Energy Efficient Memristor Based on Green‐Synthesized 2D Carbonyl‐Decorated Organic Polymer and Application in Image Denoising and Edge Detection: Toward Sustainable AI

Author:

Pal Pratibha1,Li Hanrui1,Al‐Ajeil Ruba2,Mohammed Abdul Khayum2,Rezk Ayman3,Melinte Georgian4,Nayfeh Ammar3,Shetty Dinesh25,El‐Atab Nazek1ORCID

Affiliation:

1. Smart, Advanced Memory Devices and Applications (SAMA) Laboratory Electrical and Computer Engineering Program Computer Electrical Mathematical Science and Engineering Division King Abdullah University of Science and Technology (KAUST) Thuwal 23955 Kingdom of Saudi Arabia

2. Department of Chemistry Khalifa University of Science & Technology Abu Dhabi 127788 UAE

3. Department of Electrical Engineering Khalifa University of Science & Technology Abu Dhabi 127788 UAE

4. Core Labs King Abdullah University of Science and Technology Thuwal 23955‐6900 Saudi Arabia

5. Center for Catalysis & Separations (CeCaS) Khalifa University of Science & Technology Abu Dhabi 127788 UAE

Abstract

AbstractAccording to the United Nations, around 53 million metric tons of electronic waste is produced every year, worldwide, the big majority of which goes unprocessed. With the rapid advances in AI technologies and adoption of smart gadgets, the demand for powerful logic and memory chips is expected to boom. Therefore, the development of green electronics is crucial to minimizing the impact of the alarmingly increasing e‐waste. Here, it is shown the application of a green synthesized, chemically stable, carbonyl‐decorated 2D organic, and biocompatible polymer as an active layer in a memristor device, sandwiched between potentially fully recyclable electrodes. The 2D polymer's ultramicro channels, decorated with C═O and OH groups, efficiently promote the formation of copper nanofilaments. As a result, the device shows excellent bipolar resistive switching behavior with the potential to mimic synaptic plasticity. A large resistive switching window (103), low SET/RESET voltage of ≈0.5/−1.5 V), excellent device‐to‐device stability and synaptic features are demonstrated. Leveraging the device's synaptic characteristics, its applications in image denoising and edge detection is examined. The results show a reduction in power consumption by a factor of 103 compared to a traditional Tesla P40 graphics processing unit, indicating great promise for future sustainable AI‐based applications.

Funder

King Abdullah University of Science and Technology

Publisher

Wiley

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