Treffer: Optimal Configuration Method of Energy Routers in Active Distribution Network Considering Demand Response

Title:
Optimal Configuration Method of Energy Routers in Active Distribution Network Considering Demand Response
Source:
Processes ; Volume 13 ; Issue 4 ; Pages: 1248
Publisher Information:
Multidisciplinary Digital Publishing Institute
Publication Year:
2025
Collection:
MDPI Open Access Publishing
Subject Geographic:
Document Type:
Fachzeitschrift text
File Description:
application/pdf
Language:
English
Relation:
DOI:
10.3390/pr13041248
Accession Number:
edsbas.22FD6EA2
Database:
BASE

Weitere Informationen

The energy router (ER) is a crucial component in smart distribution networks, and its optimal configuration is essential for enhancing the operational efficiency, economy, and security of the grid. However, existing research rarely considers both the location and sizing costs of the ER in conjunction with flexible load demand response. Therefore, this paper proposes an optimal configuration method for the energy router in active distribution networks, incorporating demand response. First, to balance the comprehensive operational characteristics of the active distribution network throughout the year with computational efficiency, an improved K-means clustering algorithm is employed to construct multiple representative scenarios. Then, a bi-level programming model is established for ER location and sizing, considering demand response. The upper level optimizes the location and capacity configuration of the ER to minimize the overall cost of the distribution network. The lower level focuses on multi-objective optimization, including peak shaving, valley filling, network losses, and voltage deviations, to achieve energy scheduling within the distribution network. Finally, an improved bi-level particle swarm optimization algorithm is employed to solve the model. Simulation results based on the IEEE 33-node system demonstrate that the peak shaving and valley filling optimization rate after ER integration into the active distribution network is at least 9.19%, and it is improved to 14.35% when combined with demand response. Concurrently, the integration of the ER enhances the distribution network’s ability to absorb renewable energy, reduces network losses, and improves power quality.