Scientia Agricultura Sinica ›› 2016, Vol. 49 ›› Issue (11): 2126-2135.doi: 10.3864/j.issn.0578-1752.2016.11.009

• SOIL & FERTILIZER·WATER-SAVING IRRIGATION·AGROECOLOGY & ENVIRONMENT • Previous Articles     Next Articles

Hyperspectral Prediction of Soil Organic Matter Content in the Reclamation Cropland of Coal Mining Areas in the Loess Plateau

NAN Feng, ZHU Hong-fen, BI Ru-tian   

  1. College of Resources and Environment, Shanxi Agricultural University, Taigu 030801, Shanxi
  • Received:2016-01-28 Online:2016-06-01 Published:2016-06-01

Abstract: 【Objective】 In terms of the problems in the Loess Plateau, such as many hills, complex topography, low soil organic matter content (SOMC), sampling difficulties, large areas of land damage caused by mining activities and so on, the object of this study is to provide an alternative method for the rapidly quantitative monitoring and evaluation of the SOMC in the process of land reclamation and comprehensive renovation. 【Method】 Taking the cropland soil in the coal mining areas in Xiangyuan County, Shanxi Province was picked as research object, 152 soil samples were collected from the intermediate strip area of land destruction region in a north to south direction. The physical and chemical properties of the soil samples were analyzed. At the same time, the raw hyperspectral reflectance (R) of the soil samples was measured by the standard procedure with an ASD FieldSpec 3 instrument equipped with a high intensity contact probe under the laboratory conditions. The raw spectral reflectance (R) were pretreated by the smoothing or denoising methods of multiplication scatter correction (MSC), baseline offset correction (BOC) and Savitzky-Golay filter in the ParLes 3.1 software. And the raw spectral reflectance (R) was transformed into two types of spectra, which were first order differential reflectance (D (R)) and inverse-log reflectance (lg (1/R)), to analyze the correlation coefficients between the three spectra and their SOMC. Then the significant bands were extracted by the significant correlation coefficients (P=0.01) of the three spectra with the SOMC. Finally, based on the full bands (400-2 400 nm) and significant bands of the three spectra, the hyperspectral predicting models of the SOMC were established by the method of partial least squares regression (PLSR). The optimal models were determined by the assessing indices of predicting accuracies, including coefficient of determination (R2), root mean square error (RMSE), and residual prediction deviation (RPD). 【Result】 The spectra in the bands of 400-1 800 and 1 880-2 400 nm for the raw spectral reflectance (R), 420-790, 1 020-1 040, and 2 150-2 200 nm for D (R), and 400-1 830 and 1 860-2 400 nm for lg (1/R), were significantly correlated with SOMC (P=0.01). And the maximum correction coefficients between the three spectra and their SOMC were 800 nm of the raw spectral reflectance (R), 600 nm of D (R), and 760 nm of lg (1/R). After the transformation of D (R), there were prominent differences among the absorption peaks of the spectral curves in different soil samples, and their correlation coefficients were improved from the value of 0.72 to that of 0.82 in the range of visible bands (400-800 nm). The models of significant bands could obtain better predicting accuracies compared with that of full bands by the method of PLSR. Among the three spectra, the predicting accuracy of lg (1/R) was the best, and R2, RMSE of the calibration dataset were 0.95 and 7.64, while R2, RMSE, and RPD of the validation dataset were 0.85, 3.00, and 2.56, respectively. For the models of R-PLSR and lg (1/R)-PLSR of full bands, the predicting abilities were good. The R2, RMSE, and RPD of R-PLSR were 0.79, 3.64, and 2.10, respectively. And the coefficient of R2, RMSE and RPD of lg (1/R)-PLSR were 0.79, 3.53, and 2.17, respectively. However, for the model of D (R)-PLSR, the predicting SOMC were only roughly estimated, and the indices of the predicting accuracies were not satisfying. R2, RMSE and PRD of the D (R)-PLSR were 0.61, 5.43, and 1.41, respectively. Finally, by analyzing the predicting accuracies of the three spectra in both full bands and significant bands, it was found that the models of R-PLSR, D (R)-PLSR and lg (1/R)-PLSR in significant bands achieved desirable predicting effect. 【Conclusion】 In the study area, soil spectral reflectance has a high correlation with SOMC, and PLSR is a good method to establish the predicting model of SOMC.

