
测绘学报 ›› 2026, Vol. 55 ›› Issue (4): 604-617.doi: 10.11947/j.AGCS.2026.20250393
• 海岸带与海洋测绘遥感 • 上一篇
付波霖1(
), 黄柯越1, 杨艳丽2, 孙伟伟3,4,5(
), 王朝茵1
收稿日期:2025-09-19
修回日期:2026-03-13
发布日期:2026-05-11
通讯作者:
孙伟伟
E-mail:fubolin@glut.edu.cn;sunweiwei@nbu.edu.cn
作者简介:付波霖(1988—),男,教授,研究方向为湿地精细遥感。 E-mail:fubolin@glut.edu.cn
基金资助:
bolin FU1(
), Keyue HUANG1, Yanli YANG2, Weiwei SUN3,4,5(
), Zhaoyin WANG1
Received:2025-09-19
Revised:2026-03-13
Published:2026-05-11
Contact:
Weiwei SUN
E-mail:fubolin@glut.edu.cn;sunweiwei@nbu.edu.cn
About author:FU Bolin (1988—), male, professor, majors in fine wetland remote sensing. E-mail: fubolin@glut.edu.cn
Supported by:摘要:
红树林作为海岸带生态系统的重要组成部分,探明其中的土壤有机碳(SOC)含量对评估海岸带生态系统的储碳能力具有重大意义。目前国内外对于红树林土壤的研究比较匮乏,为解决红树林土壤光谱特征不明晰,SOC敏感光谱子域难探索的问题,本文提出连续小波光谱相似角解析方法(CSS),用于系统解析红树林土壤光谱响应机制;同时构建土壤敏感光谱子域捕捉方法,实现多场景下SOC敏感光谱子域的精准挖掘。以地面原位全谱段高光谱数据(350~2500 nm)为数据源,联合上述方法探究不同深度、树种及生境3类场景下红树林土壤的光谱反射机理,并进一步构建自适应集成模型(AEL),完成3类场景下SOC含量的高精度反演。在此基础上,通过因子分析量化3类场景对SOC含量的影响程度,结合显著性检验,揭示红树林SOC含量与深度、树种、生境的内在关联。研究结果表明:①400~800 nm波段区间的土壤光谱与红树林SOC含量存在显著相关性,其中600 nm附近光谱与SOC含量的线性关联更为突出;②不同深度土壤的敏感光谱子域主要集中于350~800 nm波段,不同树种土壤的敏感光谱子域以600~900 nm波段为主,而不同生境土壤的敏感光谱子域则分布于350~900 nm与1500~2200 nm两个波段区间;③AEL模型可有效实现SOC含量高精度反演,在42个反演方案中,决定系数R2介于0.46~0.98之间,即0~60 cm土壤深度范围内,0~10 cm土层的SOC反演效果最优(R2=0.96),且该土层SOC含量最高,占比达25.05%;5个红树林树种中,海莲林下土壤的SOC反演效果最佳(R2=0.97),其SOC含量亦最高,占比为27.16%;3种生境中,近自然恢复区的SOC反演精度最高,且SOC含量占比达45.24%。本文系统阐明了不同场景下红树林土壤的光谱响应机制,精准捕获其SOC诊断性光谱波段,实现了SOC含量的高精度反演,其中红树林土壤诊断性谱段的挖掘能够精准匹配卫星影像的波段,为大范围、多场景下海岸带蓝碳的高光谱遥感估算提供了科学支撑。
中图分类号:
付波霖, 黄柯越, 杨艳丽, 孙伟伟, 王朝茵. 基于实测全谱段高光谱数据的多场景红树林土壤光谱响应特性解析及土壤有机碳含量反演[J]. 测绘学报, 2026, 55(4): 604-617.
bolin FU, Keyue HUANG, Yanli YANG, Weiwei SUN, Zhaoyin WANG. Multi-scene analysis of mangrove soil spectral response characteristics and inversion of soil organic carbon content based on measured full-spectrum hyperspectral data[J]. Acta Geodaetica et Cartographica Sinica, 2026, 55(4): 604-617.
表1
不同土壤深度下红树林SOC反演结果"
| 深度/cm | 反演精度(R2) | 最优反演基模型 | ||||
|---|---|---|---|---|---|---|
| Max | Mid | Min | Max | Mid | Min | |
| 0~10 | 0.65 | 0.95 | 0.96 | AEL-PLS | AEL-XGBoost | AEL-RF |
| 10~20 | 0.60 | 0.55 | 0.46 | AEL-RF | AEL-PLS | AEL-PLS |
| 20~30 | 0.75 | 0.77 | 0.76 | AEL-PLS | AEL-PLS | AEL-PLS |
| 30~40 | 0.88 | 0.82 | 0.50 | AEL-RF | AEL-PLS | AEL-PLS |
| 40~50 | 0.82 | 0.63 | 0.57 | AEL-XGBoost | AEL-PLS | AEL-PLS |
| 50~60 | 0.90 | 0.79 | 0.71 | AEL-XGBoost | AEL-RF | AEL-XGBoost |
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