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A Comprehensive Benchmark of Neural Networks for System Identification

Antoine Richard, Antoine Mahé, Cédric Pradalier, Offer Rozenstein, Matthieu Geist

Year
2019
Citations
4

Abstract

This paper compares a wide variety of neural network architectures applied in the context of black-box modeling for robotics and control. We compare six different architectural concepts and four activation functions, with over three hundred different models. Those models were applied to three robotics datasets to show the differences in performance between the architectures along with their limitations.

Keywords

Benchmark (surveying)Identification (biology)Artificial neural networkComputer scienceArtificial intelligenceMachine learningNeural systemNeurosciencePsychologyBiology

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