Abstract

The external interference can hamper the normal function of neuromorphic hardware under complex noise environment. Therefore, the study of brain-like models with anti-interference ability is a crucial issue. A bio-brain has the advantage of self-adaptability. The existing brain-like models are lack of bio-interpretability. Drawing from the advantage of bio-brain, the purpose of this paper is to investigate the anti-interference ability of brain-like models with bio-interpretability. In this study, we construct a spiking neural network with a small-world topology (SWSNN) as a brain-like model, in which Izhikevich neuron models and synaptic plasticity models with time-delay are used to represent the nodes and edges of the network, respectively. Then, the anti-interference ability of our SWSNN against different external noise is investigated, and its mechanism is explored. Further, by taking the speech recognition task as the case study, we verify the anti-interference ability of the SWSNN. Our simulation results indicate that: (i) The anti-interference ability of SWSNN is better than that of SNNs with other topologies. (ii) The discussion of neural information processing of the SWSNN under interference implies that the dynamic regulation of synaptic plasticity is an intrinsic factor of the anti-interference, and the topology is a factor that affects the anti-interference at the level of performance. (iii) Taking the speech recognition task as a case study, the SWSNN under different external noises still have almost the same high speech recognition accuracy, compared with the SWSNN without interference, and SWSNN yields better anti-interference ability than SNNs with other topologies in terms of the speech recognition accuracy. In addition, the anti-interference ability of our SWSNN framework is superior to that of existing liquid state machine (LSM) framework. Our simulation results lay a preliminary foundation for the neuromorphic hardware with robustness under complex noise environment.

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