Inversion of coastal cultivated soil salt content based on multi-source spectra and environmental variables

IF 6.1 1区 农林科学 Q1 SOIL SCIENCE
Pingping Jia , Wei He , Yi Hu , Yanning Liang , Yinku Liang , Lihua Xue , Kazem Zamanian , Xiaoning Zhao
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引用次数: 0

Abstract

Soil salinization seriously hinders the development of efficient ecological agriculture in coastal areas. The use of Landsat, Sentinel series and hyperspectral data is an ideal way for assessing soil salinity indicators. However, environmental data (e.g. climate, terrain and parent material) are important factors for estimating such indicators. It is necessary to find the advantages and limitations of a combination of satellite images, hyperspectral data and environmental variables (ENVI) for assessing soil salinity accurately. Various data or their combinations ([I] remote sensing [RS], i.e. bands and salinity indices of Landsat 9 and Sentinel 2; [II] ENVI, including soil attributes, climate and topography; and [III] RS + ENVI) were used to construct the salinity inversion model using random forest (RF) and extremely randomized trees (ERT) for cultivated areas in the coastal plain of Dongtai City, China. The hyperspectral data were also resampled to match the range of the image bands. RF performed better than ERT for all types of analyzed data, and RS + ENVI exhibited the best performance for Sentinel 2 (R2 = 0.86). Compared with the RS data alone, Landsat 9 and Sentinel 2 provided higher salinity simulations (41% and 126%, respectively) after combination with ENVI, and salinity mapping was closer to the actual soil salinity measurements. The variables of slope, salinity index (SIT), difference index and SIT had the highest contribution in Landsat 9, Sentinel 2 and resampled hyperspectrum based on Landsat 9 and Sentinel 2, respectively. In conclusion, RS + ENVI based on Sentinel 2 data is the recommended approach for monitoring the salt content of coastal cultivated soil.

基于多源光谱和环境变量的沿海耕作土壤含盐量反演
土壤盐碱化严重阻碍了沿海地区高效生态农业的发展。使用大地遥感卫星、哨兵系列和高光谱数据是评估土壤盐碱化指标的理想方法。然而,环境数据(如气候、地形和母质)是估算此类指标的重要因素。因此,有必要找出卫星图像、高光谱数据和环境变量(ENVI)组合在准确评估土壤盐分方面的优势和局限性。本文利用各种数据或数据组合([I] 遥感 [RS],即 Landsat 9 和 Sentinel 2 的波段和盐度指数;[II] ENVI,包括土壤属性、气候和地形;[III] RS + ENVI),采用随机森林(RF)和极随机树(ERT)构建了中国东台市沿海平原耕地盐度反演模型。此外,还对高光谱数据进行了重采样,以匹配图像波段的范围。对于所有类型的分析数据,RF 的性能均优于 ERT,而对于 Sentinel 2,RS + ENVI 的性能最佳(R2 = 0.86)。与单独使用 RS 数据相比,Landsat 9 和 Sentinel 2 结合 ENVI 后的盐度模拟结果更高(分别为 41% 和 126%),盐度绘图更接近实际土壤盐度测量结果。在 Landsat 9、Sentinel 2 以及基于 Landsat 9 和 Sentinel 2 的重采样高光谱中,坡度、盐度指数(SIT)、差异指数和 SIT 变量的贡献率分别最高。总之,基于 Sentinel 2 数据的 RS + ENVI 是监测沿海耕地土壤含盐量的推荐方法。
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来源期刊
Soil & Tillage Research
Soil & Tillage Research 农林科学-土壤科学
CiteScore
13.00
自引率
6.20%
发文量
266
审稿时长
5 months
期刊介绍: Soil & Tillage Research examines the physical, chemical and biological changes in the soil caused by tillage and field traffic. Manuscripts will be considered on aspects of soil science, physics, technology, mechanization and applied engineering for a sustainable balance among productivity, environmental quality and profitability. The following are examples of suitable topics within the scope of the journal of Soil and Tillage Research: The agricultural and biosystems engineering associated with tillage (including no-tillage, reduced-tillage and direct drilling), irrigation and drainage, crops and crop rotations, fertilization, rehabilitation of mine spoils and processes used to modify soils. Soil change effects on establishment and yield of crops, growth of plants and roots, structure and erosion of soil, cycling of carbon and nutrients, greenhouse gas emissions, leaching, runoff and other processes that affect environmental quality. Characterization or modeling of tillage and field traffic responses, soil, climate, or topographic effects, soil deformation processes, tillage tools, traction devices, energy requirements, economics, surface and subsurface water quality effects, tillage effects on weed, pest and disease control, and their interactions.
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