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Early diagnosis of processing faults based on machine online monitoring

机译:基于机器在线监测的加工故障早期诊断

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Machining is the process that a kind of mechanical device change the dimensions or the performance of the workpiece, which has a great influence on the quality of the component. Manufacturing and processing enterprises always want to improve the passing rate and the life of the machining workpiece and reduce unnecessary costs during processing. This must strictly control machining process based mechanical process systems, however, due to non-ideal conditions of the actual process, the process is unstable, resulting in the quality of the product cannot be controlled during processing. In this paper, we propose a kind of machine fault pre-warning and diagnosis method based online testing of the process to solve this problem that machine fault can cause the quality problems of the workpiece during machining, collecting real-time machine state parameters by the sensor signal, using signal analysis methods such as Fourier transform and wavelet analysis, and analyzing real-time process monitoring data, and classifying data By KNN algorithm, and judging the machine working status and it's fault occurrence, and using LabVIEW to construct of the entire monitoring and controlling environment and to applied to the actual data, and processing and analyzing real-time data in the machining process that can judge the state of the machine, so the faults of the machine can be early found, there, by reducing the failure rate of the workpiece. The research about online numerical control machine fault diagnosis not only real-time judged part that the machine may have faults, but also optimized machining processes of the parts.
机译:加工是一种机械设备的改变的尺寸或工件,这对部件的质量有很大的影响的性能的过程。制造加工企业总是希望提高合格率和加工工件的使用寿命和加工过程中减少不必要的成本。此必须严格控制基于加工过程机械处理系统,但是,由于实际的过程的非理想条件下,该过程是不稳定的,从而导致在加工过程中不能被控制产品的质量。在本文中,我们提出了一种机器故障预警与诊断方法基于在线过程的测试,以解决这个问题,这台机器的故障可能在加工过程中引起工件的质量问题,通过实时采集机器状态参数传感器信号,利用信号分析的方法,如傅立叶变换和小波分析,和分析实时过程监视数据,并且通过KNN算法的数据进行分类,并判断所述机器工作状态和它的故障发生,以及使用LabVIEW到整个的构建体监视和控制环境,并应用于实际数据,并处理和分析在加工过程中,可以判断机的状态的实时数据,因此,机器的故障可早期发现,在那里,由降低了故障率的工件。关于网上数控机床故障诊断研究不仅实时判断部分机器可能有故障,但部分也进行了优化加工工艺。

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