There is a newer version of the record available.

Published February 1, 2019 | Version v1

GECCO Industrial Challenge 2019 Dataset: A water quality dataset for the 'Internet of Things: Online Event Detection for Drinking Water Quality Control' competition at the Genetic and Evolutionary Computation Conference 2019, Prague, Czech Republic.

  • 1. Institute for Data Science, Engineering, and Analytics, Technische Hochschule Köln

Description

Dataset  of the 'Internet of Things: Online Event Detection for Drinking Water Quality Control' competition hosted at The Genetic and Evolutionary Computation Conference (GECCO) July 13th-17th 2019, Prague, Czech Republic

 

The task of the competition was to develop an anomaly detection algorithm for a water- and environmental data set.

 

Included in zenodo: 

- dataset of water quality data

- additional material and descriptions provided for the competition

 

The competition was organized by:

F. Rehbach, S. Moritz, T. Bartz-Beielstein (TH Köln)

 

The dataset was provided by:

Thüringer Fernwasserversorgung and IMProvT research project

 

 

Internet of Things: Online Event Detection for Drinking Water Quality Control

 

Description:

For the 8th time in GECCO history, the SPOTSeven Lab is hosting an industrial challenge in cooperation with various industry partners. This years challenge, based on the 2018 challenge, is held in cooperation with "Thüringer Fernwasserversorgung" which provides their real-world data set. The task of this years competition is to develop an anomaly detection algorithm for the water- and environmental data set. Early identification of anomalies in water quality data is a challenging task. It is important to identify true undesirable variations in the water quality. At the same time, false alarm rates have to be very low.


Competition Opens: End of January/Start of February 2019
Final Submission: 30 June 2019

Official webpage:

https://www.th-koeln.de/informatik-und-ingenieurwissenschaften/gecco-challenge-2019_63244.php

 

Files

1_gecco2019_water_quality.csv

Files (15.0 MB)

Name Size Download all
md5:e865a6dd955aae3aae8f3e63efdecf2f
10.8 MB Preview Download
md5:b275c926c9cae26c301cccd173adb748
249.2 kB Preview Download
md5:3eeb15fcaa42c99b5b05b818f8ee74ee
904.7 kB Preview Download
md5:59967286f915abc0c824aaba9a8c1a2e
3.0 MB Preview Download