Teta Ali, Korich Belkacem, Bakria Derradji, Hadroug Nadji, Rabehi Abdelaziz, Alsharef Mohammad, Bajaj Mohit, Zaitsev Ievgen, Ghoneim Sherif S M
Department of Electrical Engineering, Faculty of Science and Technology, University of Djelfa, Djelfa, Algeria.
Applied Automation and Industrial Diagnostics Laboratory LAADI, University of Djelfa, Djelfa, Algeria.
Sci Rep. 2024 Aug 14;14(1):18907. doi: 10.1038/s41598-024-69890-7.
Early fault detection and diagnosis of grid-connected photovoltaic systems (GCPS) is imperative to improve their performance and reliability. Low-cost edge devices have emerged as innovative solutions for real-time monitoring, reducing latency, and improving response times. In this work, a lightweight Convolutional Neural Network (CNN) is designed and fine-tuned using Energy Valley Optimizer (EVO) for fault diagnosis. The CNN input consists of two-dimensional scalograms generated using Continuous Wavelet Transform (CWT). The proposed diagnosis technique demonstrated superior performance compared to benchmark architectures, namely MobileNet, NASNetMobile, and InceptionV3, achieving higher test accuracies and lower losses on binary and multi-fault classification tasks on balanced, unbalanced, and noisy datasets. Further, a quantitative comparison is conducted with similar recent studies. The obtained results indicate good performance and high reliability of the proposed fault diagnosis method.
并网光伏系统(GCPS)的早期故障检测与诊断对于提高其性能和可靠性至关重要。低成本边缘设备已成为实时监测、减少延迟和缩短响应时间的创新解决方案。在这项工作中,设计了一种轻量级卷积神经网络(CNN),并使用能量谷优化器(EVO)进行微调以用于故障诊断。CNN的输入由使用连续小波变换(CWT)生成的二维尺度图组成。与基准架构(即MobileNet、NASNetMobile和InceptionV3)相比,所提出的诊断技术表现出卓越的性能,在平衡、不平衡和有噪声数据集上的二元和多故障分类任务中实现了更高的测试准确率和更低的损失。此外,还与近期的类似研究进行了定量比较。所得结果表明所提出的故障诊断方法具有良好的性能和高可靠性。