Big data analytics for proactive industrial decision support

Autor/innen

  • Martin Atzmueller University Of Kassel
  • Benjamin Klöpper Abb Corporate Research Center Germany
  • Hassan Al Mawla Abb Corporate Research Center Germany
  • Benjamin Jäschke University Of Kassel
  • Martin Hollender Abb Corporate Research Center Germany
  • Markus Graube Technische Universität Dresden
  • David Arnu Rapidminer
  • Andreas Schmidt University Of Kassel
  • Sebastian Heinze Technische Universität Dresden
  • Lukas Schorer Abb Corporate Research Center Germany
  • Andreas Kroll University Of Kassel
  • Gerd Stu

DOI:

https://doi.org/10.17560/atp.v58i09.2315

Abstract

Big data technologies offer new opportunities for analyzing historical data generated by process plants. The development of new types of operator support systems (OSS) which help the plant operators during operations and in dealing with critical situations is one of these possibilities. The project FEE has the objective to develop such support functions based on big data analytics of historical plant data. In this contribution, we share our first insights and lessons learned in the development of big data applications and outline the approaches and tools that we developed in the course of the project.

Downloads

Veröffentlicht

30.08.2016

Am häufigsten gelesenen Artikel dieser/dieses Autor/in

1 2 > >>