Design of an auxiliary system for quality review of wind turbine operation and maintenance based on deep learning image recognition

Q. Sun, Lianda Duan, Gaoju Li, Nana Lu
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引用次数: 0

Abstract

The cost of operation and maintenance(O&M) has been one of the central budgets in the wind turbines' life cycle. In the final stage of the O&M work, the administrators must manually review the on-site photos to ensure the O&M is qualified, which is time-consuming and ineffective. To improve the efficiency and quality of O&M reviewing work while reducing its costs, we propose an auxiliary reviewing system to optimize the reviewing process. Our system architecture consists of data collection, analysis, and presentation modules. During day times, the data collection module will handle storing and organizing the photos of O&M. The data analysis module will perform duplicate image detection using the MessageDigest Algorithm 5(MD5) and missed image detections through the pre-trained ResNet50 deep learning model. The review results from the analysis module will be fully updated to the database after the analyzing process and rendered into graphs or tables on the webpage when required by the reviewers. Analyses are done in this paper to visualize the functions of each module of the proposed system. The experiment evaluates the performance of three deep learning models, including AlexNet, VGG16, and ResNet50, based on authentic on-site inspection images data from our "first annual inspection" dataset to determine which model yields the best image classification performance. The experimental result reveals that ResNet50 can reach the highest accuracy at 96.2% on the test dataset. Thus, we choose ResNet50 to train the image classifier of our data analysis module.
基于深度学习图像识别的风电机组运维质量评审辅助系统设计
运行维护成本一直是风电机组全生命周期的核心预算之一。在运维工作的最后阶段,管理员必须手动查看现场照片以确保运维合格,这不仅耗时而且效率低下。为了提高运维审核工作的效率和质量,同时降低运维审核的成本,我们提出了一种辅助审核系统来优化运维审核流程。我们的系统架构由数据收集、分析和表示模块组成。白天,数据采集模块负责运维照片的存储和整理。数据分析模块将使用messageddigest Algorithm 5(MD5)执行重复图像检测,并通过预训练的ResNet50深度学习模型执行缺失图像检测。分析模块的评审结果将在分析过程结束后完整更新到数据库中,并根据审稿人的要求在网页上以图表或表格的形式呈现。本文对系统各模块的功能进行了可视化分析。实验基于我们“首次年检”数据集的真实现场检查图像数据,评估了AlexNet、VGG16和ResNet50三种深度学习模型的性能,以确定哪种模型能产生最佳的图像分类性能。实验结果表明,ResNet50在测试数据集上达到了96.2%的最高准确率。因此,我们选择ResNet50来训练我们数据分析模块的图像分类器。
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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