Automatic Quality Inspection and Intelligent Prevention of Prefabricated Building Construction Based on BIM and Fuzzy Logic

Weini Ma
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Abstract

The construction industry plays an important role in China's economy. However, traditional construction quality inspection methods have problems such as low efficiency, high leakage rate, and poor real-time performance. Therefore, taking the appearance quality defects of reinforced concrete engineering as an example, this study combines building information models and computer vision technology. By this way, it can achieve automatic quality inspection and intelligent quality problem prevention, to improve the quality management level during the construction process. In this study, ResNet50 network was pre-trained and classified using a self-made defect image database. After transfer learning, the accuracy values of the training and testing sets remained stable at around 0.95 and the loss value remained stable at around 0.10 after 10 epochs, indicating a significant improvement in learning performance. In the defect area quantification experiment, four corner coordinates of the defect image were calculated. These corner coordinates are simultaneously obtained and saved during on-site image acquisition. According to the calculation results, the defect area of honeycomb is approximately 67.67 square centimetres. These results confirm that this method improves the efficiency and accuracy of quality inspection and has potential application in quality inspection of prefabricated building construction.
基于 BIM 和模糊逻辑的预制装配式建筑施工质量自动检测与智能预防
建筑业在中国经济中发挥着重要作用。然而,传统的建筑质量检测方法存在效率低、漏检率高、实时性差等问题。因此,本研究以钢筋混凝土工程外观质量缺陷为例,将建筑信息模型与计算机视觉技术相结合。通过这种方式,可以实现自动质量检测和智能质量问题预防,提高施工过程中的质量管理水平。本研究使用自建的缺陷图像数据库对 ResNet50 网络进行预训练和分类。经过迁移学习后,训练集和测试集的准确率值稳定在 0.95 左右,损失值在 10 个 epoch 后稳定在 0.10 左右,表明学习性能有了显著提高。在缺陷区域量化实验中,计算了缺陷图像的四个角坐标。这些角坐标是在现场图像采集过程中同时获得并保存的。根据计算结果,蜂窝的缺陷面积约为 67.67 平方厘米。这些结果证实,该方法提高了质量检测的效率和准确性,在预制建筑施工质量检测中具有潜在的应用价值。
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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