Deep Learning-Based Fault Detection and Isolation in Solar Plants for Highly Dynamic Days

Sara Ruiz-Moreno, A. Gallego, Adolfo J. Sánchez, E. Camacho
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引用次数: 1

Abstract

Solar plants are exposed to numerous agents that degrade and damage their components. Due to their large size and constant operation, it is not easy to access them constantly to analyze possible failures on-site. It is, therefore, necessary to use techniques that automatically detect faults. In addition, it is crucial to detect the fault and know its location to deal with it as quickly and effectively as possible. This work applies a fault detection and isolation method to parabolic trough collector plants. A characteristic of solar plants is that they are highly dependent on the sun and the existence of clouds throughout the day, so it is not easy to achieve methods that work well when disturbances are too variable and difficult to predict. This work proposes dynamic artificial neural networks (ANNs) that take into account past information and are not so sensitive to the variations of the plant at each moment. With this, three types of failures are distinguished: failures in the optical efficiency of the mirrors, flow rate, and thermal losses in the pipes. Different ANNs have been proposed and compared with a simple feedforward ANN, obtaining an accuracy of 73.35%.
基于深度学习的太阳能电站高动态天气故障检测与隔离
太阳能发电厂暴露在许多会降解和损坏其组件的物质中。由于它们的体积很大,并且经常运行,因此不容易经常访问它们,以便在现场分析可能出现的故障。因此,有必要使用自动检测故障的技术。此外,检测故障并了解其位置对于尽可能快速有效地处理故障至关重要。本文将一种故障检测与隔离方法应用于抛物线槽集热器。太阳能发电厂的一个特点是,它们全天高度依赖太阳和云层的存在,因此,在干扰变化太大、难以预测的情况下,要找到行之有效的方法并不容易。这项工作提出了动态人工神经网络(ann),它考虑了过去的信息,并且对植物在每个时刻的变化不那么敏感。通过这种方法,可以区分出三种类型的故障:反射镜的光学效率、流量和管道中的热损失。提出了不同的人工神经网络,并与一个简单的前馈人工神经网络进行了比较,得到了73.35%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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