薛立卡, 王学武, 顾幸生. 基于DTC-MOPSO算法的焊接机器人路径规划[J]. 信息与控制, 2016, 45(6): 713-721. DOI: 10.13976/j.cnki.xk.2016.0713
引用本文: 薛立卡, 王学武, 顾幸生. 基于DTC-MOPSO算法的焊接机器人路径规划[J]. 信息与控制, 2016, 45(6): 713-721. DOI: 10.13976/j.cnki.xk.2016.0713
XUE Lika, WANG Xuewu, GU Xingsheng. Welding Robot Path Planning Based on DTC-MOPSO Algorithm[J]. INFORMATION AND CONTROL, 2016, 45(6): 713-721. DOI: 10.13976/j.cnki.xk.2016.0713
Citation: XUE Lika, WANG Xuewu, GU Xingsheng. Welding Robot Path Planning Based on DTC-MOPSO Algorithm[J]. INFORMATION AND CONTROL, 2016, 45(6): 713-721. DOI: 10.13976/j.cnki.xk.2016.0713

基于DTC-MOPSO算法的焊接机器人路径规划

Welding Robot Path Planning Based on DTC-MOPSO Algorithm

  • 摘要: 点焊机器人在汽车白车身焊接中的应用大大提高了企业的生产效率,本文从焊接路径长度和能量两方面进行焊接机器人多目标路径规划.为了很好地解决这个问题,本文对一种新型多目标粒子群算法(三态协调搜索多目标粒子群优化算法)进行改进,得到适合于求解离散多目标优化问题的离散化三态协调搜索多目标粒子群算法(DTC-MOPSO).通过和两个经典的优化算法比较,DTC-MOPSO算法在分散性和收敛性方面都有很好的优化性能.最后运用Matlab机器人工具箱对机器人的运动学、逆运动学以及逆动力学进行分析以求解机器人的路径长度和能耗,并将改进的算法应用于焊接机器人路径规划中,结果显示规划后的路径明显优于另外两种算法.

     

    Abstract: The application of spot welding robots to automobile body-in-white welding has greatly improved the production efficiency of automobiles. Multi-objective welding robot path planning focusing on path length and energyoptimization is solved. To solve the problem, after a new multi-objective particle swarm optimization algorithm (multi-objective partical swarm optimization algorithm based on three status coordinating searching, TC-MOPSO) is improved, a discrete multi-objective particle swarm optimization algorithm based on three status coordinating searching (DTC-MOPSO) is presented to solve the discrete multi-objective optimization problem. Compared with two classical multi-objective optimization algorithms, high competition in terms of convergence and diversity metrics of the DTC-MOPSO algorithm is proved. In addition, MATLAB toolbox robotics is used to analyze a robot's kinematics, inverse kinematics, and inverse dynamics to obtain the path length and energy consumption. The improved algorithm is used to optimize welding robot path planning, and the result is obviously superior to the other algorithms.

     

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