Project Details
Description
Today’s Internet-of-Things (IoT) incorporates a complex distributed network of wireless sensors and processors connected to the cloud. These platforms and their data-processing needs are creating a stronger and stronger demand for energy that is not sustainable. At the same time, the increasing consumers demand for IoT electronic devices and their limited lifespan, are significantly contributing to the world’s fastest-growing waste stream, known as electronic waste. To avoid an unsustainable energy cost in this data deluge, disruptive innovations in electronics from material to systems are urgently required. ELEGANCE proposes the development of a radically new, printable and light-operated processing technology specialized for IoT edge-computing applications. The project implements an eco-sustainable approach at component and processes level, where abundant, recyclable eco-friendly materials are employed, targeting a zero environmental footprint strategy. The processor’s building block includes a hybrid stack of an oxide optoelectronic memristor with an electrochromic layer on top exhibiting a unique light-triggered Processing-in-Memory enabling simultaneous IoT energy-efficient computing and visual sensing. In-memory computing schemes, such as crossbar memristor arrays, will be implemented employing low-cost, industrially compatible sustainable printing techniques. This will enable the design of energy efficient neuromorphic and artificial intelligence computing systems optimized for a plethora of consumer applications in the wearable, healthcare, and edge-computing sectors, making ELEGANCE an ambitious and technologically concrete breakthrough for the IoT with high potential for large societal benefits.
Acronym | ELEGANCE |
---|---|
Status | Active |
Effective start/end date | 1/11/24 → 31/10/28 |
Collaborative partners
- VTT Technical Research Centre of Finland
- University of Cambridge
- TEMAS Solutions GmbH
- National Technical University of Athens
- Catalan Institute of Nanoscience and Nanotechnology (ICN2)
- e-Synergeia IKE
- RISE Research Institutes of Sweden
- Centre of Technology and Systems (UNINOVA-CTS)
- University of Zurich
- PragmatIC
- Hellenic Mediterranean University (lead)
Funding category
- Horizon Europe
Keywords
- HORIZON-EIC-2023-PATHFINDERCHALLENGES-01-04
- artificial intelligence
- internet of things
- renewable energy
- sensors