TY - JOUR
T1 - Computing of neuromorphic materials : an emerging approach for bioengineering solutions
AU - Prakash, Chander
AU - Gupta, Lovi Raj
AU - Mehta, Amrinder
AU - Vasudev, Hitesh
AU - Tominov, Roman
AU - Korman, Ekaterina
AU - Fedotov, Alexander
AU - Smirnov, Vladimir
AU - Kesari, Kavindra Kumar
N1 - Funding Information:
The reported study was funded by the Russian Federation Government (Agreement No. 075-15-2022-1123).
Publisher Copyright:
© 2023 RSC.
PY - 2023/10/18
Y1 - 2023/10/18
N2 - The potential of neuromorphic computing to bring about revolutionary advancements in multiple disciplines, such as artificial intelligence (AI), robotics, neurology, and cognitive science, is well recognised. This paper presents a comprehensive survey of current advancements in the use of machine learning techniques for the logical development of neuromorphic materials for engineering solutions. The amalgamation of neuromorphic technology and material design possesses the potential to fundamentally revolutionise the procedure of material exploration, optimise material architectures at the atomic or molecular level, foster self-adaptive materials, augment energy efficiency, and enhance the efficacy of brain-machine interfaces (BMIs). Consequently, it has the potential to bring about a paradigm shift in various sectors and generate innovative prospects within the fields of material science and engineering. The objective of this study is to advance the field of artificial intelligence (AI) by creating hardware for neural networks that is energy-efficient. Additionally, the research attempts to improve neuron models, learning algorithms, and learning rules. The ultimate goal is to bring about a transformative impact on AI and better the overall efficiency of computer systems.
AB - The potential of neuromorphic computing to bring about revolutionary advancements in multiple disciplines, such as artificial intelligence (AI), robotics, neurology, and cognitive science, is well recognised. This paper presents a comprehensive survey of current advancements in the use of machine learning techniques for the logical development of neuromorphic materials for engineering solutions. The amalgamation of neuromorphic technology and material design possesses the potential to fundamentally revolutionise the procedure of material exploration, optimise material architectures at the atomic or molecular level, foster self-adaptive materials, augment energy efficiency, and enhance the efficacy of brain-machine interfaces (BMIs). Consequently, it has the potential to bring about a paradigm shift in various sectors and generate innovative prospects within the fields of material science and engineering. The objective of this study is to advance the field of artificial intelligence (AI) by creating hardware for neural networks that is energy-efficient. Additionally, the research attempts to improve neuron models, learning algorithms, and learning rules. The ultimate goal is to bring about a transformative impact on AI and better the overall efficiency of computer systems.
UR - http://www.scopus.com/inward/record.url?scp=85176222873&partnerID=8YFLogxK
U2 - 10.1039/d3ma00449j
DO - 10.1039/d3ma00449j
M3 - Review Article
AN - SCOPUS:85176222873
SN - 2633-5409
VL - 4
SP - 5882
EP - 5919
JO - Materials Advances
JF - Materials Advances
IS - 23
ER -