| Literature DB >> 32601451 |
Xinyi Li1, Jianshi Tang1,2, Qingtian Zhang1, Bin Gao1,2, J Joshua Yang3, Sen Song4, Wei Wu1, Wenqiang Zhang1, Peng Yao1, Ning Deng1,2, Lei Deng5, Yuan Xie5,6, He Qian1,2, Huaqiang Wu7,8.
Abstract
In the nervous system, dendrites, branches of neurons that transmit signals between synapses and soma, play a critical role in processing functions, such as nonlinear integration of postsynaptic signals. The lack of these critical functions in artificial neural networks compromises their performance, for example in terms of flexibility, energy efficiency and the ability to handle complex tasks. Here, by developing artificial dendrites, we experimentally demonstrate a complete neural network fully integrated with synapses, dendrites and soma, implemented using scalable memristor devices. We perform a digit recognition task and simulate a multilayer network using experimentally derived device characteristics. The power consumption is more than three orders of magnitude lower than that of a central processing unit and 70 times lower than that of a typical application-specific integrated circuit chip. This network, equipped with functional dendrites, shows the potential of substantial overall performance improvement, for example by extracting critical information from a noisy background with significantly reduced power consumption and enhanced accuracy.Mesh:
Substances:
Year: 2020 PMID: 32601451 DOI: 10.1038/s41565-020-0722-5
Source DB: PubMed Journal: Nat Nanotechnol ISSN: 1748-3387 Impact factor: 39.213