基于量子回归递归神经网络的光伏发电异常检测

IF 3.3 3区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC Electric Power Systems Research Pub Date : 2024-10-04 DOI:10.1016/j.epsr.2024.111132
Chengcheng Yi , Yu Peng , Sheng Su , Bin Li , Xiaoqian Wang , Wenqing Zhou , Xin Guo , Hongming Yang , Wenchuan Meng
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引用次数: 0

摘要

分布式光伏(PV)发电系统广泛普及。此外,由于气象条件的随机性和安装环境的复杂性,光伏设备异常状态监测难以排除气象波动等因素的干扰。基于此,本文提出了一种基于量回归递归神经网络(QRRNN)的光伏发电异常检测方法。首先,分析晴天的太阳辐照度特征,并采用晴天遮蔽法排除阴雨天气的干扰。然后,分析不同电站的输出相关性,获得输出相关性高的光伏电站作为横向参考,用于排除电站永久故障等干扰。同时,对被测电站在不同晴天的输出曲线进行纵向比较,以排除天气和环境条件等干扰因素。随后,将不受干扰的有功功率输出计量数据输入 QRRNN 模型,得出光伏正常有功功率输出范围。利用正常输出范围的功率阈值来识别光伏发电的异常情况。最后,对实际光伏系统数据进行了仿真分析,结果表明该方法能有效识别光伏发电异常,在光伏故障检测中具有较高的准确性。
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Anomaly detection of photovoltaic power generation based on quantile regression recurrent neural network
Distributed photovoltaic (PV) power generation systems are widely spread. Moreover, due to the randomness of meteorological conditions and the complexity of installation environments, it is difficult to eliminate the interference of factors such as meteorological fluctuations in the monitoring of abnormal states of PV equipment. Based on this, this paper proposes a PV power generation anomaly detection method based on Quantile Regression Recurrent Neural Network (QRRNN). First, the characteristics of solar irradiance on clear days are analyzed, and the clear day masking method is used to eliminate the interference of cloudy and rainy weather. Then, the output correlation of different power stations is analyzed to obtain PV stations with high output correlation as the horizontal reference, which is used to exclude interferences such as permanent faults at the power stations. At the same time, vertical comparison of the output curves of the station under test on different clear days is conducted to eliminate interference factors such as weather and environmental conditions. Subsequently, the metered active power output data, which is free from interference, is input into the QRRNN model to obtain the normal active power output range of the PV. The power threshold of the normal output range is utilized to identify anomalies in PV power generation. Finally, simulation analysis of actual PV system data is conducted, and the results show that the method can effectively identify PV power generation anomalies and has high accuracy in PV fault detection.
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来源期刊
Electric Power Systems Research
Electric Power Systems Research 工程技术-工程:电子与电气
CiteScore
7.50
自引率
17.90%
发文量
963
审稿时长
3.8 months
期刊介绍: Electric Power Systems Research is an international medium for the publication of original papers concerned with the generation, transmission, distribution and utilization of electrical energy. The journal aims at presenting important results of work in this field, whether in the form of applied research, development of new procedures or components, orginal application of existing knowledge or new designapproaches. The scope of Electric Power Systems Research is broad, encompassing all aspects of electric power systems. The following list of topics is not intended to be exhaustive, but rather to indicate topics that fall within the journal purview. • Generation techniques ranging from advances in conventional electromechanical methods, through nuclear power generation, to renewable energy generation. • Transmission, spanning the broad area from UHV (ac and dc) to network operation and protection, line routing and design. • Substation work: equipment design, protection and control systems. • Distribution techniques, equipment development, and smart grids. • The utilization area from energy efficiency to distributed load levelling techniques. • Systems studies including control techniques, planning, optimization methods, stability, security assessment and insulation coordination.
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