Real-time Solar Array Data Acquisition and Fault Detection using Neural Networks

Sunil Rao, Deep Pujara, A. Spanias, C. Tepedelenlioğlu, Devarajan Srinivasan
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引用次数: 0

Abstract

Continuous real-time solar system monitoring for fault detection and classification can improve solar panel efficiency and overall output. In this study, we developed and implemented a real-time PV fault detection system based on machine learning. The system was implemented on an 18kW testbed facility which consists of 104 solar panels located at the ASU Research Park. Each solar panel is connected to a smart monitoring device (SMD) which obtains real-time voltage and current measurements. SMDs are attached to each panel and transmit all the acquired data to a server that is connected to the internet. We implement fault detection using real-time measurements and various neural network architectures. We train and test both fully connected and dropout neural networks with different dropout regularization. We use both a real-time dataset and a synthetic dataset and present comparative results. We train and classify for the following conditions: soiled panels, shaded and degraded panels, and standard test conditions.
基于神经网络的太阳能阵列实时数据采集与故障检测
对太阳能系统进行连续的实时监测,进行故障检测和分类,可以提高太阳能电池板的效率和整体产量。在这项研究中,我们开发并实现了一个基于机器学习的实时光伏故障检测系统。该系统在位于亚利桑那州立大学研究园区的一个由104块太阳能电池板组成的18kW试验台设施上实施。每个太阳能电池板都连接到一个智能监控设备(SMD),该设备可以实时测量电压和电流。smd连接到每个面板上,并将所有采集到的数据传输到连接到互联网的服务器。我们使用实时测量和各种神经网络架构实现故障检测。我们用不同的dropout正则化方法训练和测试了完全连接和dropout神经网络。我们同时使用了实时数据集和合成数据集,并给出了比较结果。我们针对以下条件进行培训和分类:受污染的面板,阴影和退化的面板,以及标准测试条件。
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