Timely monitoring of soil water-salt dynamics within cropland by hybrid spectral unmixing and machine learning models

IF 7.3 1区 农林科学 Q1 ENVIRONMENTAL SCIENCES
Ruiqi Du , Junying Chen , Youzhen Xiang , Ru Xiang , Xizhen Yang , Tianyang Wang , Yujie He , Yuxiao Wu , Haoyuan Yin , Zhitao Zhang , Yinwen Chen
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引用次数: 0

Abstract

Soil salinization and water scarcity are main restrictive factors for irrigated agriculture development in arid regions. Knowing dynamics of soil water and salt content is an important antecedent in remediating salinized soils and optimizing irrigation management. Previous studies mostly used remote sensing technologies to individually monitor water or salt content dynamics in agricultural areas. Their ability to asses different levels of crop water and salt management has been less explored. Therefore, how to extract effective diagnostic features from remote sensing images derived spectral information is crucial for accurately estimating soil water and salt content. In this study, Linear spectral unmixing method (LSU) was used to obtain the contribution of soil water and salt to each band spectrum (abundance), and endmember spectra from Sentinel-2 images. Calculating spectral indices and selecting optimal spectal combination were individually based on soil water and salt endmember spectra. The estimation models were constructed using six machine learning algorithms: BP Neural Network (BPNN), Support Vector Regression (SVR), Partial Least Squares Regression (PLSR), Random Forest Regression (RFR), Gradient Boost Regression Tree (GBRT), and eXtreme Gradient Boosting tree (XGBoost). The results showed that the spectral indices calculated from endmember spectra were able to effectively characterize the response of crop spectral properties to soil water and salt, which circumvent spectral ambiguity induced by water-salt mixing. NDRE spectral index was a reliable indicator for estimating water and salt content, with determination coefficients (R2) being 0.55 and 0.57, respectively. Compared to other models, LSU-XGBoost model achieved the best performance. This model properly reflected the process of soil water-salt dynamics in farmland during crop growth period. This study provided new methods and ideas for soil water-salt estimation in dry irrigated agricultural areas, and provided decision support for governance of salinized land and optimal management of irrigation.

利用混合光谱非混合和机器学习模型及时监测耕地内的土壤水盐动态
土壤盐碱化和缺水是干旱地区灌溉农业发展的主要限制因素。了解土壤水分和盐分含量的动态是修复盐碱化土壤和优化灌溉管理的重要前提。以往的研究大多采用遥感技术来单独监测农业地区的水分或含盐量动态。而对其评估不同作物水分和盐分管理水平的能力探索较少。因此,如何从遥感图像的光谱信息中提取有效的诊断特征对于准确估算土壤水分和盐分含量至关重要。本研究采用线性光谱非混合法(LSU)从哨兵-2 图像中获取土壤水分和盐分对各波段光谱(丰度)和内含光谱的贡献率。根据土壤水分和盐分内含物光谱分别计算光谱指数和选择最佳光谱组合。使用六种机器学习算法构建了估算模型:这些算法包括:BP 神经网络(BPNN)、支持向量回归(SVR)、偏最小二乘法回归(PLSR)、随机森林回归(RFR)、梯度提升回归树(GBRT)和极端梯度提升树(XGBoost)。结果表明,根据内分光谱计算出的光谱指数能够有效表征作物光谱特性对土壤水分和盐分的响应,避免了水盐混合引起的光谱模糊。NDRE 光谱指数是估算水分和盐分含量的可靠指标,其判定系数(R2)分别为 0.55 和 0.57。与其他模型相比,LSU-XGBoost 模型的性能最佳。该模型正确反映了作物生长期农田土壤水盐动态变化过程。该研究为干旱灌溉农区土壤水盐估算提供了新方法和新思路,为盐碱化土地治理和灌溉优化管理提供了决策支持。
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来源期刊
International Soil and Water Conservation Research
International Soil and Water Conservation Research Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
12.00
自引率
3.10%
发文量
171
审稿时长
49 days
期刊介绍: The International Soil and Water Conservation Research (ISWCR), the official journal of World Association of Soil and Water Conservation (WASWAC) http://www.waswac.org, is a multidisciplinary journal of soil and water conservation research, practice, policy, and perspectives. It aims to disseminate new knowledge and promote the practice of soil and water conservation. The scope of International Soil and Water Conservation Research includes research, strategies, and technologies for prediction, prevention, and protection of soil and water resources. It deals with identification, characterization, and modeling; dynamic monitoring and evaluation; assessment and management of conservation practice and creation and implementation of quality standards. Examples of appropriate topical areas include (but are not limited to): • Conservation models, tools, and technologies • Conservation agricultural • Soil health resources, indicators, assessment, and management • Land degradation • Sustainable development • Soil erosion and its control • Soil erosion processes • Water resources assessment and management • Watershed management • Soil erosion models • Literature review on topics related soil and water conservation research
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