In the Tibetan Plateau, due to lack of raw experimental data sets and proper data analysis method, investigations
on atmosphere laser communication channel (ALCC), especially under rainy condition, are rarely concerned by researchers.
Neural network group and optimal weight initialization technology (OWIT) are adopted in the analysis process.
Firstly, construct neural network group according to different season’s conditions. Secondly, utilize existed raw data sets
of ALCC under rainy condition to choose matching initial weight sets with OWIT. Thirdly, train neural network group
until expected requirement is met. Finally, load rain data sets from the Tibetan Plateau (Lhasa for example) on trained
neural network group to achieve the ultimate channel quality of ALCC. Actual results show that spring rain has the best
quality of ALCC, followed by winter rain, summer rain and autumn rain.