Event detection in marine time series data

Stefan Oehmcke*, Oliver Zielinski, Oliver Kramer

*Corresponding author af dette arbejde
    5 Citationer (Scopus)

    Abstract

    Automatic detection of special events in large data is often more interesting for data analysis than regular patterns. In particular, the processes in multivariate time series data can be better understood, if a deviation from the normal behavior is found. In this work, we apply a machine learning event detection method to a new application in the marine domain. The marine long-term data from the stationary plat- form at Spiekeroog, called Time Series Station, are a challenge, because noise, sensor drifts and missing data complicate analysis of the data. We acquire labels for evaluation with help of experts and test different approaches, which include time context into patterns. The used event detection method is local outlier factor (LOF). To improve results, we apply dimensionality reduction to the data. The analysis of the results shows, that the machine learning techniques can find special events, which are of interest to experts in the field.

    OriginalsprogEngelsk
    TitelKI 2015 : Advances in Artificial Intelligence - 38th Annual German Conference on AI, Proceedings
    RedaktørerSteffen Hölldobler, Markus Krötzsch, Sebastian Rudolph, Rafael Peñaloza
    Antal sider8
    ForlagSpringer Verlag,
    Publikationsdato1 jan. 2015
    Sider279-286
    ISBN (Trykt)9783319244884
    DOI
    StatusUdgivet - 1 jan. 2015
    Begivenhed38th Annual German Conference on Advances in Artificial Intelligence, AI 2015 - Dresden, Tyskland
    Varighed: 21 sep. 201525 sep. 2015

    Konference

    Konference38th Annual German Conference on Advances in Artificial Intelligence, AI 2015
    Land/OmrådeTyskland
    ByDresden
    Periode21/09/201525/09/2015
    Sponsorarago, Etal, HAEC, init, metaphacts, STI
    NavnLecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
    Vol/bind9324
    ISSN0302-9743

    Fingeraftryk

    Dyk ned i forskningsemnerne om 'Event detection in marine time series data'. Sammen danner de et unikt fingeraftryk.

    Citationsformater