Pattern discovery in time series using autoencoder in comparison to nonlearning approaches

Author:

Noering Fabian Kai-Dietrich1,Schroeder Yannik2,Jonas Konstantin3,Klawonn Frank451

Affiliation:

1. Volkswagen AG, Wolfsburg, Germany

2. Volkswagen AG, University of Potsdam, Germany

3. Volkswagen AG, Deutsche Bahn, AG, Germany

4. Department of Computer Science, Ostfalia University of Applied Sciences, Wolfenbuettel, Germany

5. Helmholtz Center for Infection Research, Braunschweig, Germany

Abstract

In technical systems the analysis of similar situations is a promising technique to gain information about the system’s state, its health or wearing. Very often, situations cannot be defined but need to be discovered as recurrent patterns within time series data of the system under consideration. This paper addresses the assessment of different approaches to discover frequent variable-length patterns in time series. Because of the success of artificial neural networks (NN) in various research fields, a special issue of this work is the applicability of NNs to the problem of pattern discovery in time series. Therefore we applied and adapted a Convolutional Autoencoder and compared it to classical nonlearning approaches based on Dynamic Time Warping, based on time series discretization as well as based on the Matrix Profile. These nonlearning approaches have also been adapted, to fulfill our requirements like the discovery of potentially time scaled patterns from noisy time series. We showed the performance (quality, computing time, effort of parametrization) of those approaches in an extensive test with synthetic data sets. Additionally the transferability to other data sets is tested by using real life vehicle data. We demonstrated the ability of Convolutional Autoencoders to discover patterns in an unsupervised way. Furthermore the tests showed, that the Autoencoder is able to discover patterns with a similar quality like classical nonlearning approaches.

Publisher

IOS Press

Subject

Artificial Intelligence,Computational Theory and Mathematics,Computer Science Applications,Theoretical Computer Science,Software

Reference36 articles.

1. Yeh CM, Kavantzas N, Keogh E. Matrix Profile VI: Meaningful Multidimensional Motif Discovery. In: IEEE International Conference, 2017, pp. 565-574.

2. Li Y, Lin J, Oates T. Visualizing Variable-Length Time Series Motifs. In: Proceedings of the Twelfth SIAM International Conference on Data Mining, Anaheim, California, USA, 26-28 April 2012, pp. 895-906.

3. Noering FKD, Jonas K, Klawonn F. Assessment and Adaption of Pattern Discovery Approaches for Time Series Under the Requirement of Time Warping. In: Proceedings of 19th Intelligent Data Engineering and Automated Learning (IDEAL’13). vol. 11314 of LNCS. Springer International Publishing, 2018, pp. 285-296.

4. Neural networks for recognizing human activities in home-like environments;Rodríguez Lera;Integrated Computer-Aided Engineering.,2018

5. Asynchronous dual-pipeline deep learning framework for online data stream classification;Lara-Benítez;Integrated Computer-Aided Engineering.,2020

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