基于改進鯨魚優(yōu)化算法的AGV多目標問題路徑規(guī)劃

打開文本圖片集
中圖分類號:TP242.2 文獻標識碼:A
Path Planning for AGV Multi-objective Problem Based on Improved Whale Optimization Algorithm
LIU Yong,SUN Chuanzhu,F(xiàn)U Chaoxing (Collge of Mechanical and Electrical Engineering,Qingdao University,Qingdao 266071,China)
Abstract: To address the issue that traditional path planning algorithms cannot effectively solve the multi-objective problem of Automated Guided Vehicle (AGV) in path planning,the standard whale optimization algorithm is improved. Tent chaotic mapping and adaptive nonlinear dynamic inertia weight are introduced into the standard whale optimization algorithm,and the convergence factor and search coeficient are improved. Then,the improved algorithm is combined with the A ? algorithm for multi-objective point path planning. The iterative curve and running time of the improved whale optimization algorithm are tested using standard test functions, and a simulation comparison is conducted between the improved whale optimization algorithm and the standard whale optimization algorithm in the same map environment. The results show that,with a fixed population size,the improved whale optimization algorithm has a faster convergence speed and search accuracy compared to the standard whale optimization algorithm.
Keywords: path planning;multi-objective problem;whale optimization algorithm;AGV
隨著科學技術的不斷發(fā)展,AGV作為一種便捷的搬運設備,廣泛應用于汽車制造、航空航天及港口物流等領域。(剩余5656字)