Arid Land Geography ›› 2026, Vol. 49 ›› Issue (6): 1192-1202.doi: 10.12118/j.issn.1000-6060.2025.314
• Vegetation and Pedology • Previous Articles Next Articles
LI Zhanhu1,2(
), GUO Zhonghua1,2(
), MA Jiaqiang1,2, LI Leilei1,2
Received:2025-06-04
Revised:2025-07-14
Online:2026-06-25
Published:2026-06-29
Contact:
GUO Zhonghua
E-mail:06222072@163.com;guozhh@nxu.edu.cn
LI Zhanhu, GUO Zhonghua, MA Jiaqiang, LI Leilei. Soil moisture inversion based on multi-source remote sensing feature parameter and ACNN[J].Arid Land Geography, 2026, 49(6): 1192-1202.
Tab. 2
Feature parameters related to active microwave remote sensing"
| 原特征参数 | 融合特征参数 | |
|---|---|---|
| 入射角(θ) | 余弦函数(cosθ) | 正弦函数(sinθ) |
| 同极后向散射系数(σVV) | 指数同极极化后向散射系数(expσVV) | 对数同极极化后向散射系数(logσVV) |
| 交叉后向散射系数(σVH) | 指数交叉极化后向散射系数(expσVH) | 对数交叉极化后向散射系数(logσVH) |
| 海拔(Ev) | 指数后向散射系数极化比 | 对数后向散射系数极化比 |
| 同极与交叉极化后向散射系数之和(σVV+σVH) | 同极与交叉极化后向散射系数之差(σVV-σVH) | |
| 同极与交叉极化后向散射系数之积( | 同极与交叉后向散射系数极化比( | |
Tab. 3
Optimal feature parameter pearson correlation coefficient ranking"
| 序号 | 特征参数 | 皮尔逊相关系数 |
|---|---|---|
| 1 | -0.8954 | |
| 2 | logσVV | 0.3974 |
| 3 | logσVH | -0.3297 |
| 4 | cosθ | 0.3045 |
| 5 | NDVI | 0.2804 |
| 6 | Ev | 0.1724 |
Tab. 4
Comparison of ablation test accuracy results"
| 输入特征参数 | R2减少比 | RMSE增加比 | MAE增加比 |
|---|---|---|---|
| 1.75 | 0.93 | 6.38 | |
| 3.30 | 12.86 | 6.42 | |
| cosθ、Ev、NDVI | 4.80 | 34.92 | 19.62 |
| 5.71 | 18.76 | 20.36 | |
| cosθ、NDVI | 18.56 | 68.02 | 44.73 |
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