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Research on Optimization of Big Data Construction Engineering Quality Management Based on RNN-LSTM

机译:基于RNN-LSTM的大数据建设工程质量管理优化研究

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Construction industry is the largest data industry, but with the lowest degree of datamation. With the development and maturity of BIM information integration technology, this backward situation will be completely changed. Different business data from a construction phase and operation and a maintenance phase will be collected to add value to the data. As the BIM information integration technology matures, different business data from the design phase to the construction phase are integrated. Because BIM integrates massive, repeated, and unordered feature text data, we first use integrated BIM data as a basis to perform data cleansing and text segmentation on text big data, making the integrated data a “clean and orderly” valuable data. Then, with the aid of word cloud visualization and cluster analysis, the associations between data structures are tapped, and the integrated unstructured data is converted into structured data. Finally, the RNN-LSTM network was used to predict the quality problems of steel bars, formworks, concrete, cast-in-place structures, and masonry in the construction project and to pinpoint the occurrence of quality problems in the implementation of the project. Through the example verification, the algorithm proposed in this paper can effectively reduce the incidence of construction project quality problems, and it has a promotion. And it is of great practical significance to improving quality management of construction projects and provides new ideas and methods for future research on the construction project quality problem.
机译:建筑业是最大的数据产业,但数据化程度最低。随着BIM信息集成技术的发展和成熟,这种落后局面将彻底改变。将收集来自建设阶段,运营阶段和维护阶段的不同业务数据,以为数据增加价值。随着BIM信息集成技术的成熟,从设计阶段到构建阶段的不同业务数据将被集成。由于BIM集成了大量,重复且无序的特征文本数据,因此我们首先使用集成的BIM数据作为对文本大数据执行数据清理和文本分段的基础,从而使集成数据成为“干净且有序的”有价值数据。然后,借助词云可视化和聚类分析,挖掘数据结构之间的关联,并将集成的非结构化数据转换为结构化数据。最后,使用RNN-LSTM网络预测建筑项目中的钢筋,模板,混凝土,现浇结构和砌体的质量问题,并在项目实施过程中查明质量问题的发生。通过实例验证,本文提出的算法可以有效减少建设工程质量问题的发生,具有推广意义。对改善建设项目质量管理具有重要的现实意义,为今后研究建设项目质量问题提供了新的思路和方法。

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