Cellular Nonlinear Networks (CNN) as a powerful paradigm is highly suitable for signal processing of multiple tasks, since they can execute cascaded processing operations in a one-layer array via real-time template updating. Their VLSI implementation by using the conventional CMOS-based integration technology, however, remains a big challenge. The memristive CNN (M-CNN) offers several merits over conventional CNN, such as compactness, nonvolatility, versatility. This paper presents a direct comparison of computing performance between the M-CNN and the conventional CNN for the implementation of a LOGAND operation template using circuit simulation. Our findings show that the M-CNN implementation offers rapid attainment of equilibrium state compared to the CNN implementation. In addition, the result is stored in a nonvolatile manner in the M-CNN whereas the CNN only offers a volatile storage.
Performance Analysis of Memristive-CNN based on a VCM Device Model / Wang, Y; Ascoli, A; Tetzlaff, R; Rana, V; Menzel, S. - ELETTRONICO. - (2022), pp. 1184-1188. (Intervento presentato al convegno 2022 IEEE International Symposium on Circuits and Systems (ISCAS) tenutosi a Austin, TX (USA) nel 27 May 2022 - 01 June 2022) [10.1109/ISCAS48785.2022.9937918].
Performance Analysis of Memristive-CNN based on a VCM Device Model
Ascoli A;
2022
Abstract
Cellular Nonlinear Networks (CNN) as a powerful paradigm is highly suitable for signal processing of multiple tasks, since they can execute cascaded processing operations in a one-layer array via real-time template updating. Their VLSI implementation by using the conventional CMOS-based integration technology, however, remains a big challenge. The memristive CNN (M-CNN) offers several merits over conventional CNN, such as compactness, nonvolatility, versatility. This paper presents a direct comparison of computing performance between the M-CNN and the conventional CNN for the implementation of a LOGAND operation template using circuit simulation. Our findings show that the M-CNN implementation offers rapid attainment of equilibrium state compared to the CNN implementation. In addition, the result is stored in a nonvolatile manner in the M-CNN whereas the CNN only offers a volatile storage.File | Dimensione | Formato | |
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Performance_Analysis_of_Memristive-CNN_based_on_a_VCM_Device_Model.pdf
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https://hdl.handle.net/11583/2988462