Proceedings Article10.1109/ICM.2010.5696142
Memristor based STDP learning network for position detection
Idongesit Ebong,Pinaki Mazumder +1 more
- 01 Dec 2010
- pp 292-295
21
TL;DR: This work highlights three basic learning rules - winner-take-all (WTA), spike timing dependent plasticity (STDP), and inhibition of return (IOR) and gives a design example implementing WTA combined with STDP in a position detector.
read more
Abstract: Most neural networks have a basic competitive learning rule on top of a more involved processing algorithm. This work highlights three basic learning rules - winner-take-all (WTA), spike timing dependent plasticity (STDP), and inhibition of return (IOR). It also gives a design example implementing WTA combined with STDP in a position detector. A CMOS and an MMOST (Memristor-MOS Technology) design simulation results are compared on the bases of power, area, and noise handling capabilities. Design and layout was done in 130 nm IBM process for CMOS, and the HSPICE model files for the process were used to simulate the CMOS part of the MMOST design. CMOS consumes 2.9×10−4cm2 area, 55 µW max power, and requires a 3 dB SNR. On the other hand, the MMOST design consumes 6×10−5cm2, 15 µW max power, and requires a 4.8 dB SNR.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
•Posted Content
A Survey of Neuromorphic Computing and Neural Networks in Hardware.
Catherine D. Schuman,Thomas E. Potok,Robert M. Patton,J. Douglas Birdwell,Mark Edward Dean,Garrett S. Rose,James S. Plank +6 more
TL;DR: An exhaustive review of the research conducted in neuromorphic computing since the inception of the term is provided to motivate further work by illuminating gaps in the field where new research is needed.
686
Memristors: Devices, Models, and Applications
Pinaki Mazumder,Rainer Waser +1 more
- 01 Jan 2012
TL;DR: The memristor (memory + resistor) as discussed by the authors was proposed as the fourth basic circuit element by Leon Chua and Sung Mo Kang in 1971, and it has been shown to have a nonlinear resistance that can be memorized indefinitely by controlling flow of the electrical charge or the magnetic flux.
110
General memristor with applications in multilayer neural networks
TL;DR: A unified window function to describe a general memristor with restrictions of its parameters given is proposed and demonstrates high validity and accuracy.
107
Material Memristive Device Circuits with Synaptic Plasticity: Learning and Memory
Victor Erokhin,Tatiana Berzina,Paolo Camorani,Anteo Smerieri,Dimitris Vavoulis,Jianfeng Feng,Jianfeng Feng,Marco Fontana +7 more
TL;DR: The first evidence that memristive device-based organic materials show adaptive behavior similar to biological cognitive systems is presented, using learning in the feeding neural network of the pond snail, Lymnaea stagnalis, as a specific biological reference.
97
References
The missing memristor found
TL;DR: It is shown, using a simple analytical example, that memristance arises naturally in nanoscale systems in which solid-state electronic and ionic transport are coupled under an external bias voltage.
Nanoionics-based resistive switching memories
TL;DR: A coarse-grained classification into primarily thermal, electrical or ion-migration-induced switching mechanisms into metal-insulator-metal systems, and a brief look into molecular switching systems is taken.
4.9K
Reproducible switching effect in thin oxide films for memory applications
TL;DR: In this article, it was shown that positive or negative voltage pulses can switch the resistance of the oxide films between a low- and a high-impedance state in times shorter than 100 ns.
1.3K
•Journal Article
SPICE Model of Memristor with Nonlinear Dopant Drift
TL;DR: It is shown that the hitherto published approaches to the modeling of boundary conditions need not conform with the requirements for the behavior of a practical circuit element, and the described SPICE model of the memristor is constructed as an open model, enabling additional modifications of non-linear boundary conditions.
1.2K
CAVIAR: A 45k Neuron, 5M Synapse, 12G Connects/s AER Hardware Sensory–Processing– Learning–Actuating System for High-Speed Visual Object Recognition and Tracking
R. Serrano-Gotarredona,M. Oster,P. Lichtsteiner,Alejandro Linares-Barranco,R. Paz-Vicente,F. Gomez-Rodriguez,Luis A. Camunas-Mesa,R Berner,M. Rivas-Perez,Tobi Delbruck,Shih-Chii Liu,Rodney J. Douglas,Philipp Hafliger,Gabriel Jimenez-Moreno,A.C. Ballcels,Teresa Serrano-Gotarredona,A.J. Acosta-Jimenez,Bernabe Linares-Barranco +17 more
TL;DR: CAVIAR is a massively parallel hardware implementation of a spike-based sensing-processing-learning-actuating system inspired by the physiology of the nervous system that achieves millisecond object recognition and tracking latencies.