Estimation of the Physical Progress of Work Using UAV and BIM in Construction Projects

Jose Manuel Palomino Ojeda, Lenin Quiñones Huatangari, Billy Alexis Cayatopa Calderón, José Luis Piedra Tineo, Christiaan Zayed Apaza Panca, Manuel Emilio Milla Pino
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Abstract

The delay in the physical progress of construction creates additional costs, missed deadlines, and quality issues. The research aimed to estimate the physical progress of the project by using unmanned aerial vehicles (UAVs) and building information modeling (BIM). The methodology comprised capturing 848 high-resolution images of the Civil Engineering Laboratory construction site at the National University of Jaen, Cajamarca, Peru, using the Phantom 4 RTK drone. The photographs were processed using Agisoft 2.0.1 software, resulting in a point cloud. This was then imported into ReCap Pro 2023 software, which was used to assess the quality of the points. The Revit 2023 software was subsequently utilized to establish the phase parameters, linking the BIM model with the point cloud, filtering the model, and eventually exporting it to the Power BI 2023 software. The work's estimated progress utilizing the proposed methodology was 42.82%, which was not statistically significant compared to the Public Works Information System (INFOBRAS) of 43.14%. This allows for the automation of customary processes, the identification of crucial issues, and prompt decision-making. The study's originality lies in the suggestion of integrating aerial imagery with drones and BIM modeling for the real-time and precise estimation of work progression. This method provides a precise and effective substitute for traditional techniques for gauging the tangible advancement of projects. Doi: 10.28991/CEJ-2024-010-02-02 Full Text: PDF
在建筑项目中使用无人机和 BIM 估算实际工程进度
建筑工程实际进度的延误会造成额外成本、工期延误和质量问题。这项研究旨在利用无人机(UAV)和建筑信息模型(BIM)估算项目的实际进度。研究方法包括使用 Phantom 4 RTK 无人机捕捉秘鲁卡哈马卡哈恩国立大学土木工程实验室施工现场的 848 幅高分辨率图像。使用 Agisoft 2.0.1 软件对照片进行处理,生成点云。然后将其导入 ReCap Pro 2023 软件,用于评估点的质量。随后使用 Revit 2023 软件建立阶段参数,将 BIM 模型与点云连接起来,对模型进行过滤,并最终将其导出到 Power BI 2023 软件。采用建议方法的工程进度估计为 42.82%,与公共工程信息系统(INFOBRAS)的 43.14% 相比,没有统计学意义。这样就可以实现常规流程的自动化,发现关键问题,并迅速做出决策。这项研究的独创性在于建议将无人机航拍图像与 BIM 建模相结合,以实时、精确地估算工程进度。这种方法可精确有效地替代传统技术,衡量项目的实际进展情况。Doi: 10.28991/CEJ-2024-010-02-02 全文:PDF
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