Arid Land Geography ›› 2026, Vol. 49 ›› Issue (3): 549-558.doi: 10.12118/j.issn.1000-6060.2025.411
• Biology and Pedology • Previous Articles Next Articles
YANG Mingxin1,2,3,4(
), NING Xiaochun2, YANG Liusheng2, ZHANG Yafei2, SHI Mingming2, KANG Yanbin2, HUANGQING Dongzhi2, WANG Shouxing2, ZHOU Huakun3(
)
Received:2025-07-15
Revised:2025-09-09
Online:2026-03-25
Published:2026-03-24
Contact:
ZHOU Huakun
E-mail:ymxin@bjfu.edu.cn;hkzhou@nwipb.cas.cn
YANG Mingxin, NING Xiaochun, YANG Liusheng, ZHANG Yafei, SHI Mingming, KANG Yanbin, HUANGQING Dongzhi, WANG Shouxing, ZHOU Huakun. Inversion of soil salinization in alpine grasslands based on explainable machine learning models[J].Arid Land Geography, 2026, 49(3): 549-558.
Tab. 1
Calculation formulas of salinity indices"
| 光谱指数 | 计算公式 | 参考文献 |
|---|---|---|
| 盐分指数(S1) | Blue/Re d | [ |
| 盐分指数(S2) | (Blue-Re d)/(Blue+Re d) | [ |
| 盐分指数(S3) | Green×Re d/Blue | [ |
| 盐分指数(S4) | [ | |
| 盐分指数(S5) | Blue×Re d/Green | [ |
| 盐分指数(S6) | Re d×NIR/Green | [ |
| 盐分指数(S7) | [ | |
| 盐分指数(S8) | (Green+Re d)/2 | [ |
| 盐分指数(S9) | (Green+Re d+NIR)/2 | [ |
| 盐分指数(SI) | [ | |
| 盐分指数(SI_T) | Re d×NIR×100 | [ |
| 盐分指数(SI1) | [ | |
| 盐分指数(SI2) | [ | |
| 盐分指数(SI3) | [ | |
| 盐分指数(SI4) | Swir1/NIR | [ |
| 归一化盐分指数(NDSI) | (Re d-NIR)/(Re d+NIR) | [ |
| 归一化植被指数(NDVI) | (NIR-Re d)/(NIR+Re d) | [ |
| 增强型植被指数(EVI) | [ | |
| 归一化物候指数(NDPI) | [ | |
| 红外植被指数(IPVI) | NIR/(NIR+Re d) | [ |
| 归一化水体指数(NDWI) | (NIR-Swir1)/(NIR+Swir1) | [ |
| 土壤调节植被指数(SAVI) | [ |
Tab. 2
Statistical analysis of measured soil salinity"
| 盐渍化等级 | 分级标准/g·kg-1 | 样本量 | 最小值/g·kg-1 | 最大值/g·kg-1 | 平均值/g·kg-1 | 标准差/g·kg-1 | 变异系数/% |
|---|---|---|---|---|---|---|---|
| 非盐渍化 | <1 | 18 | 0.57 | 0.95 | 0.80 | 0.12 | 15.44 |
| 轻度盐渍化 | 1~2 | 86 | 1.00 | 1.99 | 1.44 | 0.29 | 19.88 |
| 中度盐渍化 | 2~4 | 17 | 2.00 | 3.56 | 2.66 | 0.50 | 18.76 |
| 重度盐渍化 | 4~6 | 4 | 4.30 | 5.56 | 4.90 | 0.56 | 11.46 |
| 盐土 | ≥6 | 4 | 6.01 | 11.65 | 8.07 | 2.51 | 31.12 |
| 所有实测数据 | 129 | 0.57 | 11.65 | 3.57 | 1.45 | 40.61 |
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