Arid Land Geography ›› 2023, Vol. 46 ›› Issue (1): 103-114.doi: 10.12118/j.issn.1000-6060.2022.277
• Biology and Pedology • Previous Articles Next Articles
WEI Huimin1(),JIA Keli1(),ZHANG Xu1,ZHANG Junhua2
Received:
2022-06-11
Revised:
2022-07-17
Online:
2023-01-25
Published:
2023-02-21
WEI Huimin, JIA Keli, ZHANG Xu, ZHANG Junhua. Prediction of soil salinity based on machine learning and multispectral remote sensing in Yinchuan Plain[J].Arid Land Geography, 2023, 46(1): 103-114.
Tab. 1
Statistics of soil sample in Yinchuan Plain"
深度/cm | 程度 | 含盐量/g·kg-1 | 样本数 | 含盐量均值 /g·kg-1 | 含盐量最大值 /g·kg-1 | 含盐量最小值 /g·kg-1 | 变异系数 /% | 总样本变异 系数/% |
---|---|---|---|---|---|---|---|---|
0~20 | 非盐渍化 | <1 | 75 | 0.510 | 0.983 | 0.097 | 41.295 | 172.327 |
轻度盐渍化 | 1~2 | 32 | 1.522 | 1.946 | 1.058 | 18.823 | ||
中度盐渍化 | 2~4 | 20 | 2.819 | 3.667 | 2.003 | 20.119 | ||
重度盐渍化 | 4~6 | 12 | 4.734 | 5.803 | 4.122 | 11.538 | ||
盐土 | >6 | 27 | 15.104 | 43.725 | 6.676 | 59.548 | ||
20~40 | 非盐渍化 | <1 | 101 | 0.566 | 0.997 | 0.308 | 30.428 | 132.278 |
轻度盐渍化 | 1~2 | 34 | 1.471 | 1.979 | 1.020 | 17.701 | ||
中度盐渍化 | 2~4 | 23 | 2.674 | 3.752 | 2.015 | 19.605 | ||
重度盐渍化 | 4~6 | 4 | 4.387 | 5.276 | 4.038 | 13.545 | ||
盐土 | >6 | 4 | 9.872 | 17.929 | 6.274 | 55.894 |
Tab. 2
Calculation formulas of salt indices"
盐分指数 | 计算公式 | 参考文献 |
---|---|---|
SI-T | 100(Red-NIR) | 刘旭辉等[ |
NDSI | (Red-NIR)/(Red+NIR) | Amal等[ |
S1 | Blue/Red | Sahana等[ |
S2 | (Blue-Red)/(Blue+Red) | Nguyen等[ |
S3 | (Green×Red)/Blue | Nguyen等[ |
S4 | 樊彦国等[ | |
S5 | (Blue×Red)/Green | 孙亚楠等[ |
S6 | (Red×NIR)/Green | 孙亚楠等[ |
SI1 | 樊彦国等[ | |
SI2 | 樊彦国等[ | |
SI3 | 赵巧珍等[ |
Tab. 4
Correlation between model parameters and soil salinity"
参数类型 | 参数 | 与0~20 cm土壤相关系数(r1) | 与20~40 cm土壤相关系数(r2) |
---|---|---|---|
盐渍化影响因子 | 土壤pH | 0.034 | 0.030 |
土壤含水率 | 0.103 | 0.102 | |
高程 | -0.253** | -0.114 | |
土地利用强度 | -0.403** | -0.255** | |
增强植被指数 | -0.580** | -0.311** | |
水体指数 | 0.511** | 0.271** | |
地表温度 | -0.445** | -0.119** | |
地下水埋深 | -0.477** | -0.204** | |
地下水矿化度 | 0.768** | 0.254** | |
人口密度 | -0.023 | 0.048 | |
生产总值 | -0.173* | -0.025 | |
盐分指数 | S1 | 0.492** | 0.402** |
S2 | 0.480** | 0.388** | |
S3 | -0.230** | -0.054 | |
S4 | 0.049 | 0.210** | |
S5 | 0.067 | 0.229** | |
S6 | -0.309** | -0.093 | |
SI1 | -0.032 | 0.136 | |
SI2 | -0.130* | 0.069 | |
SI3 | -0.043 | 0.127* | |
NDSI | 0.325** | 0.204** | |
SI-T | 0.347** | 0.182* |
Tab. 5
Machine learning models based on different variable groups"
变量组 | 模型类别 | 建模集(n=110) | 验证集(n=56) | |||
---|---|---|---|---|---|---|
R2 | RMSE | R2 | RSME | |||
影响因子组 (0~20 cm) | SVM | 0.766 | 3.397 | 0.542 | 3.266 | |
BPNN | 0.773 | 2.638 | 0.608 | 3.081 | ||
BNN | 0.797 | 2.751 | 0.618 | 2.986 | ||
盐分指数组 (0~20 cm) | SVM | 0.319 | 5.945 | 0.213 | 4.155 | |
BPNN | 0.311 | 5.878 | 0.206 | 4.405 | ||
BNN | 0.336 | 5.715 | 0.250 | 3.890 | ||
影响因子组 (20~40 cm) | SVM | 0.368 | 1.327 | 0.221 | 2.401 | |
BPNN | 0.314 | 1.353 | 0.331 | 2.221 | ||
BNN | 0.425 | 1.076 | 0.486 | 2.026 | ||
盐分指数组 (20~40 cm) | SVM | 0.440 | 1.032 | 0.436 | 2.079 | |
BPNN | 0.348 | 1.086 | 0.545 | 2.033 | ||
BNN | 0.442 | 1.006 | 0.651 | 1.947 |
Tab. 6
Measured interpolation and predictive pixel statistics"
深度/cm | 盐渍化程度 | 实测插值像元数 | 预测和实测插值相同等级个数 | 相同率/% |
---|---|---|---|---|
0~20 | 非盐渍化 | 3922460 | 3221641 | 82.13 |
轻度盐渍化 | 1925470 | 1409137 | 73.18 | |
中度盐渍化 | 779011 | 648843 | 83.29 | |
重度盐渍化 | 764161 | 602002 | 78.78 | |
盐土 | 507095 | 434657 | 85.72 | |
20~40 | 非盐渍化 | 4279527 | 3613169 | 84.43 |
轻度盐渍化 | 2413166 | 2046062 | 84.79 | |
中度盐渍化 | 722601 | 538546 | 74.53 | |
重度盐渍化 | 311423 | 274697 | 88.21 | |
盐土 | 171493 | 144933 | 84.51 |
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