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ZnO Tetrapod Network Platform for Neuromorphic Computing (TETRANET)

 

Project no.: 101299992
Project website: https://materials.ktu.edu/tetranet/

Project description:

TetraNET advances neuromorphic computing by developing scalable and eco?friendly ZnO tetrapod networks (TRL 3) that enable energy?efficient in?sensor preprocessing. As traditional computing faces limitations in energy use, scalability, and adaptability, neuromorphic hardware offers a promising low?power alternative. However, current systems often depend on rigid, resource?intensive fabrication methods, limiting flexibility and sustainability. TetraNET addresses this gap by introducing innovative materials and architectures designed for both performance and environmental responsibility.
Disordered neuromorphic networks have shown great potential due to their interconnected, adaptive behavior similar to biological neural systems. While nanoparticle and nanowire networks have demonstrated functional switching and distributed plasticity, each architecture has drawbacks—nanoparticles lack 3D connectivity, whereas nanowires require highly controlled structuring. ZnO tetrapod networks (ZnO?TNs) provide an attractive intermediate solution, naturally forming 3D percolative networks with dense interaction points. Their inherent semiconductive properties and sensitivity to light and electric fields make them especially suited for hybrid sensing?computing applications. Despite their promise, ZnO?TN networks remain largely unexplored in neuromorphic devices. Through interdisciplinary collaboration, training, and secondments, TetraNET supports the development of a skilled research community and strengthens Europe’s position in sustainable neuromorphic computing.

Project funding:

EU Research and Innovation Funding Programme “Horizon Europe”


Project results:

TetraNET explores a new generation of neuromorphic systems by leveraging three-dimensional ZnO tetrapod network architectures for adaptive and distributed computing. The project focuses on bridging the gap between performance and sustainability in emerging hardware by combining novel material approaches with energy-aware design. Through interdisciplinary research, it contributes to advancing low- power intelligent technologies for future sensing and edge applications.

Period of project implementation: 2026-06-01 - 2030-05-31

Project coordinator: Kaunas University of Technology

Project partners: POLITECNICO DI TORINO (POLITO), UAB "Nanoversa", University of Aveiro, UNIVERSITEIT TWENTE, INSTITUTO DE TELECOMUNICACOES

Head:
Simas Račkauskas

Duration:
2026 - 2030

Department:
Institute of Materials Science