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Communication Dans Un Congrès Année : 2022

Unknown-length motif discovery methods in environmental monitoring time series

Résumé

The search for information of interest in massive time series is crucial in many industrial applications. Companies need their data to be analyzed or modeled in real time, which often requires to extract some patterns, also referred as motifs. However, for diverse and ever more signals, human expertise is overwhelmed by time and by huge amount of data. It is the case for environmental monitoring where it is question to detect radiological phenomena from environmental signals. In this paper, we propose an unsupervised and unknown length motif discovery method based on the Matrix Profile with a low computational cost. Its performance is evaluated on a dataset of simulated radiological signals dedicated to environmental monitoring, and compared to a similarity DTW based method and to a classical standard deviation based method. The advantages and drawbacks of each method are highlighted in terms of performance, runtime, accuracy and robustness to different types of noisy signals.
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Dates et versions

hal-03866092 , version 1 (22-11-2022)

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Lisa Poirier-Herbeck, Elisabeth Lahalle, Nicolas Saurel, Sylvie Marcos. Unknown-length motif discovery methods in environmental monitoring time series. 2022 International Conference on Electrical, Computer and Energy Technologies (ICECET), Jul 2022, Prague, Czech Republic. pp.1-5, ⟨10.1109/ICECET55527.2022.9873093⟩. ⟨hal-03866092⟩
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