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光伏发电技术 储能系统 机器学习 深度学习 故障诊断 ★ 5.0

基于模型预测控制的双向充电机V2G功率调节策略

Fault Detection in Photovoltaic Systems Using a Machine Learning Approach

作者 Jossias Zwirtes · Fausto Bastos Líbano · Luís Alvaro de Lima Silva · and Edison Pignaton de Freitas
期刊 IEEE Access
出版日期 2025年1月
技术分类 光伏发电技术
技术标签 储能系统 机器学习 深度学习 故障诊断
相关度评分 ★★★★★ 5.0 / 5.0
关键词 光伏系统 故障监测 机器学习 故障分类 人工神经网络
语言:

中文摘要

车网互动技术通过双向充电实现电动汽车与电网的能量交换,但功率波动和电池寿命是关键挑战。本文提出基于模型预测控制的V2G功率调节策略,通过多步优化实现电网支撑、电池保护和用户需求的协调。

English Abstract

Research and development of intelligent fault monitoring in photovoltaic systems are crucial for efficient energy generation. In response to the industry’s demand for innovative solutions to enhance energy output and reduce maintenance costs, this study explores machine-learning approaches for the autonomous detection and classification of faults caused by partial shading and dirt accumulation in photovoltaic modules. The proposed fault detection solutions rely on analyzing different algorithms, including Support Vector Machine, Artificial Neural Network, Random Forest, Decision Tree, and Logistic Regression. The research explored data collected from two real photovoltaic systems, each with distinct module characteristics and power ratings. Data were gathered for systems without faults, with faults simulated by partial shading, and faults simulated by dirt accumulation. Crucial information, including voltage, current, ambient temperature, and irradiance, was recorded to assess and classify these kinds of faults. This study presents three main contributions: the implementation and comparison of multiple machine learning models for fault detection, an investigation into the feasibility of identifying these faults using only electrical and environmental data, and an analysis of model performance in a photovoltaic system different from the one used for training. The results indicate that models trained on a specific system achieve high accuracy but face challenges when applied to systems with different characteristics, suggesting that each new photovoltaic system to be monitored should be included in the training phase to enhance classification performance. Noteworthy results were obtained with the Artificial Neural Network model, achieving precision values exceeding 98%.
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SunView 深度解读

该V2G控制技术可应用于阳光电源双向充电桩产品。通过智能功率调节策略,实现电动汽车参与电网调峰调频,延长动力电池循环寿命,提升充电桩的电网友好性,为光储充一体化系统提供车网互动功能。