Analysis of Grid Performance with Diversified Distributed Resources and Storage Integration: A Bilevel Approach with Network-Oriented PSO

Author:

El Sayed Ahmad1ORCID,Poyrazoglu Gokturk1ORCID

Affiliation:

1. Electrical and Electronics Engineering Department, Ozyegin University, Istanbul 34794, Turkey

Abstract

The growing deployment of distributed resources significantly affects the distribution grid performance in most countries. The optimal sizing and placement of these resources have become increasingly crucial to mitigating grid issues and reducing costs. Particle Swarm Optimization (PSO) is widely used to address such problems but faces computational inefficiency due to its numerical convergence behavior. This limits its effectiveness, especially for power system problems, because the numerical distance between two nodes in power systems might be different from the actual electrical distance. In this paper, a scalable bilevel optimization problem with two novel algorithms enhances PSO’s computational efficiency. While the resistivity-driven algorithm strategically targets low-resistivity regions and guides PSO toward areas with lower losses, the connectivity-driven algorithm aligns solution spaces with the grid’s physical topology. It prioritizes actual physical neighbors during the search to prevent local optima traps. The tests of the algorithms on the IEEE 33-bus and the 69-bus and Norwegian networks show significant reductions in power losses (up to 74% for PV, wind, and storage) and improved voltage stability (a 21% reduction in mean voltage deviation index) with respect to the results of classical PSO. The proposed network-oriented PSO outperforms classical PSO by achieving a 2.84% reduction in the average fitness value for the IEEE 69-bus case with PV, wind, and storage deployment. The Norwegian case study affirms the effectiveness of the proposed approach in real-world applications through significant improvements in loss reduction and voltage stability.

Publisher

MDPI AG

Reference34 articles.

1. Rashid, M.H. (2024, April 01). Energy Systems in Electrical Engineering Series. Available online: https://www.springer.com/series/13509.

2. Salam, I.U., Yousif, M., Numan, M., Zeb, K., and Billah, M. (2023). Optimizing Distributed Generation Placement and Sizing in Distribution Systems: A Multi-Objective Analysis of Power Losses, Reliability, and Operational Constraints. Energies, 16.

3. A Comprehensive Review of Recent Advances in Optimal Allocation Methods for Distributed Renewable Generation;Tercan;IET Renew. Power Gener.,2023

4. Particle Swarm Optimization Based Multi Objective Approach for Installation of Dispersed Generator;Maheshwari;J. Integr. Sci. Technol.,2023

5. Jain College of Engineering, and Institute of Electrical and Electronics Engineers (2020, January 5–7). Bangalore Section; Institute of Electrical and Electronics Engineers. Proceedings of the 2020 International Conference for Emerging Technology (INCET), Belgaum, India.

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