Optimal Placement and Sizing of Distributed Generations for Power Losses Minimization Using PSO-Based Deep Learning Techniques

Bello-Pierre Ngoussandou, Nicodem Nisso, Dieudonné Kaoga Kidmo,   Kitmo
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Abstract

The integration of distributed generations (DGs) into distribution systems (DSs) is increasingly becoming a solution for compensating for isolated local energy systems (ILESs). Additionally, distributed generations are used for self-consumption with excess energy injected into centralized grids (CGs). However, the improper sizing of renewable energy systems (RESs) exposes the entire system to power losses. This work presents an optimization of a system consisting of distributed generations. Firstly, PSO algorithms evaluate the size of the entire system on the IEEE bus 14 test standard. Secondly, the size of the system is allocated using improved Particles Swarm Optimization (IPSO). The convergence speed of the objective function enables a conjecture to be made about the robustness of the proposed system. The power and voltage profile on the IEEE 14-bus standard displays a decrease in power losses and an appropriate response to energy demands (EDs), validating the proposed method.
使用基于pso的深度学习技术实现功耗最小化的分布式代的最佳放置和大小
将分布式发电系统(dg)集成到配电系统(DSs)中,正日益成为补偿孤立局部能源系统(ILESs)的一种解决方案。此外,分布式发电用于自我消费,多余的能量注入集中电网(CGs)。然而,可再生能源系统(RESs)的不适当的规模暴露了整个系统的电力损失。这项工作提出了一个由分布式代组成的系统的优化。首先,粒子群算法在IEEE总线14测试标准上评估整个系统的大小。其次,采用改进的粒子群优化算法(IPSO)对系统的大小进行分配。目标函数的收敛速度使我们可以对所提系统的鲁棒性作出推测。IEEE 14总线标准的功率和电压分布显示功率损耗减少,并且对能量需求(EDs)有适当的响应,验证了所提出的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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