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Condition monitoring and diagnosis of ultrahigh-speed cigarette carton packaging machine based on operational mode recognition

机译:基于操作模式识别的超高速卷烟纸包装机的状态监测与诊断

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Due to the multi-mode characteristic of cigarette carton packaging machine, the traditional monitoring method such as data report and manual observation can not meet the need of high-efficient cigarette production. Based on operational mode recognition, a condition monitoring and diagnosis approach of ultrahigh-speed cigarette carton packaging machine was proposed. The stability factor within a sliding time window and adaptive k-means clustering method was used to partition the operational space and form several steady mode sub-spaces, fully considering the multi-mode characteristic of operation process. The statistical monitoring model was established by utilizing principal component analysis (PCA) for each steady mode sub-space. The mode recognition of online data was realized by using stability factor within the current sliding time window. In steady mode, the matching monitoring model was obtained based on the similarity between the current valid data and each cluster center, then the monitoring statistics of online data was calculated based on the matching monitoring model. When any monitoring statistic exceeds the control limit, the fault cause variable was separated by using contribution plot. At last, the efficacy of the proposed method was illustrated by applying it to ultrahigh-speed cigarette carton packaging machine. Testing result showed that, the proposed method can more timely and effectively detect fault and separate fault cause variable.
机译:由于卷烟纸盒包装机的多模式特性,传统的监测方法如数据报告和手动观察,不能满足高效卷烟生产的需求。基于操作模式识别,提出了超高速卷烟纸包装机的条件监测和诊断方法。滑动时间窗口和自适应k-means聚类方法中的稳定性因子用于分配操作空间并完全考虑操作过程的多模特征,形成若干稳态级子空间。通过利用每个稳定模式子空间利用主成分分析(PCA)来建立统计监测模型。通过在当前滑动时间窗口内使用稳定性因子来实现在线数据的模式识别。在稳定模式下,基于当前有效数据和每个群集中心之间的相似性获得匹配的监视模型,然后基于匹配的监视模型计算在线数据的监视统计信息。当任何监视统计量超过控制限制时,通过使用贡献绘图分隔故障原因变量。最后,通过将其施加到超高速卷烟纸盒包装机来说明所提出的方法的功效。测试结果表明,所提出的方法可以更及时且有效地检测故障和单独的故障原因变量。

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