Journal of Hydroelectric Engineering ›› 2025, Vol. 44 ›› Issue (10): 59-72.doi: 10.11660/slfdxb.20251006
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Abstract: Concrete dams are a dam type commonly used in large-scale hydraulic engineering projects; the detection of their reinforcement mesh configurations during construction is fundamental to quality control and the application of intelligent equipment. However, for multi-layer reinforcement in high-noise environments, previous studies have struggled to achieve high-accuracy perception and recognition. This study presents a new intelligent perception and recognition method of high accuracy for such reinforcement mesh structures utilizing 3D LiDAR technology. First, we develop a multi-stage data denoising and preprocessing method based on SOR-DBSCAN-Tensor Voting to enhance the quality and usability of raw data. Then, we adopt the MLESAC algorithm and weighted least squares to formulate a progressive procedure for refined fitting of reinforcement meshes. Finally, a new method for plane fitting of dual-layer reinforcement meshes based on 2D projection MLESAC is implemented to tackle data loss caused by occlusion. And, by integrating this method with the point cloud density maps, the spatial position of the mesh is determined, realizing an effective use of incomplete point cloud data. In a case study of the Tuxikou reservoir, numerical experiments demonstrate our method is effective in leveraging the LiDAR equipment and has achieved refined fitting and reconstruction of the dual-layer reinforcement mesh structures under high-noise conditions, useful for construction site quality control and intelligent equipment application.
Key words: hydraulic engineering, LiDAR, reinforcement structure detection, high-noise data, fine-scale fitting
GUAN Tao, YU Hao, CHEN Purui, REN Bingyu, GUO Zhenbang. Study on intelligent perception and recognition method for dual-layer reinforcement in concrete dams under high-noise conditions[J].Journal of Hydroelectric Engineering, 2025, 44(10): 59-72.
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URL: http://www.slfdxb.cn/EN/10.11660/slfdxb.20251006
http://www.slfdxb.cn/EN/Y2025/V44/I10/59
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