Shiqing MaPing YangBoheng LaiChunxuan SuZhao WangKangjian YangRuiyan JinTao ChengBing Xu
For a high-power slab solid-state laser, obtaining high output power and high output beam quality are the most important indicators. Adaptive optics systems can significantly improve beam qualities by compensating for the phase distortions of the laser beams. In this paper, we developed an improved algorithm called Adaptive Gradient Estimation Stochastic Parallel Gradient Descent (AGESPGD) algorithm for beam cleanup of a solid-state laser. A second-order gradient of the search point was introduced to modify the gradient estimation, and it was introduced with the adaptive gain coefficient method into the classical Stochastic Parallel Gradient Descent (SPGD) algorithm. The improved algorithm accelerates the search for convergence and prevents it from falling into a local extremum. Simulation and experimental results show that this method reduces the number of iterations by 40%, and the algorithm stability is also improved compared with the original SPGD method.
马士青 Ma Shiqing杨平 Yang Ping赖柏衡 Lai Boheng苏春轩 Su Chunxuan
Haichuan ZhaoHaotong MaPu ZhouXiaolin WangYanxing MaXiao LiXiaojun XuYijun Zhao
梁永辉 Liang Yonghui王三宏 Wang Sanhong龙学军 Long Xuejun于起峰 Yu Qifeng
Sanhong WangYonghui LiangQifeng YuXiaojun XuHaotong Ma
梁钰 Liang Yu黄永梅 Huang Yongmei亓波 Qi Bo边疆 Bian Jiang吴琼雁 Wu Qiongyan