2019
DOI: 10.1007/s10845-019-01499-4
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Multi-source transfer learning of time series in cyclical manufacturing

Abstract: This paper describes a new transfer learning method for modeling sensor time series following multiple different distributions, e.g. originating from multiple different tool settings. The method aims at removing distribution specific information before the modeling of the individual time series takes place. This is done by mapping the data to a new space such that the representations of different distributions are aligned. Domain knowledge is incorporated by means of corresponding parameters, e.g. physical dim… Show more

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Cited by 21 publications
(9 citation statements)
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References 38 publications
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“…In contrast to traditional ML approaches, TL is effective even in instances when the domains, tasks, and distributions used in training and testing are different (Lu et al 2015). To date, TL methods have been applied to many real-world scenarios, including time series forecasting and classification (Zellinger et al 2020), natural language processing (Zeng et al 2019), sentiment analysis and image recognition (Lu et al 2015;Weiss et al 2016;Flynn and Giannetti 2021). In particular, TL has gained popularity in solving image recognition problems due to advances in the field of computer vision and the availability of pre-trained models that have been trained on large image dataset such as ImageNet (Deng et al 2009).…”
Section: Transfer Learning Backgroundmentioning
confidence: 99%
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“…In contrast to traditional ML approaches, TL is effective even in instances when the domains, tasks, and distributions used in training and testing are different (Lu et al 2015). To date, TL methods have been applied to many real-world scenarios, including time series forecasting and classification (Zellinger et al 2020), natural language processing (Zeng et al 2019), sentiment analysis and image recognition (Lu et al 2015;Weiss et al 2016;Flynn and Giannetti 2021). In particular, TL has gained popularity in solving image recognition problems due to advances in the field of computer vision and the availability of pre-trained models that have been trained on large image dataset such as ImageNet (Deng et al 2009).…”
Section: Transfer Learning Backgroundmentioning
confidence: 99%
“…TL has also been applied to other areas, including production modelling of time series in cyclical manufacturing and production planning. For example, a multi-source transfer learning method was proposed in Zellinger et al (2020), for modelling time series signals from sensors having different distributions. In another study, which applied TL to the field of production planning, Huang et al (2019) propose a two-stage transfer learning-based prediction method using both historical production data and real-time order data to improve accuracy and generalization performance when there are insufficient data.…”
Section: Tl In Manufacturingmentioning
confidence: 99%
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“…In this setting, various real-world applications arise, e.g. Wi-Fi localization [5], sentiment analysis [6], aerospace systems design [7], motion detection [8], and cyclical manufacturing [9]. In this work, we focus on the transfer regression problem.…”
Section: Introductionmentioning
confidence: 99%
“…Figure 1 for an illustration. Moment-based algorithms perform particularly well in many practical tasks [21,4,53,65,67,66,30,34,68,42,45,28,63,64,46,44]. Second, by the current scientific discussion about the choice of an appropriate distance function for domain adaptation [8,15,36,37,69,24].…”
mentioning
confidence: 99%