Event-Triggered Basis Augmentation for Multiagent Collaborative Adaptive Estimation
成果类型:
Article
署名作者:
Guo, Jia; Zhang, Fumin
署名单位:
Cornell University; Hong Kong University of Science & Technology
刊物名称:
IEEE TRANSACTIONS ON AUTOMATIC CONTROL
ISSN/ISSBN:
0018-9286
DOI:
10.1109/TAC.2024.3442271
发表日期:
2025
页码:
799-813
关键词:
Kernel
Adaptation models
trajectory
computational modeling
Vehicle dynamics
mathematical models
Adaptive estimation
Adaptive approximation
kernel method
minimal parameterization
unstructured dynamics
摘要:
Parameterization is a necessary step for learning unstructured unknown dynamical systems. In this article, we aim to balance the tradeoff between expressiveness and complexity when selecting models for parameterizing unstructured dynamics using universal regression models. Rather than using a fixed set of basis functions in the regression model, we introduce the event-triggered basis augmentation (ETBA) technique for adaptive estimation, which gradually builds up an expressive regression model on the fly. Kernel regression is applied in ETBA to approximate a general class of unstructured dynamics. With the inner product structure of reproducing kernel Hilbert spaces (RKHS), the residue of the regression model is characterized as the component of unknown dynamics that is orthogonal to all the existing basis functions. With this characterization, new basis functions can be strategically included in the regression model to meet certain stability certificates of adaptive estimation. Among existing basis augmentation methods for learning dynamical systems, the unique advantage of ETBA is that it does not require state derivatives to accomplish the learning. Compared to traditional methods of learning dynamical systems, ETBA uses fewer basis functions without sacrificing expressiveness of the model. We illustrate these two advantages in numerical example. We further study the formulation of ETBA in multiagent systems, for which we propose the condition of collaborative persistent excitation in RKHS to guarantee convergence of function estimation.
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