嘈杂的条件下对其他时间依赖性工业过程进行这种方法的潜力。

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