CNN based analogic cellular computing is a unified paradigm for universal spatio-temporal computation with several applications in a large number of different fields of research. By endowing CNN with local memory, control, and communication circuitry, many different hardware architectures with stored programmability, showing an enormous computing power - trillion of operations per second may be executed on a single chip -, have been realized. The complex spatio-temporal dynamics emerging in certain CNN may lead to the development of more efficient information processing methods as compared to conventional strategies. Memristors exhibit a rich variety of nonlinear behaviours, occupy a negligible amount of integrated circuit area, consume very little power, are suited to a massivelyparallel data flow, and may combine data storage with signal processing. As a result, the use of memristors in future CNNbased computing structures may improve and/or extend the functionalities of state-of-the art hardware architectures. This contribution provides a detailed analysis of the system-theoretic model of a tantalum oxide memristor, in view of its potential adoption for the implementation of synaptic operators in CNN architectures.

Fading memory effects in a memristor for Cellular Nanoscale Network applications / Ascoli, A; Tetzlaff, R; Chua, Lo; Strachan, Jp; Williams, Rs. - ELETTRONICO. - (2016), pp. 421-425. (Intervento presentato al convegno IEEE Conference & Exhibition on Design, Automation & Test in Europe (DATE) tenutosi a Dresden (Germany) nel 14-18 March 2016) [10.3850/9783981537079_0977].

Fading memory effects in a memristor for Cellular Nanoscale Network applications

Ascoli A;
2016

Abstract

CNN based analogic cellular computing is a unified paradigm for universal spatio-temporal computation with several applications in a large number of different fields of research. By endowing CNN with local memory, control, and communication circuitry, many different hardware architectures with stored programmability, showing an enormous computing power - trillion of operations per second may be executed on a single chip -, have been realized. The complex spatio-temporal dynamics emerging in certain CNN may lead to the development of more efficient information processing methods as compared to conventional strategies. Memristors exhibit a rich variety of nonlinear behaviours, occupy a negligible amount of integrated circuit area, consume very little power, are suited to a massivelyparallel data flow, and may combine data storage with signal processing. As a result, the use of memristors in future CNNbased computing structures may improve and/or extend the functionalities of state-of-the art hardware architectures. This contribution provides a detailed analysis of the system-theoretic model of a tantalum oxide memristor, in view of its potential adoption for the implementation of synaptic operators in CNN architectures.
2016
978-3-9815370-7-9
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2988423