Hyperspectral Inversion and Analysis of Zinc Concentration in Urban Soil in the Urumqi City of China

IF 0.9 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES
Qing Zhong, Mamattursun Eziz, Mireguli Ainiwaer, Rukeya Sawut
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Abstract

Excessive accumulation of zinc (Zn) in urban soil can lead to environmental pollution and pose a potential threat to human health and the ecosystem. How to quickly and accurately monitor the urban soil zinc content on a large scale in real time and dynamically is crucial. Hyperspectral remote sensing technology provides a new method for rapid and nondestructive soil property detection. The main goal of this study is to find an optimal combination of spectral transformation and a hyperspectral estimation model to predict the Zn content in urban soil. A total of 88 soil samples were collected to obtain the Zn contents and related hyperspectral data, and perform 18 transformations on the original spectral data. Then, select important wavelengths by Pearson's correlation coefficient analysis (PCC) and CARS. Finally, establish a partial least squares regression model (PLSR) and random forest regression model (RFR) with soil Zn content and important wavelengths. The results indicated that the average Zn content of the collected soil samples is 60.88 mg/kg. Pearson's correlation coefficient analysis (PCC) and CARS for the original and transformed wavelengths can effectively improve the correlations between the spectral data and soil Zn content. The number of important wavelengths selected by CARS is less than the important wavelengths selected by PCC. Partial least squares regression model based on first-order differentiation of the reciprocal by CARS (CARS-RTFD-PLSR) is more stable and has the highest prediction ability (R2 = 0.937, RMSE = 8.914, MAE = 2.735, RPD = 3.985). The CARS-RTFD-PLSR method can be used as a means of prediction of Zn content in soil in oasis cities. The results of the study can provide technical support for the hyperspectral estimation of the soil Zn content.
乌鲁木齐市城市土壤锌含量高光谱反演与分析
城市土壤中锌的过量积累会导致环境污染,对人类健康和生态系统构成潜在威胁。如何大规模、实时、动态、快速、准确地监测城市土壤锌含量至关重要。高光谱遥感技术为快速、无损地检测土壤性质提供了新方法。本研究的主要目的是寻找光谱变换和高光谱估计模型的最佳组合来预测城市土壤中锌的含量。共采集88份土壤样品,获取Zn含量及相关高光谱数据,并对原始光谱数据进行18次变换。然后,通过Pearson’s correlation coefficient analysis (PCC)和CARS选择重要波长。最后,利用土壤Zn含量和重要波长建立了偏最小二乘回归模型(PLSR)和随机森林回归模型(RFR)。结果表明,采收土壤样品的平均锌含量为60.88 mg/kg。原始和变换波长的Pearson相关系数分析(PCC)和CARS可以有效提高光谱数据与土壤Zn含量之间的相关性。CARS选择的重要波长数量少于PCC选择的重要波长数量。基于CARS一阶微分倒数的偏最小二乘回归模型(CARS- rtfd - plsr)更为稳定,预测能力最高(R2 = 0.937, RMSE = 8.914, MAE = 2.735, RPD = 3.985)。car - rtfd - plsr方法可作为绿洲城市土壤Zn含量预测的一种手段。研究结果可为土壤锌含量的高光谱估测提供技术支持。
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来源期刊
CiteScore
2.30
自引率
25.00%
发文量
42
审稿时长
12-24 weeks
期刊介绍: The publishing of CARPATHIAN JOURNAL of EARTH and ENVIRONMENTAL SCIENCES has started in 2006. The regularity of this magazine is biannual. The magazine will publish scientific works, in international purposes, in different areas of research, such as : geology, geography, environmental sciences, the environmental pollution and protection, environmental chemistry and physic, environmental biodegradation, climatic exchanges, fighting against natural disasters, protected areas, soil degradation, water quality, water supplies, sustainable development.
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