%0 Journal Article %A SONG Jia %A BAI Yang %A WANG Xiao-lin %T Damage Analysis of Loess under Dry-Wet Cycles Based on Deep Learning %D 2023 %R 10.11988/ckyyb.20210908 %J Journal of Changjiang River Scientific Research Institute %P 87-94 %V 40 %N 2 %X The aim of this study is to investigate the changes in the microstructure of loess under dry-wet cycles.The gray-scale image texture features of Xi’an loess were extracted based on the gray-level co-occurrence matrix,and the area of cracks and pores in the loess was calculated based on the percentage of the area of cracks and pores.The relationship between the gray-scale texture characteristics and the proportion of cracks and pore areas was established through the deep learning time-series regression prediction model,and the damage degree of loess under dry-wet cycles was determined by calculating the damage factor.Our study revealed that within two dry-wet cycles,the edge structure of soil aggregates was destroyed,and cracks and pores increased sharply;within five dry-wet cycles,the texturing trend of soil structure became more obvious,approaching the direction of parallel water migration;after four times of dry-wet cycle,the damage ratio of loess under dry-wet cycle reached 93.10%;after six dry-wet cycles,the damage no longer increased,which means that the microstructure texturing of the loess stabilized. %U http://ckyyb.crsri.cn/EN/10.11988/ckyyb.20210908