TY - GEN
T1 - Fault resilient physical neural networks on a single chip
AU - Shi, Weidong
AU - Wen, Yuanfeng
AU - Liu, Ziyi
AU - Zhao, Xi
AU - Boumber, Dainis
AU - Vilalta, Ricardo
AU - Xu, Lei
PY - 2014/10/12
Y1 - 2014/10/12
N2 - Device scaling engineering is facing major challenges in producing reliable transistors for future electronic technologies. With shrinking device sizes, the total circuit sensitivity to both permanent and transient faults has increased significantly. Research for fault tolerant processors has primarily focused on the conventional processor architectures. Neural network computing has been employed to solve a wide range of problems. This paper presents a design and implementation of a physical neural network that is resilient to permanent hardware faults. To achieve scalability, it uses tiled neuron clusters where neuron outputs are efficiently forwarded to the target neurons using source based spanning tree routing. To achieve fault resilience in the face of increasing number of permanent hardware failures, the design proactively preserves neural network computing performance by selectively replicating performance critical neurons. Furthermore, the paper presents a spanning tree recovery solution that mitigates disruption to distribution of neuron outputs caused by failed neuron clusters. The proposed neuron cluster design is implemented in Verilog. We studied the fault resilience performance of the described design using a RBM neural network trained for classifying handwritten digit images. Results demonstrate that our approach can achieve improved fault resilience performance by replicating only 5% most important neurons.
AB - Device scaling engineering is facing major challenges in producing reliable transistors for future electronic technologies. With shrinking device sizes, the total circuit sensitivity to both permanent and transient faults has increased significantly. Research for fault tolerant processors has primarily focused on the conventional processor architectures. Neural network computing has been employed to solve a wide range of problems. This paper presents a design and implementation of a physical neural network that is resilient to permanent hardware faults. To achieve scalability, it uses tiled neuron clusters where neuron outputs are efficiently forwarded to the target neurons using source based spanning tree routing. To achieve fault resilience in the face of increasing number of permanent hardware failures, the design proactively preserves neural network computing performance by selectively replicating performance critical neurons. Furthermore, the paper presents a spanning tree recovery solution that mitigates disruption to distribution of neuron outputs caused by failed neuron clusters. The proposed neuron cluster design is implemented in Verilog. We studied the fault resilience performance of the described design using a RBM neural network trained for classifying handwritten digit images. Results demonstrate that our approach can achieve improved fault resilience performance by replicating only 5% most important neurons.
UR - https://www.scopus.com/pages/publications/85116177015
U2 - 10.1145/2656106.2656126
DO - 10.1145/2656106.2656126
M3 - 会议稿件
AN - SCOPUS:85116177015
T3 - 2014 International Conference on Compilers, Architecture and Synthesis for Embedded Systems, CASES 2014
BT - 2014 International Conference on Compilers, Architecture and Synthesis for Embedded Systems, CASES 2014
PB - Association for Computing Machinery
T2 - 2014 International Conference on Compilers, Architecture and Synthesis for Embedded Systems, CASES 2014
Y2 - 12 October 2014 through 17 October 2014
ER -