An Efficient Libed and GBLRU-Based Solar Panel Hotspot Detection System Using Thermal Images

P. Pradeep Kumar, M. Rama Prasad Reddy
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Abstract

In the Photovoltaic (PV) system, monitoring, assessing, and detecting the occurred faults is essential. Autonomous diagnostic models are required to examine the solar plants and to detect the anomalies within these PV panels since the prevailing hotspot detection models were unable to detect the faults rapidly and consistently. A novel Log Inverse Bilateral Edge Detector (LIBED) and Gated Bernoulli Logmax Recurrent Unit (GBLRU)-centered Solar Panel (SP) hotspot detection scheme is proposed in this research that analyzed the operating PV module’s thermal images. Images are applied for the image processing steps prior to hotspot detection. By utilizing the Contrast Limited Adaptive Histogram Equalization (CLAHE) model, the image’s contrast has been augmented in the image processing step. The alpha (α) Modified Histogram Blending (αMHB) method is utilized to eliminate the outlier data available in the image. Subsequently, an effective LIBED contour detection method was utilized to detect the SP. Several features are extracted by utilizing the detected panels. Then, optimal features are chosen as of the extracted features by utilizing the Barnacles Mating Optimizer (BMO) algorithm. The GBLRU was utilized to predict the defective panels. The defective panels’ hotspots were isolated by utilizing the Haversine Self-Organizing Map (HSOM) model. The experimental evaluation of the proposed system’s performance is analyzed with the prevailing classifiers. The state-of-art methods were outperformed by the proposed GBLRU-based Hotspot detection system. The efficiency 94.34%, accuracy 97.23%, hot-spot detection rate 91.23% had been attained which were improved outcomes compared to existed models.
基于Libed和gblru的高效太阳能板热图像热点检测系统
在光伏发电系统中,对发生的故障进行监测、评估和检测是必不可少的。由于现有的热点检测模型无法快速、一致地检测到故障,因此需要自主诊断模型来检查太阳能发电厂并检测这些光伏板中的异常情况。本研究提出了一种新的对数逆双边边缘检测器(LIBED)和门控伯努利Logmax循环单元(GBLRU)为中心的太阳能电池板(SP)热点检测方案,分析了运行中的光伏组件的热图像。图像应用于热点检测之前的图像处理步骤。利用对比度有限自适应直方图均衡化(CLAHE)模型,在图像处理步骤中增强了图像的对比度。采用α (α)修正直方图混合(α mhb)方法去除图像中的异常数据。随后,利用有效的LIBED轮廓检测方法对SP进行检测,并利用检测到的面板提取多个特征。然后,利用Barnacles matching Optimizer (BMO)算法从提取的特征中选择最优特征。利用GBLRU对缺陷板进行预测。利用Haversine自组织图(HSOM)模型分离出缺陷板的热点。利用现有的分类器对系统性能进行了实验评价。本文提出的基于gblu的热点检测系统优于现有方法。效率94.34%,准确率97.23%,热点检出率91.23%,均较已有模型有所提高。
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