基于金字塔网络和GRU边缘应用的轻型分层空间特征提取和顺序建模

IF 7.6 Q1 ENERGY & FUELS
Archana Pallakonda , Rayappa David Amar Raj , Rama Muni Reddy Yanamala , Ranjith Raja B. , Himavarshini Kolisetty , Sai Mrudula Pedamallu , Krishna Prakasha K.
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引用次数: 0

摘要

太阳能光伏(PV)系统正在成为世界范围内日益重要的可再生能源。然而,这些系统的故障可能会大大减少能源生产,导致经济损失和环境问题。传统的故障检测方法基于人工检测,费时费力。本文提出了一种基于深度学习的自定义GRU金字塔网络故障检测方法。该系统使用卷积神经网络(CNN)架构来分析太阳能光伏板的图像,并检测诸如污垢、热点和裂缝等故障。该模型集成了空间序列建模进行特征细化,利用空间特征图的伪时序GRU处理。利用红外太阳能组件数据集对模型进行训练。模型的性能使用诸如12个不同类别的准确性、精度和召回率等指标来衡量。所提出的模型非常轻,仅使用了350万个参数。结果表明,基于GRU自定义金字塔深度学习的方法在太阳能光伏系统故障检测方面具有很高的准确性。该模型在2级场景下的故障检测准确率为96%,在12级场景下的故障检测准确率为91%,超过了标准的故障检测方法。这项技术可以集成到现有的太阳能光伏监测系统中,从而实现实时故障识别,降低维护成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lightweight hierarchical spatial feature extraction and sequential modeling for PV fault detection using pyramid network and GRU for edge applications
Solar photovoltaic (PV) systems are becoming an increasingly important source of renewable energy around the world. However, faults in these systems can drastically diminish energy production, resulting in economic losses and environmental issues. Traditional fault detection methods are based on manual examination, which can be time-consuming and labor-intensive. This study presents a Custom GRU Pyramid Network, a deep learning-based method for fault detection in solar PV systems. This uses a convolutional neural network (CNN) architecture to analyze images of solar PV panels and detect faults such as soiling, hotspots, and cracks. The proposed model integrates Spatial–Sequential modeling for feature refinement, leveraging pseudo-temporal GRU processing of spatial feature maps. The proposed model is trained using a dataset of Infrared solar module. The model’s performance is measured using metrics such as accuracy, precision, and recall for 12 different classes. The proposed model is extremely light which is utilizing only 3.5 million parameters. The results reveal that the suggested GRU Custom Pyramid deep learning-based approach is highly accurate at detecting faults in solar PV systems. The model detects faults with 96% accuracy in 2-class and 91% in 12-class scenario, exceeding standard fault detection approaches. This technique can be integrated into existing solar PV monitoring systems, allowing for real-time fault identification and lower maintenance costs.
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来源期刊
CiteScore
8.80
自引率
3.20%
发文量
180
审稿时长
58 days
期刊介绍: Energy Conversion and Management: X is the open access extension of the reputable journal Energy Conversion and Management, serving as a platform for interdisciplinary research on a wide array of critical energy subjects. The journal is dedicated to publishing original contributions and in-depth technical review articles that present groundbreaking research on topics spanning energy generation, utilization, conversion, storage, transmission, conservation, management, and sustainability. The scope of Energy Conversion and Management: X encompasses various forms of energy, including mechanical, thermal, nuclear, chemical, electromagnetic, magnetic, and electric energy. It addresses all known energy resources, highlighting both conventional sources like fossil fuels and nuclear power, as well as renewable resources such as solar, biomass, hydro, wind, geothermal, and ocean energy.
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