Rajakumar P, Balasubramaniam P M, Parimalasundar E, Suresh K, Aravind P
Vel Tech Rangarajan Dr.Sagunthala R&D Institute of Science and Technology, Chennai, Tamil Nadu, India.
Department of ECE, Hindusthan Institute of Technology, Coimbatore, Tamil Nadu, India.
Sci Rep. 2025 Jul 1;15(1):20755. doi: 10.1038/s41598-025-08227-4.
The strategic integration of distributed generation (DG) units into distribution power networks (DPNs) is pivotal for augmenting system efficiency and stability. This study introduces an advanced metaheuristic optimization framework leveraging the Jellyfish Search Algorithm (JSA) for the optimal placement and sizing of solar photovoltaic (PV) DG units. The formulated multi-objective function incorporates real power loss (RPL) minimization, voltage deviation index (VDI) reduction, and voltage stability index (VSI) enhancement, employing a weighted sum approach (WSA) to ensure computational rigor. The efficacy of the proposed methodology is rigorously validated on the IEEE 33-bus radial DPN under single and multiple PV system deployment scenarios. For single PV system optimized inclusion, RPL of the DPN is cut down from 210.98 kW to 102.89 kW, total VDI is reduced from 1.8047 p.u to 0.5331 p.u, and minimum VSI is increased from 0.6671 to 0.7559. For two PV DG units inclusion, RPL is reduced to 82.99 kW, total VDI is reduced to 0.6518 p.u with a least VSI improved to 0.8848. However, better result is obtained with three units of DG placement with RPL reduced to 69.59 kW, total VDI decreased to 0.3293 p.u with a least VSI of the test system increased to 0.8916. Comparative analyses against state-of-the-art metaheuristic algorithms underscore the superior convergence efficiency and optimality of JSA in addressing nonlinearity and high-dimensionality constraints. Empirical results substantiate substantial RPL reduction, bus voltage enhancement, and system stability reinforcement, establishing JSA as an avant-garde paradigm in DG optimization.
将分布式发电(DG)单元战略性地集成到配电网(DPN)中,对于提高系统效率和稳定性至关重要。本研究引入了一种先进的元启发式优化框架,该框架利用水母搜索算法(JSA)对太阳能光伏(PV)DG单元进行优化布局和容量确定。所制定的多目标函数包括有功功率损耗(RPL)最小化、电压偏差指数(VDI)降低和电压稳定指数(VSI)增强,并采用加权和方法(WSA)以确保计算的严谨性。在IEEE 33节点辐射状DPN上,针对单光伏系统和多光伏系统部署场景,对所提方法的有效性进行了严格验证。对于单光伏系统的优化并入,DPN的RPL从210.98千瓦降至102.89千瓦,总VDI从1.8047标幺值降至0.5331标幺值,最小VSI从0.6671提高到0.7559。对于并入两个光伏DG单元的情况,RPL降至82.99千瓦,总VDI降至0.6518标幺值,最小VSI提高到0.8848。然而,当布置三个DG单元时,取得了更好的结果,RPL降至69.59千瓦,总VDI降至0.3293标幺值,测试系统的最小VSI提高到0.8916。与现有元启发式算法的对比分析强调了JSA在解决非线性和高维约束方面具有卓越的收敛效率和最优性。实证结果证实了RPL的大幅降低、母线电压的提高以及系统稳定性的增强,确立了JSA作为DG优化中的前沿范例。