Adaptive Model Learning of Neural Networks with UUB Stability for Robot Dynamic Estimation

Published: Jul 1, 2019
Abstract
Since batch algorithms suffer from lack of proficiency in confronting model mismatches and disturbances, this contribution proposes an adaptive scheme based on continuous Lyapunov function for online robot dynamic identification. This paper suggests stable updating rules to drive neural networks inspiring from model reference adaptive paradigm. Network structure consists of three parallel self-driving neural networks which aim to estimate robot...
Paper Details
Title
Adaptive Model Learning of Neural Networks with UUB Stability for Robot Dynamic Estimation
Published Date
Jul 1, 2019
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