Simulation of EMP Inject Effects Based on Improved Elman Network

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Abstract:

In order to quickly determine the performance of a transient voltage suppressor (TVS), improve time domain identification capability of Elman network, the simulation of electromagnetic pulse (EMP) inject effects based on improved Elman network is proposed. Derivation proved that improved Elman network trained by standard BP algorithm has a similar form with the basic Elman network trained dynamic BP algorithm. We establish and improve its Elman network predictive modeling based on the measured parameters of TVS and then demonstrate that improved Elman network has the characteristics of quick speed, high precision, good performance and strong generalization ability, and broad use of prospects.

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Advanced Materials Research (Volumes 986-987)

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2019-2022

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July 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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