Title :
GPU-based variation of parallel invasive weed optimization algorithm for 1000D functions
Author :
Aijia Ouyang ; Kenli Li ; Libin Liu ; Keqin Li
Author_Institution :
Sch. of Inf. Sci. & Eng., Hunan City Univ., Yiyang, China
Abstract :
Considering the problems of slow convergence and easily getting into local optimum of intelligent optimization algorithms in finding the optimal solution to complex high-dimensional functions, we have proposed an improved invasive weed optimization (IIWO). Concrete adjustments include setting the newborn seeds per plant to a fixed number, changing the initial step and final step to adaptive one, and re-initializing the solution which exceeds the boundary value. Meanwhile, through applying the algorithm to the GPU platform, a parallel IIWO (PIIWO) based on GPU is obtained. The algorithm not only improves the convergence, but also strikes a balance between the global and local search capabilities. The simulation results of solving on the CEC´ 2010 1000-dimensional (1000D) functions, have shown that, compared with other algorithms, our designed IIWO can yield better performance, faster convergence, higher accuracy and stronger robustness; whilst the PIIWO has significant speedup than the IIWO.
Keywords :
graphics processing units; optimisation; parallel processing; 1000D functions; GPU platform; GPU-based variation; IIWO; complex high-dimensional functions; global search capabilities; intelligent optimization algorithms; local search capabilities; parallel IIWO; parallel invasive weed optimization algorithm; Algorithm design and analysis; Graphics processing units; Indexes; Kernel; Optimization; Sociology; Statistics; 1000D function; GPU parallel; adaptive step; fixed seeds; invasive weed optimization; speedup;
Conference_Titel :
Natural Computation (ICNC), 2014 10th International Conference on
Conference_Location :
Xiamen
Print_ISBN :
978-1-4799-5150-5
DOI :
10.1109/ICNC.2014.6975875