Detecting Seasonal Dependencies in Production Lines for Forecast Optimization

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2022-11-28 DOI:10.1016/j.bdr.2022.100335
Gerold Hoelzl , Sebastian Soller , Matthias Kranz
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Abstract

Huge amounts of data are produced inside an industrial production plant every minute. This data is getting more accessible by higher network and computing capabilities. This poses an opportunity to apply methods in real time to support the reliability of production machines. In theory every time series, that is currently monitored by for a breach of thresholds, can be extended with a forecast method. Classical approaches, such as ARIMA and Exponential Smoothing can be used for forecasting. To describe the signal and boost the forecast results we use a clustering method to group each unknown data stream in a seasonality class. This seasonality classes can be used for insight into intra and inter group behaviour between machines and add causality to factory wide correlations. We collected 10000 multiple day segments of multiple identical and different machines. We manually hand labelled the data segments for their seasonality pattern to compare and explain the clustering results. Classes, obtained through clustering, are used to adapt each single forecast model for every machine. For the forecast method we could show improved results by selecting the correct seasonality for each data stream.

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为预测优化检测生产线的季节相关性
工业生产工厂每分钟都会产生大量的数据。通过更高的网络和计算能力,这些数据变得更容易访问。这为实时应用方法来支持生产机器的可靠性提供了机会。理论上,每一个时间序列,目前监测的突破阈值,可以扩展与预测方法。经典的方法,如ARIMA和指数平滑可以用于预测。为了描述信号并增强预测结果,我们使用聚类方法将每个未知数据流分组在季节性类中。这种季节性类可以用于洞察机器之间的组内和组间行为,并将因果关系添加到工厂范围的相关性中。我们收集了多个相同和不同机器的10000多个日段。我们手动标记数据段的季节性模式,以比较和解释聚类结果。通过聚类得到的类用于适应每台机器的单个预测模型。对于预测方法,我们可以通过为每个数据流选择正确的季节性来显示改进的结果。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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