Skip to main content

Reduction and IR-drop compensations techniques for reliable neuromorphic computing systems

Publication ,  Conference
Liu, B; Li, H; Chen, Y; Li, X; Huang, T; Wu, Q; Barnell, M
Published in: IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad
January 5, 2015

Neuromorphic computing system (NCS) is a promising architecture to combat the well-known memory bottleneck in Von Neumann architecture. The recent breakthrough on memristor devices made an important step toward realizing a low-power, small-footprint NCS on-A-chip. However, the currently low manufacturing reliability of nano-devices and the voltage IR-drop along metal wires and memristors arrays severely limits the scale of me-mristor crossbar based NCS and hinders the design scalability. In this work, we propose a novel system reduction scheme that significantly lowers the required dimension of the memristor crossbars in NCS while maintaining high computing accuracy. An IR-drop compensation technique is also proposed to overcome the adverse impacts of the wire resistance and the sneak-path problem in large memristor crossbar designs. Our simulation results show that the proposed techniques can improve computing accuracy by 27.0% and 38.7% less circuit area compared to the original NCS design.

Duke Scholars

Published In

IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad

DOI

ISSN

1092-3152

Publication Date

January 5, 2015

Volume

2015-January

Issue

January

Start / End Page

63 / 70
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Liu, B., Li, H., Chen, Y., Li, X., Huang, T., Wu, Q., & Barnell, M. (2015). Reduction and IR-drop compensations techniques for reliable neuromorphic computing systems. In IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad (Vol. 2015-January, pp. 63–70). https://doi.org/10.1109/ICCAD.2014.7001330
Liu, B., H. Li, Y. Chen, X. Li, T. Huang, Q. Wu, and M. Barnell. “Reduction and IR-drop compensations techniques for reliable neuromorphic computing systems.” In IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad, 2015-January:63–70, 2015. https://doi.org/10.1109/ICCAD.2014.7001330.
Liu B, Li H, Chen Y, Li X, Huang T, Wu Q, et al. Reduction and IR-drop compensations techniques for reliable neuromorphic computing systems. In: IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad. 2015. p. 63–70.
Liu, B., et al. “Reduction and IR-drop compensations techniques for reliable neuromorphic computing systems.” IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad, vol. 2015-January, no. January, 2015, pp. 63–70. Scopus, doi:10.1109/ICCAD.2014.7001330.
Liu B, Li H, Chen Y, Li X, Huang T, Wu Q, Barnell M. Reduction and IR-drop compensations techniques for reliable neuromorphic computing systems. IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad. 2015. p. 63–70.

Published In

IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad

DOI

ISSN

1092-3152

Publication Date

January 5, 2015

Volume

2015-January

Issue

January

Start / End Page

63 / 70