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  5. SalaciaML: A Deep Learning Approach for Supporting Ocean Data Quality Control
 
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SalaciaML: A Deep Learning Approach for Supporting Ocean Data Quality Control

Author(s)
Mieruch, Sebastian  
Alfred-Wegener-Institute (AWI), Bremerhaven, Germany  
Demirel, Serdar  
Alfred-Wegener-Institute (AWI), Bremerhaven, Germany  
Simoncelli, Simona  
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Sezione Bologna, Bologna, Italia  
Schlitzer, Reiner  
Alfred-Wegener-Institute (AWI), Bremerhaven, Germany  
Seitz, Steffen  
Chair of Fundamentals of Electrical Engineering, Dresden University of Technology, Dresden, Germany  
Language
English
Obiettivo Specifico
4A. Oceanografia e clima
Status
Published
JCR Journal
JCR Journal
Peer review journal
Yes
Journal
Frontiers in Marine Science  
Issue/vol(year)
/8 (2021)
Publisher
Frontiers
Pages (printed)
611742
Date Issued
April 2021
DOI
10.3389/fmars.2021.611742
URI
https://www.earth-prints.org/handle/2122/14722
Subjects
05.06. Methods  
Abstract
We present a skillful deep learning algorithm for supporting quality control of ocean temperature measurements, which we name SalaciaML according to Salacia the roman goddess of sea waters. Classical attempts to algorithmically support and partly automate the quality control of ocean data profiles are especially helpful for the gross errors in the data. Range filters, spike detection, and data distribution checks remove reliably the outliers and errors in the data, still wrong classifications occur. Various automated quality control procedures have been successfully implemented within the main international and EU marine data infrastructures (WOD, CMEMS, IQuOD, SDN) but their resulting data products are still containing data anomalies, bad data flagged as good and vice-versa. They also include visual inspection of suspicious measurements, which is a time consuming activity, especially if the number of suspicious data detected is large. A deep learning approach could highly improve our capabilities to quality assess big data collections and contemporary reducing the human effort. Our algorithm SalaciaML is meant to complement classical automated quality control procedures in supporting the time consuming visually inspection of data anomalies by quality control experts. As a first approach we applied the algorithm to a large dataset from the Mediterranean Sea. SalaciaML has been able to detect correctly more than 90% of all good and/or bad data in 11 out of 16 Mediterranean regions.
Sponsors
This project has received funding from the European Union Horizon 2020 and Seventh Framework Programmes under grant agreement number 730960 SeaDataCloud.
Type
article
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