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Time Series Comparison with Dynamic Time Warping, Convolutional Neural Network and Regression

Time Series Comparison with Dynamic Time Warping, Convolutional Neural Network and Regression
Tagung:

International Conference on Calibration Methods and Automotive Data Analytics

In:

International Conference on Calibration Methods and Automotive Data Analytics

Tagungsort:

Berlin

Herausgeber:

expert Verlag GmbH

Datum:

21./22.05.2019

Ort:

Tübingen

Autoren:

Yu, Y.

Mayer, T.

Knoch, E.-M.

Frey, M.

Gauterin, F.

Jahr:

2019

Seite:

10 - 20

This paper introduces a novel method for comparison of similar time series, especially measurement and simulation data to identify problems in the observed system. It employs the technique for time series segmentation proposed in [1] together with Dynamic Time Warping (DTW) to jointly segment pairs of measurement and simulation time series. Further, a Convolutional Neural Network (CNN) is used to identify the characteristics of segments. It is trained with synthetic data generated by the time series generator presented in [1]. Finally, the essential parameters are estimated with regression. Performance evaluation of each step is conducted and shows a high accuracy. The usage of this method is not restricted to evaluation of measurement and simulation time series, but can be extended to serve the general purpose of sequence data comparison.