Key words: coal mining areas, reclamation cropland, soil organic matter content (SOMC), hyperspectral, partial least squares regression (PLSR)

[1]    程朋根, 吴剑, 李大军, 何挺. 土壤有机质高光谱遥感和地统计定量预测. 农业工程学报, 2009, 25(3): 142-147.
Cheng P G, Wu J, Li D J, He T. Quantitative prediction of soil organic matter content using hyper spectral remote sensing and geo-statistics. Transactions of the CSAE, 2009, 25(3): 142-147. (in Chinese)
[2]    张娟娟, 田永超, 姚霞, 曹卫星, 马新明, 朱艳. 基于高光谱的土壤全氮含量估测. 自然资源学报, 2011, 26(5): 881-890.
Zhang J J, Tian Y C, Yao X, Cao W X, Ma X M, Zhu Y. Estimating soil total nitrogen content based on hyperspectral analysis technology. Journal of Natural Resources, 2011, 26(5): 881-890. (in Chinese)
[3]    Xie H T, Yang X M, Drury C F, Yang J Y, Zhang X D. Predicting soil organic carbon and total nitrogen using mid- and near- infrared spectra for brookston clay loam soil in southwestern ontario, canada. Canadian Journal of Soil Science, 2011, 91(1): 53-63.
[4]    Yang H, Kuang B, Mouazen A M. Quantitative analysis of soil nitrogen and carbon at a farm scale using visible and near infrared spectroscopy coupled with wavelength reduction. European Journal of Soil Science, 2011, 63(3): 410-420.
[5]    Bo S, Rossel R A V, Mouazen A M, Wetterlind J. visible and near infrared spectroscopy in soil science. Advances in Agronomy, 2010, 107: 163-215.
[6]    Rossel R A V, Webster R. Discrimination of australian soil horizons and classes from their visible–near infrared spectra. European Journal of Soil Science, 2011, 62(4): 637-647.
[7]    Nocita M, Stevens A, Wesemael B V, Aitkenhead M, Bachmann M, Barthès B, Ben Dor E, Brown D J, Clairotte M A, Csorba P, Dardenne, Demattê J A M, Genot V, Guerrero C, Knadel M, Montanarella L, Noon C, Ramirez-Lopez L, Robertson J, Sakai H, Soriano-Disla J M, Shepherd K D, Stenberg B, Towett E K, Vargas R, Wetterlind J. Soil spectroscopy: an alternative to wet chemistry for soil monitoring. Advances in Agronomy, 2015, 132: 139-159.
[8]    Liu H J, Zhang Y Z, Zhang B. Novel hyperspectral reflectance models for estimating black-soil organic matter in northeast china. Environmental Monitoring & Assessment, 2009, 154(1/4): 147-154.
[9]    刘焕军, 张新乐, 郑树峰, 汤娜, 胡言亮. 黑土有机质含量野外高光谱预测模型. 光谱学与光谱分析, 2010, 30(12): 3355-3358.
Liu H J, Zhang X L, ZhEng S F, Tang N, Hu Y L. Black soil organic matter predicting model based on field hyperspectral reflectance. Spectroscopy and Spectral Analysis, 2010, 30(12): 3355-3358. (in Chinese)
[10]   赖宁, 李新国, 梁东. 开都河流域下游绿洲盐渍化土壤高光谱特征. 干旱区资源与环境, 2015, 29(2): 151-156.
Lai N, Li X G, Liang D. Spectral characteristics of salinized soil in the lower reaches of Kaidu river basin. Journal of Arid Land Resources and Environment, 2015, 29(2): 151-156. (in Chinese)
[11]   侯艳军, 塔西甫拉提·特依拜, 买买提·沙吾提, 张飞. 荒漠土壤有机质含量高光谱估算模型. 农业工程学报, 2014, 30(16): 113-120.
Hou Y J, Tashpolat T, Mamat S, Zhang F. Estimation model of desert soil organic matter content using hyperspectral data. Transactions of the CSAE, 2014, 30(16): 113-120. (in Chinese)
[12]   刘磊, 沈润平, 丁国香. 基于高光谱的土壤有机质含量估算研究. 光谱学与光谱分析, 2011, 31(3): 762-766.
Liu L, Shen R P, Ding G X. Studies on the estimation of soil organic matter content based on hyper-spectrum. Spectroscopy and Spectral Analysis, 2011, 31(3): 762-766. (in Chinese)
[13]   廖钦洪, 顾晓鹤, 李存军, 陈立平, 黄文江, 杜世州, 付元元, 王纪华. 基于连续小波变换的潮土有机质含量高光谱估算. 农业工程学报, 2012, 28(23): 132-139.
Liao Q H, Gu X H, Li C J, Chen L P, Huang W J, Du S Z, Fu Y Y, Wang J H. Estimation of fluvo-aquic soil organic matter content from hyper-spectral reflectance based on continuous wavelet transformation. Transactions of the CSAE, 2012, 28(23): 132-139. (in Chinese)
[14]   Nocita M, Stevens A, Toth G, Panagos P, Wesemael B V, Montanarella L. Prediction of soil organic carbon content by diffuse reflectance spectroscopy using a local partial least square regression approach. Soil Biology & Biochemistry, 2013, 68(1): 337-347.
