Song Junfang, Pu Yuanyuan, Xu Xiaoyu
College of Information Engineering, Xizang Minzu University, No. 6, East Section of Wenhui Road, Weicheng District, Xianyang 712082, China.
Sensors (Basel). 2024 Feb 8;24(4):1098. doi: 10.3390/s24041098.
For the precise measurement of complex surfaces, determining the position, direction, and path of a laser sensor probe is crucial before obtaining exact measurements. Accurate surface measurement hinges on modifying the overtures of a laser sensor and planning the scan path of the point laser displacement sensor probe to optimize the alignment of its measurement velocity and accuracy. This manuscript proposes a 3D surface laser scanning path planning technique that utilizes adaptive ant colony optimization with sub-population and fuzzy logic (SFACO), which involves the consideration of the measurement point layout, probe attitude, and path planning. Firstly, this study is based on a four-coordinate measuring machine paired with a point laser displacement sensor probe. The laser scanning four-coordinate measuring instrument is used to establish a coordinate system, and the relationship between them is transformed. The readings of each axis of the object being measured under the normal measuring attitude are then reversed through the coordinate system transformation, thus resulting in the optimal measuring attitude. The nominal distance matrix, which demonstrates the significance of the optimal measuring attitude, is then created based on the readings of all the points to be measured. Subsequently, a fuzzy ACO algorithm that integrates multiple swarm adaptive and dynamic domain structures is suggested to enhance the algorithm's performance by refining and utilizing multiple swarm adaptive and fuzzy operators. The efficacy of the algorithm is verified through experiments with 13 popular TSP benchmark datasets, thereby demonstrating the complexity of the SFACO approach. Ultimately, the path planning problem of surface 3D laser scanning measurement is addressed by employing the proposed SFACO algorithm in conjunction with a nominal distance matrix.
对于复杂曲面的精确测量,在获得精确测量结果之前,确定激光传感器探头的位置、方向和路径至关重要。精确的表面测量取决于调整激光传感器的初始设置,并规划点激光位移传感器探头的扫描路径,以优化其测量速度和精度的匹配。本文提出了一种三维表面激光扫描路径规划技术,该技术利用带有子种群和模糊逻辑的自适应蚁群优化算法(SFACO),其中涉及测量点布局、探头姿态和路径规划的考虑。首先,本研究基于一台配备点激光位移传感器探头的四坐标测量机。利用激光扫描四坐标测量仪建立坐标系,并对它们之间的关系进行转换。然后,通过坐标系变换将被测物体在正常测量姿态下各轴的读数进行反向转换,从而得到最优测量姿态。基于所有待测点的读数创建标称距离矩阵,该矩阵体现了最优测量姿态的重要性。随后,提出了一种集成多种群体自适应和动态域结构的模糊蚁群算法,通过细化和利用多种群体自适应和模糊算子来提高算法性能。通过对13个流行的旅行商问题(TSP)基准数据集进行实验验证了该算法的有效性,从而证明了SFACO方法的复杂性。最终,通过将所提出的SFACO算法与标称距离矩阵相结合,解决了表面三维激光扫描测量的路径规划问题。