Distributed Adaptive optimization Via Edge-event-based Triggering
Article 2019 English
Authors
YH
Yanwei Huo
YZ
Yu Zhao
ZD
Zhisheng Duan
Abstract
1 min read
This paper investigates the distributed optimization problem for multi-agent systems. An adaptive algorithm with edge-event-based triggering is proposed to minimize a differential global objective function. It is shown that the proposed algorithm can ensure that the consensus error is asymptotically stabilized and the Zeno behaviour can be avoided. Moreover, a sampled-data scheme driven by edge-events is proposed to relax the requirement of continuous communication between neighbouring agents without the need of global information.
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