Bio-Inspired Electromagnetic Protection Based on Neural Information Processing

被引:0
|
作者
Xiaolong Chang
Shanghe Liu
Menghua Man
Weihua Han
Jie Chu
Liang Yuan
机构
[1] Mechanical Engineering College,Institute of Electrostatic and Electromagnetic Protection
[2] Chinese Academy of Science,Institute of Semiconductors
[3] Mechanical Engineering College,Department of Information Engineering
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关键词
biological nervous system; robustness; population coding; bio-inspired electromagnetic protection model; neural circuitry;
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学科分类号
摘要
Electronic systems are vulnerable in electromagnetic interference environment. Although many solutions are adopted to solve this problem, for example shielding, filtering and grounding, noise is still introduced into the circuit inevitably. What impresses us is the biological nervous system with a vital property of robustness in noisy environment. Some mechanisms, such as neuron population coding, degeneracy and parallel distributed processing, are believed to partly explain how the nervous system counters the noise and component failure. This paper proposes a novel concept of bio-inspired electromagnetic protection making reference to the characteristic of neural information processing. A bionic model is presented here to mimic neuron populations to transform the input signal into neural pulse signal. In the proposed model, neuron provides a dynamic feedback to the adjacent one according to the concept of synaptic plasticity. A simple neural circuitry is designed to verify the rationality of the bio-inspired model for electromagnetic protection. The experiment results display that bio-inspired electromagnetic protection model has more power to counter the interference and component failure.
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页码:151 / 157
页数:6
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