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A survey on knowledge transfer for manufacturing data analytics

机译:制造数据分析知识转移调查

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Data analytics techniques have been used for numerous manufacturing applications in various areas. A common assumption of data analytics models is that the environment that generates data is stationary, that is, the feature (or label) space or distribution of the data does not change over time. However, in the real world, this assumption is not valid especially for manufacturing. In non-stationary environments, the accuracy of the model decreases over time, so the model must be retrained periodically and adapted to the corresponding environment (s). Knowledge transfer for data analytics is an approach that trains a model with knowledge extracted from data or model. Knowledge transfer can be used when adapting to a new environment, while reducing or eliminating degradation in the accuracy of the model. This paper surveys knowledge transfer methods that have been widely used in various applications, and investigates the applicability of these methods for manufacturing problems. The surveyed knowledge transfer methods are analyzed from three viewpoints: types of changes in data properties, availability of labeled data, and sources of knowledge. In addition, we categorize events that cause non stationary environments in manufacturing, and present a mechanism to enable practitioners to select the appropriate methods for their manufacturing data analytics applications among the surveyed knowledge transfer methods. The mechanism includes the steps 1) to detect changes in data properties, 2) to define source and target, and 3) to select available knowledge transfer methods. By providing comprehensive information, this paper will support researchers to adopt knowledge transfer in manufacturing.
机译:数据分析技术已用于各个领域的许多制造应用。数据分析模型的共同假设是生成数据的环境是静止的,即,数据(或标签)空间或数据的分布不会随时间而变化。然而,在现实世界中,这种假设特别适用于制造。在非静止环境中,模型的准确性随着时间的推移而降低,因此必须定期再次再冻干模型并适应相应的环境。数据分析的知识转移是一种方法,该方法列举了从数据或模型中提取的知识的模型。在适应新环境时,可以使用知识转移,同时减少或消除模型的准确性的降级。本文调查了已广泛应用于各种应用的知识转移方法,并调查这些方法的制造问题的适用性。从三个观点分析了调查的知识转移方法:数据属性的变化类型,标记数据的可用性以及知识源。此外,我们在制造中归类导致非静止环境的事件,并提出了一种机制,使从业者能够在调查的知识转移方法中选择制造数据分析应用的适当方法。该机制包括步骤1)以检测数据属性的变化,2)来定义源和目标,以及3)以选择可用知识传输方法。通过提供全面的信息,本文将支持研究人员在制造业中采取知识转移。

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