论文标题

使用无监督的特征聚类分割算法检测光伏电厂中故障模块

Detection of Malfunctioning Modules in Photovoltaic Power Plants using Unsupervised Feature Clustering Segmentation Algorithm

论文作者

Dwivedi, Divyanshi, Yemula, Pradeep Kumar, Pal, Mayukha

论文摘要

向光伏太阳能的能量过渡已发展为发电的可行且可持续的来源。它有效地成为了发展中国家满足其能源需求的常规发电方式的替代方法。因此,在全球范围内已经建立了许多太阳能发电厂。但是,在这些大规模或远程太阳能发电厂中,监视和维护持续为具有挑战性的任务,主要确定光伏(PV)面板中的故障或故障细胞。在本文中,我们使用无监督的深度学习图像分割模型来检测内部故障,例如热点和PV面板中的蜗牛径。通常,培训或地面真相标签不适合大型太阳能发电厂,因此强烈建议使用该模型,因为它不需要任何事先学习或培训。它从输入图像中提取特征,并段片段清除图像中的故障。在这里,我们使用PV面板的红外热图像作为输入,传递给了将群集标签分配给像素的卷积神经网络。此外,使用基于迭代随机梯度下降的反向传播来优化像素标签,特征和模型参数。然后,我们计算相似性损失和空间连续性损失,以将相同的标签分配给具有相似特征和空间连续性的像素,以减少图像分割过程中的噪声。在在线可用数据集中检查了拟议方法的有效性,以识别蜗牛步道和单晶太阳能电池板中的热点故障。

The energy transition towards photovoltaic solar energy has evolved to be a viable and sustainable source for the generation of electricity. It has effectively emerged as an alternative to the conventional mode of electricity generation for developing countries to meet their energy requirement. Thus, many solar power plants have been set up across the globe. However, in these large-scale or remote solar power plants, monitoring and maintenance persist as challenging tasks, mainly identifying faulty or malfunctioning cells in photovoltaic (PV) panels. In this paper, we use an unsupervised deep-learning image segmentation model for the detection of internal faults such as hot spots and snail trails in PV panels. Generally, training or ground truth labels are not available for large solar power plants, thus the proposed model is highly recommended as it does not require any prior learning or training. It extracts the features from the input image and segments out the faults in the image. Here we use infrared thermal images of the PV panel as input, passed to a convolutional neural network which assigns cluster labels to the pixels. Further, optimize the pixel labels, features and model parameters using backpropagation based on iterative stochastic gradient descent. Then, we compute similarity loss and spatial continuity loss to assign the same label to the pixel with similar features and spatial continuity to reduce noises in the image segmentation process. The effectiveness of the proposed approach was examined on an online available dataset for the recognition of snail trails and hot spot failures in monocrystalline solar panels.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源