日本ロボット学会誌
Online ISSN : 1884-7145
Print ISSN : 0289-1824
ISSN-L : 0289-1824
論文
軌道の位相的性質を保証する非線形動的システム学習
森安 竜大橋本 俊哉日下部 信一加嶋 健司
著者情報
ジャーナル フリー

2021 年 39 巻 3 号 p. 259-262

詳細
抄録

Dynamical system learning, also known as system identification, is a powerful tool for modeling unknown systems from data. However, guaranteeing properties such as stability of the obtained model is generally difficult, especially for complex nonlinear models. Therefore, for industrial applications, a reliable learning method that can ensure that the model has some desirable properties is required. In this paper, a novel method for learning a nonlinear model with guaranteed topological properties is proposed. The method employs a model structure represented by transforming the internal state, defined by an internal model with simple known dynamic properties, by a homeomorphic map. This enables to learn a model that guarantees not only the stability of the model but also the existence of limit cycles and other topological properties of the state trajectories in state space.

著者関連情報
© 2018 日本ロボット学会
前の記事 次の記事
feedback
Top