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通过地面建模实现正则化卷积网络在光伏制造设施中的自动化微裂纹检测

Automated Micro-Crack Detection within Photovoltaic Manufacturing Facility via Ground Modelling for a Regularized Convolutional Network.

作者信息

Animashaun Damilola, Hussain Muhammad

机构信息

Department of Computer Science, Centre for Industrial Analytics, School of Computing and Engineering, University of Huddersfield, Queensgate, Huddersfield HD1 3DH, UK.

出版信息

Sensors (Basel). 2023 Jul 7;23(13):6235. doi: 10.3390/s23136235.

Abstract

The manufacturing of photovoltaic cells is a complex and intensive process involving the exposure of the cell surface to high temperature differentials and external pressure, which can lead to the development of surface defects, such as micro-cracks. Currently, domain experts manually inspect the cell surface to detect micro-cracks, a process that is subject to human bias, high error rates, fatigue, and labor costs. To overcome the need for domain experts, this research proposes modelling cell surfaces via representative augmentations grounded in production floor conditions. The modelled dataset is then used as input for a custom 'lightweight' convolutional neural network architecture for training a robust, noninvasive classifier, essentially presenting an automated micro-crack detector. In addition to data modelling, the proposed architecture is further regularized using several regularization strategies to enhance performance, achieving an overall F1-score of 85%.

摘要

光伏电池的制造是一个复杂且密集的过程,涉及电池表面暴露于高温差和外部压力之下,这可能导致表面缺陷的产生,比如微裂纹。目前,领域专家通过人工检查电池表面来检测微裂纹,这个过程容易受到人为偏差、高错误率、疲劳以及劳动力成本的影响。为了克服对领域专家的需求,本研究提出通过基于生产车间条件的代表性增强来对电池表面进行建模。然后,将建模后的数据集用作定制“轻量级”卷积神经网络架构的输入,以训练一个强大的、非侵入式分类器,本质上就是呈现一个自动微裂纹检测器。除了数据建模之外,所提出的架构还使用了几种正则化策略进行进一步正则化,以提高性能,实现了85%的总体F1分数。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/74f9/10346706/eb1da2755a2a/sensors-23-06235-g001.jpg

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