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Industrial automation

Industrial automation

Automation relies on the full understanding of the process

Although modern industrial plants can generally be considered as highly automated and partly robotized with a variety of data and control systems, there are still many sectors with manual operations and labor-intensive processes including harsh industrial environments and complex operational processes and productions.

Automation relies on the full understanding of the process to enable automated management and control of the production and operation steps with high flexibility. Conventionally, industrial processes are controlled using sensor information and attempting to hold the process variables constant.

Contact
Nabil Belbachir

DARWIN Research Director DARWIN - Grimstad

nabe@norceresearch.no

+47 401 08 137

Nowadays, however, society seeks high-quality products and high-performance materials. The tolerances are tightened, driving the development of new materials and processes with reduced processability windows. Thus, the conventional industrial automation approach to process design and control needs to be reconsidered, but the attempts are inhibited by poor quality or missing sensor data, e.g. due to failed or faulty instruments or wrong manual inputs. Analyses of process performance are therefore executed rarely and can be unsystematic. Results are rarely incorporated into comprehensive process models and almost never implemented as operational tools. This in turn leads to poor financial gains and slow rates of process and financial improvements, characteristic of several European industries today.

Summing up, industrial automation of complex scenarios needs a systematic integration of domain knowledge with self-learning capabilities for advanced process analytics and customized actuation for reliable automated manipulation. For achieving this ambition, the research group is involved in the development of the following key technologies:

  • Digital twins and virtualized production for process understanding and optimization
  • Advanced sensing, actuation, and cyber-physical systems are capable to operate in a harsh environment
  • Lifelong and self-explainable machine learning (ML) for self-adaptive analytics and decision-making
  • Collaborative robotics smart actuation and safe human-machine-robot interaction

Research Groups

Research Groups
Research Groups