Using Pseudo-Color Maps and Machine Learning Methods to Estimate Long-Term Salinity of Soils

Agronomy Pub Date : 2024-09-15 DOI:10.3390/agronomy14092103
Ravil I. Mukhamediev, Alexey Terekhov, Yedilkhan Amirgaliyev, Yelena Popova, Dmitry Malakhov, Yan Kuchin, Gulshat Sagatdinova, Adilkhan Symagulov, Elena Muhamedijeva, Pavel Gricenko
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Abstract

Soil salinity assessment methods based on remote sensing data are a common topic of scientific research. However, the developed methods, as a rule, estimate relatively small areas of the land surface at certain moments of the season, tied to the timing of ground surveys. Considerable variability of weather conditions and the state of the earth surface makes it difficult to assess the salinity level with the help of remote sensing data and to verify it within a year. At the same time, the assessment of salinity on the basis of multiyear data allows reducing the level of seasonal fluctuations to a considerable extent and revealing the statistically stable characteristics of cultivated areas of land surface. Such an approach allows, in our opinion, the processes of mapping the salinity of large areas of cultivated lands to be automated considerably. The authors propose an approach to assess the salinization of cultivated and non-cultivated soils of arid zones on the basis of long-term averaged values of vegetation indices and salinity indices. This approach allows revealing the consistent relationships between the characteristics of spectral indices and salinization parameters. Based on this approach, this paper presents a mapping method including the use of multiyear data and machine learning algorithms to classify soil salinity levels in one of the regions of South Kazakhstan. Verification of the method was carried out by comparing the obtained salinity assessment with the expert data and the results of laboratory tests of soil samples. The percentage of “gross” errors of the method, in other words, errors when the predicted salinity class differs by more than one position compared to the actual one, is 22–28% (accuracy is 0.78–0.72). The obtained results allow recommending the developed method for the assessment of long-term trends of secondary salinization of irrigated arable land in arid areas.
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利用伪彩色地图和机器学习方法估算土壤的长期含盐量
基于遥感数据的土壤盐分评估方法是科学研究的一个常见课题。然而,所开发的方法通常是在季节的某些时刻对相对较小的地表区域进行估算,这与地面勘测的时间有关。由于天气条件和地表状态的巨大变数,很难借助遥感数据评估盐度并在一年内进行核实。同时,根据多年数据评估盐度可以在很大程度上减少季节性波动,并揭示地表耕地的统计稳定特征。我们认为,这种方法可以使大面积耕地的盐度测绘过程大大自动化。作者提出了一种根据植被指数和盐度指数的长期平均值来评估干旱地区耕地和非耕地土壤盐碱化程度的方法。这种方法可以揭示光谱指数特征与盐碱化参数之间的一致关系。基于这种方法,本文介绍了一种制图方法,包括使用多年数据和机器学习算法对南哈萨克斯坦的一个地区的土壤盐碱化程度进行分类。通过将获得的盐度评估结果与专家数据和土壤样本实验室测试结果进行比较,对该方法进行了验证。该方法的 "总 "误差百分比为 22-28%(精确度为 0.78-0.72),换句话说,当预测的盐度等级与实际的盐度等级相差一个位置以上时,就会出现误差。根据所获得的结果,建议将所开发的方法用于评估干旱地区灌溉耕地次生盐碱化的长期趋势。
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