Modeling method of photovoltaic power generation grid connection based on particle swarm optimization neural network

Q2 Energy Energy Informatics Pub Date : 2024-09-27 DOI:10.1186/s42162-024-00388-2
Jie Zhang, Yuanhong Lu, Libin Huang, Haiping Guo, Liang Tu
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Abstract

Aiming at the complex structure, numerous equipment, intricate control and protection logic, as well as the existence of numerous unmodeled dynamics and black-box device models in photovoltaic (PV) grid-connected systems, a modeling method based on Particle Swarm Optimization Neural Network (PSO-NN) is proposed to address the inability of pure mechanism models to accurately simulate their operational dynamics. Utilizing the differences in active power response waveforms under Voltage-Frequency (Vf) control, Power-Reactive Power (PQ) control, and Droop control as criteria for control strategy identification, a PSO-NN model is constructed for PV grid-connected systems, with inputs comprising temperature, humidity, light intensity, voltage, and frequency disturbances, and outputs being active and reactive power. To validate the model's effectiveness, a PV grid-connected system model is built in a self-developed simulation software and connected to an IEEE 14-bus distribution network for simulation verification. The results demonstrate that the proposed PV grid-connected model can effectively identify the types of Vf control, PQ control, and Droop control strategies, and accurately reflect the dynamic response characteristics of active and reactive power under various voltage and frequency disturbances.

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基于粒子群优化神经网络的光伏发电并网建模方法
针对光伏(PV)并网系统结构复杂、设备众多、控制和保护逻辑错综复杂,以及存在大量未建模动态和黑盒设备模型的问题,提出了一种基于粒子群优化神经网络(PSO-NN)的建模方法,以解决纯机构模型无法准确模拟其运行动态的问题。利用电压-频率 (Vf) 控制、功率-无功功率 (PQ) 控制和下垂控制下有功功率响应波形的差异作为控制策略识别的标准,构建了光伏并网系统的 PSO-NN 模型,输入包括温度、湿度、光照强度、电压和频率干扰,输出为有功功率和无功功率。为验证该模型的有效性,在自主开发的仿真软件中建立了光伏并网系统模型,并将其连接到 IEEE 14 总线配电网络中进行仿真验证。结果表明,所提出的光伏并网模型能有效识别 Vf 控制、PQ 控制和 Droop 控制策略的类型,并能准确反映各种电压和频率干扰下有功和无功功率的动态响应特性。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
期刊最新文献
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