• Welcome
  • News
  • Team
    • Team
    • Alumni
    • Gallery
  • Research
    • Focus
    • Projects
    • Publications
  • Teaching
    • Current Courses
    • Upcoming Courses
    • Open Theses
  • Collaborate

Project EDV-TEK

Clean Technologies
Patent Classification
Novelty Assessment
Impact Assessment
Natural Language Processing
Neural Networks
Identification, emergence, diffusion and exploitation of climate change mitigation technologies.
Published

January 24, 2023

Research

© Anne Gärtner

Project EDV-TEK
  • Clean Technologies
  • Patent Classification
  • Novelty Assessment
  • Impact Assessment
  • Natural Language Processing
  • Neural Networks

Abstract

The EDV-TEK project aims to investigate four key sub-dimensions of technology research, specifically identification, emergence, diffusion, and exploitation, within the context of climate change mitigation technologies.

In terms of identification, the project is utilizing Artificial Intelligence techniques to train Neural Networks that automate the process of patent classification. This field of research is relatively new and thus, the results obtained from different studies are often not comparable.

In the context of emergence, the project is exploring the role of science in technological developments, with a specific focus on measuring the scientific influence and origin of knowledge by examining citations from patents to scientific publications.

Relating to diffusion, the project is using citations in patents as a measure of knowledge flow and knowledge recombination. Furthermore, the study will focus on the interrelatedness of diffusion, impact, and novelty.

As for exploitation, the project is focusing on the commercialization of technologies, using technology startups as the object of study. Research has shown that patents positively influence the performance of startups, yet there is limited knowledge about the explicit technologies and their corresponding novelty level. The EDV-TEK project aims to address this gap by utilizing machine-learning neural networks to analyze the underlying phenomena.

Funding

Funded by the Federal Ministry of Research, Technology and Space

Funded by the European Union

TU Hamburg

 

TU Hamburg

TUHH Institute of Entrepreneurship
Prof. Dr. Christoph Ihl
Am Irrgarten 3
21073 Hamburg
Contact

:   startup.engineer@tuhh.de
:   +49 (0)40 42878-3226
:   LinkedIn
:   Directions
Links    Data Privacy

   Imprint
Built with at