Energy Informatics (Sep 2022)

A framework for researching energy optimization of factory operations

  • Benedikt Grosch,
  • Heiko Ranzau,
  • Bastian Dietrich,
  • Thomas Kohne,
  • Daniel Fuhrländer-Völker,
  • Johannes Sossenheimer,
  • Martin Lindner,
  • Matthias Weigold

DOI
https://doi.org/10.1186/s42162-022-00207-6
Journal volume & issue
Vol. 5, no. S1
pp. 1 – 13

Abstract

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Abstract Energy optimization of factory operations has gained increasing importance over recent years since it is understood as one way to counteract climate change. At the same time, the number of research teams working on energy-optimized factory operations has also increased. While many tools are useful in this area, our team has recognized the importance of a comprehensive framework to combine functionality for optimization, simulation, and communication with devices in the factory. Therefore, we developed a framework that provides a standardized interface to research energy-optimized factory operations with a rolling horizon approach. The optimization part of the framework is based on the OpenAI gym environment. The framework also provides connectors for multiple communication protocols including Open Platform Communication Unified Architecture and Modbus via Transmission Control Protocol. These facilities can be utilized to implement rolling horizon optimizations for factory systems easily and directly control devices in the factory with the optimization results. In this article, we present the framework and show some examples to prove the effectiveness of our approach.

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