基于卷积神经网络的太阳能板裂纹检测深度学习方法

Vithun V C, M. S, P. V, A. R.
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引用次数: 0

摘要

太阳能电池板是生产电能的有效动力源,利用它可以广泛应用太阳能,这是一种清洁和可再生的传统燃料替代品。然而,制造、交付和安装错误可能会降低发电的效率。此外,检测太阳能电池板表面裂纹对于确保光伏系统的耐用性和有效性至关重要。卷积神经网络通过指示网络找出太阳能电池板照片中的缺陷,为解决这一问题提供了一种实用的方法。在训练过程中,CNN获得了区分正常模式和指示故障模式的能力。经过训练,该网络可以准确有效地检测近期数据中的裂缝。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Approach for Crack Detection in Solar Panels using Convolutional Neural Networks
The utilization of solar panels, which are effective power sources for producing electrical energy, allows for the widespread application of solar energy, a clean and renewable substitute for conventional fuels. However, there is a chance that manufacturing, delivery, and installation errors will lower the effectiveness of power generation. Moreover, detecting surface cracks on solar panels is crucial to ensure the durability and effectiveness of photovoltaic systems. By instructing the network to find flaws in photos of solar panels, convolutional neural networks provide a practical way to address this problem. During training, the CNN gains the ability to distinguish between patterns that are normal and those that indicate a fault. After being trained, the network can accurately and effectively detect fractures in recent data.
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