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Get Free AccessThis paper focuses on three critical aspects of designing distributed optimization algorithms in real-world scenarios: feasibility, convergence time, and applicability to unbalanced networks. A specific class of resource allocation problems (RAPs) are addressed with these challenges in mind. These RAPs occur over unbalanced digraphs, have strict time constraints, and require continuous resource-demand balance. To tackle these challenges, a relaxed framework of time-base generators (TBGs) is presented. Sufficient conditions are then derived to guarantee that TBGs achieve prescribed-time convergence for distributed optimization. Secondly, leveraging the designed TBGs, a new prescribed-time distributed continuous-time optimization algorithm specifically suited for RAPs over unbalanced digraphs is firstly developed. This algorithm excels at solving these problems within user-defined and arbitrary timeframes. Thirdly, a fully distributed design of the above prescribed-time optimization algorithm is put forward to eliminate the stringent global topology knowledge. It is formally proved that both algorithms achieve the optimal resource allocation within prescribed-time convergence. Furthermore, both algorithms ensure continuous feasibility by maintaining resource-demand balance throughout operation and offer a significant advantage in simplicity compared to existing primal–dual methods and their variants. The proposed algorithms exclude the need for Lagrangian multipliers in the design process, leading to a more straightforward and convenient approach to handling the coupled resource-demand constraint. Finally, the effectiveness of the proposed algorithms is substantiated through numerical simulations.
Meng Luan, Guanghui Wen, Xiaohua Ge, Qinglong Qinglong Han (2025). Fully distributed resource allocation over unbalanced digraphs in prescribed time: A relaxed time-base generator approach. Automatica, 177, pp. 112313-112313, DOI: 10.1016/j.automatica.2025.112313.
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Type
Article
Year
2025
Authors
4
Datasets
0
Total Files
0
Language
English
Journal
Automatica
DOI
10.1016/j.automatica.2025.112313
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