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Main Authors: Li, Haojin, Cheng, Xiaodong, van Heijster, Peter, Qin, Sitian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.19458
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author Li, Haojin
Cheng, Xiaodong
van Heijster, Peter
Qin, Sitian
author_facet Li, Haojin
Cheng, Xiaodong
van Heijster, Peter
Qin, Sitian
contents In this paper, we present an event-triggered distributed optimization approach including a distributed controller to solve a class of distributed time-varying optimization problems (DTOP). The proposed approach is developed within a distributed neurodynamic (DND) framework that not only optimizes the global objective function in real-time, but also ensures that the states of the agents converge to consensus. This work stands out from existing methods in two key aspects. First, the distributed controller enables the agents to communicate only at designed instants rather than continuously by an event-triggered scheme, which reduces the energy required for agent communication. Second, by incorporating an integral mode technique, the event-triggered distributed controller avoids computing the inverse of the Hessian of each local objective function, thereby reducing computational costs. Finally, an example of battery charging problem is provided to demonstrate the effectiveness of the proposed event-triggered distributed optimization approach.
format Preprint
id arxiv_https___arxiv_org_abs_2410_19458
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Distributed Time-Varying Optimization Approach Based on an Event-Triggered Scheme
Li, Haojin
Cheng, Xiaodong
van Heijster, Peter
Qin, Sitian
Optimization and Control
In this paper, we present an event-triggered distributed optimization approach including a distributed controller to solve a class of distributed time-varying optimization problems (DTOP). The proposed approach is developed within a distributed neurodynamic (DND) framework that not only optimizes the global objective function in real-time, but also ensures that the states of the agents converge to consensus. This work stands out from existing methods in two key aspects. First, the distributed controller enables the agents to communicate only at designed instants rather than continuously by an event-triggered scheme, which reduces the energy required for agent communication. Second, by incorporating an integral mode technique, the event-triggered distributed controller avoids computing the inverse of the Hessian of each local objective function, thereby reducing computational costs. Finally, an example of battery charging problem is provided to demonstrate the effectiveness of the proposed event-triggered distributed optimization approach.
title A Distributed Time-Varying Optimization Approach Based on an Event-Triggered Scheme
topic Optimization and Control
url https://arxiv.org/abs/2410.19458