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Original Articles

Transfer learning for aluminium extrusion electricity consumption anomaly detection via deep neural networks

ORCID Icon, , , &
Pages 396-405 | Received 12 May 2016, Accepted 30 Jul 2017, Published online: 25 Aug 2017
 

Abstract

Effective anomaly detection can reduce the electricity consumption and carbon emissions in aluminium extrusion processes. The following two steps identify anomalies: electricity consumption forecasting and anomaly detection. Data-driven modelling is typical paradigm for building an accurate forecasting model. For a new extruding machine, there is insufficient extruded data for model training. The research objective of this work is to determine whether a forecasting model can be trained by transferring knowledge from a data-sufficient domain to a data-insufficient domain. A shared connected deep neural network is proposed for electricity consumption time-series anomaly forecasting. Anomalies are detected by the difference of predicted and measured values at a confidence interval. The experimental results show that the proposed approach can identify electricity anomaly events in real time. Furthermore, it is shown that transferring learning knowledge between domains significantly improves the forecasting results.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work was supported by the Guangdong Province key scientific and technological project: [Grant Number 2016B010126006], Guangdong Province key scientific and technological project: [Grant Number 2016A010102018] and Guangdong Natural Science Foundation: [Grant Number 2015A030310340].

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