DocumentCode :
1518721
Title :
VLSI Implementation of a Bio-Inspired Olfactory Spiking Neural Network
Author :
Hung-Yi Hsieh ; Kea-Tiong Tang
Author_Institution :
Dept. of Electr. Eng., Nat. Tsing Hua Univ., Hsinchu, Taiwan
Volume :
23
Issue :
7
fYear :
2012
fDate :
7/1/2012 12:00:00 AM
Firstpage :
1065
Lastpage :
1073
Abstract :
This paper presents a low-power, neuromorphic spiking neural network (SNN) chip that can be integrated in an electronic nose system to classify odor. The proposed SNN takes advantage of sub-threshold oscillation and onset-latency representation to reduce power consumption and chip area, providing a more distinct output for each odor input. The synaptic weights between the mitral and cortical cells are modified according to an spike-timing-dependent plasticity learning rule. During the experiment, the odor data are sampled by a commercial electronic nose (Cyranose 320) and are normalized before training and testing to ensure that the classification result is only caused by learning. Measurement results show that the circuit only consumed an average power of approximately 3.6 μW with a 1-V power supply to discriminate odor data. The SNN has either a high or low output response for a given input odor, making it easy to determine whether the circuit has made the correct decision. The measurement result of the SNN chip and some well-known algorithms (support vector machine and the K-nearest neighbor program) is compared to demonstrate the classification performance of the proposed SNN chip.The mean testing accuracy is 87.59% for the data used in this paper.
Keywords :
VLSI; chemical variables measurement; electronic noses; learning (artificial intelligence); neural nets; signal classification; signal sampling; Cyranose 320; K-nearest neighbor program comparison; SNN chip; VLSI implementation; bio-inspired olfactory spiking neural network; chip area reduction; classification performance; cortical cells; electronic nose system; low-power neuromorphic spiking neural network; mitral cells; odor classification; odor data discrimination; odor data sampling; odor input; onset-latency representation; power consumption reduction; spike-timing-dependent plasticity learning rule; subthreshold oscillation; support vector machine comparison; synaptic weight; Capacitors; Neurons; Olfactory; Oscillators; Threshold voltage; Timing; Very large scale integration; Analog very-large-scale integration (VLSI); electronic nose; olfaction; spiking neural network; subthreshold oscillation;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2012.2195329
Filename :
6202348
Link To Document :
بازگشت