This study presents an integrated smart construction monitoring system that combines point cloud data (PCD) from a 3D laser scanner with real-time IoT sensors and ultra-wideband (UWB) indoor positioning technology to enhance construction site safety and quality management. The system addresses the limitations of traditional BIM-based methods by leveraging high-precision PCD that accurately reflects actual site conditions. Field validation was conducted over 17 days at a residential construction site, focusing on two floors during concrete pouring. The concrete strength prediction model, based on the ASTM C1074 maturity method, achieved prediction accuracy within 1-2 MPa of measured values (e.g., predicted: 26.2 MPa vs. actual: 25.3 MPa at 14 days). The UWB-based worker localization system demonstrated a maximum positioning error of 1.44 m with 1 s update intervals, enabling real-time tracking of worker movements. Static accuracy tests showed localization errors of 0.80-0.94 m under clear line-of-sight and 1.14-1.26 m under partial non-line-of-sight. The integrated platform successfully combined PCD visualization with real-time sensor data, allowing construction managers to monitor concrete curing progress and worker safety simultaneously.
Implementation of Integrated Smart Construction Monitoring System Based on Point Cloud Data and IoT Technique.
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作者:Kim Ju-Yong, Kang Suhyun, Cho Jungmin, Jeong Seungjin, Kim Sanghee, Sung Youngje, Lee Byoungkil, Kim Gwang-Hee
| 期刊: | Sensors | 影响因子: | 3.500 |
| 时间: | 2025 | 起止号: | 2025 Jun 26; 25(13):3997 |
| doi: | 10.3390/s25133997 | ||
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