Global Path Planning Based on Improved Ant Colony Optimization Algorithm for Geometry
LIU Jie1, YAN Qing-dong1, MA Yue1, TANG Zheng-hua2
1.School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081, China; 2.Simulation Training Center, Academy of Armored Forces, Bengbu 233050, China.
LIU Jie, YAN Qing-dong, MA Yue, TANG Zheng-hua. Global Path Planning Based on Improved Ant Colony Optimization Algorithm for Geometry[J]. Journal of Northeastern University Natural Science, 2015, 36(7): 923-928.
[1]Wen Z Q,Cai Z X.Global path planning approach based on ant colony optimization algorithm [J].Journal of Central South University,2006,13(6):707-712. [2]Chen X,Kong Y Y,Fang X,et al.A fast two-stage ACO algorithm for robotic path planning[J].Neural Computing and Applications,2013,22(2):313-319. [3]王宪,杨国梁.基于改进蚁群算法的机器人轨迹规划[J].计算机系统应用,2010,19(11):79-82.(Wang Xian,Yang Guo-liang.Robot trajectory planning based on improved ant colony algorithm[J]. Computer System & Applications,2010,19(11):79-82.) [4]Gigras Y, Gupta K.Ant colony based path planning algorithm for autonomous robotic vehicles [J].Journal of Artificial Intelligence & Applications,2012,3(6):31-38. [5]Liu Y S.The robot path planning based on region partition to node optimization[J].Advanced Materials Research,2011,38(3):605-609. [6]Ceriotti M, Vasile M .MGA trajectory planning with an ACO-inspired algorithm [J].Acta Astronautica,2011,67(9):1202-1217. [7]Tuncer A,Yildirim M.Dynamic path planning of mobile robots with improved genetic algorithm[J].Computers & Electrical Engineering,2012,38(6):1564 -1572. [8]Castillo O,Neyoy H,Soria J.Dynamic fuzzy logic parameter tuning for ACO and its application in the fuzzy logic control of an autonomous mobile robot[J]. International Journal of Advanced Robotic Systems,2013,383:1-10. [9]Huang H.SoPC-based parallel ACO algorithm and its application to optimal motion controller design for intelligent omnidirectional mobile rob[J].IEEE Transactions on Industrial Informatics,2013,9(4):1828-1835.