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  5. Penalty-Function-Type Multi-Agent Approaches to Distributed Nonconvex Optimal Resource Allocation

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Article
English
2024

Penalty-Function-Type Multi-Agent Approaches to Distributed Nonconvex Optimal Resource Allocation

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0 Files

English
2024
IEEE Transactions on Network Science and Engineering
Vol 11 (5)
DOI: 10.1109/tnse.2024.3401748

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Guanrong Chen
Guanrong Chen

City University Of Hong Kong

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Zicong Xia
Wenwu Yu
Yang Liu
+2 more

Abstract

In this paper, a class of penalty-function-type multi-agent approaches via communication networks is developed for distributed nonconvex optimal resource allocation. A penalty-function-type method is utilized to handle networked resource allocation constraints, and a multi-agent method is employed for handling global information in a distributed manner. Then, a penalty-function-type multi-agent system is constructed for a nonconvex optimal resource allocation model, and its stability with a local minimizer is proven. Further, a nonconvex optimal resource allocation model subject to "on/off" constraints is introduced. Based on an augmented Lagrangian function, another penalty-function-type multi-agent system is developed, and it is proven to be stable with a local minimizer. A numerical example with simulation in a heating, ventilation, and air conditioning system is presented to demonstrate the theoretical results.

How to cite this publication

Zicong Xia, Wenwu Yu, Yang Liu, Wenwen Jia, Guanrong Chen (2024). Penalty-Function-Type Multi-Agent Approaches to Distributed Nonconvex Optimal Resource Allocation. IEEE Transactions on Network Science and Engineering, 11(5), pp. 4169-4180, DOI: 10.1109/tnse.2024.3401748.

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Publication Details

Type

Article

Year

2024

Authors

5

Datasets

0

Total Files

0

Language

English

Journal

IEEE Transactions on Network Science and Engineering

DOI

10.1109/tnse.2024.3401748

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