[15]   Ge Y, Morgan C L S, Grunwald S, Brown D J, Sarkhot D V. Comparison of soil reflectance spectra and calibration models obtained using multiple spectrometers. Geoderma, 2011, 161(3/4): 202-211.
[16]   Gomez C, Rossel R A V, Mcbratney A B. Soil organic carbon prediction by hyperspectral remote sensing and field vis-nir spectroscopy: an australian case study. Geoderma, 2008, 146(3/4): 403-411.
[17]   Rossel R A V, Behrens T. Using data mining to model and interpret soil diffuse reflectance spectra. Geoderma, 2010, 158(1/2): 46-54.
[18]   Rossel R A V, Walvoort D J J, Mcbratney A B, Janik L J, Skjemstad J O. Visible, near infrared, mid infrared or combined diffuse reflectance spectroscopy for simultaneous assessment of various soil properties. Geoderma, 2006, 131(1/2): 59-75.
[19]   Clark R N, King T V V, Klejwa M, Swayze G A, Vergo N. High spectral resolution reflectance spectroscopy of minerals. Journal of Geophysical Research Solid Earth, 1990, 95(B8): 12653-12680.
[20]   Sankey J B, Brown D J, Bernard M L, Lawrence R L. Comparing local vs. global visible and near-infrared (visnir) diffuse reflectance spectroscopy (drs) calibrations for the prediction of soil clay, organic C and inorganic C. Geoderma, 2008, 148(2): 149-158.
[21]   Guerrero C, Stenberg B, Wetterlind J, Rossel R A V, Maestre F T, Mouazen A M, Zornoza R., Ruiz-Sinoga J, Kuang B. Assessment of soil organic carbon at local scale with spiked NIR calibrations: effects of selection and extra-weighting on the spiking subset. European Journal of Soil Science, 2014, 65(2): 248-263.
[22]   Rossel R A V, Behrens T, Ben-Dor E, Brown D J, Demattê J A M, Shepherd K D, Shi Z, Stenberg B, Stevens A, Adamchuk V, A?chi H, Barthês B G, Bartholomeus H M, Bayer A D, Bernoux M, Bottcher K, Brodsky´ L, Du C W, Chappell A, Fouad Y, Genot V, Gomez C, Grunwald S, Gubler A, Guerrero C, Hedley C B, Knadel M, Morras H J M, Nocita M, Ramirez- Lopez L, Roudier P, Rufasto Campos E M, Sanborn P, Sellitto V M, Sudduth K A, Rawlins B G, Walter C, Winowiecki L A, Hong S Y, Ji W. A global spectral library to characterize the world’s soil. Earth-Science Reviews, doi: 10.1016/ j.earscirev.2016.01.012.
[23]   Wetterlind J, Stenberg B. Near-infrared spectroscopy for within-field soil characterization: small local calibrations compared with national libraries spiked with local samples. European Journal of Soil Science, 2011, 61(6): 823-843.
[24]   Gogé F, Gomez C, Jolivet C, Joffre R. Which strategy is best to predict soil properties of a local site from a national vis-nir database? Geoderma, 2014, 213: 1-9.
[25]   Guerrero C, Zornoza R, Gómez I, Mataix-Beneyto J. Spiking of nir regional models using samples from target sites: effect of model size on prediction accuracy. Geoderma, 2010, 158(1/2): 66-77.
[26]   史舟, 王乾龙, 彭杰, 纪文君, 刘焕军, 李曦, ROSSEL R A V. 中国主要土壤高光谱反射特性分类与有机质光谱预测模型. 中国科学: 地球科学, 2014, 44(5): 978-988.
Shi Z, Wang Q L, Peng J, Ji W J, Liu H J, Li X, ROSSEL R A V. Development of a national VNIR soil-spectral library for soil classification and prediction of organic matter concentrations. Science China: Earth Sciences, 2014, 44(5): 978-988. (in Chinese)
[27]   栗丽, 王曰鑫, 王卫斌. 采煤塌陷对黄土丘陵区坡耕地土壤理化性质的影响. 土壤通报, 2010, 41(5): 1237-1240.
Li L, Wang Y X, Wang W B. Effects of mining subsidence on physical and chemical properties of soil in slope land in hilly-gully region of Loess Plateau. Chinese Journal of Soil Science, 2010, 41(5): 1237-1240. (in Chinese)
[28]   焦晓燕, 王立革, 卢朝东, 郜春花, 董二伟, 刘鑫. 采煤塌陷地复垦方式对土壤理化特性影响研究. 水土保持学报, 2009, 23(4): 123-125.
Jiao X Y, Wang L G, Lu C D, Gao C H, Dong E W, Liu X. Effects of two reclamation methodologies of coal mining subsidence on soil physical and chemical properties. Journal of Soil and Water Conservation, 2009, 23(4): 123-125. (in Chinese)
[29]   彭杰, 张杨珠, 周清, 庞新安, 伍维模. 土壤理化特性与土壤光谱特征关系的研究进展. 土壤通报, 2009, 40(5): 1204-1208.
Peng J, Zhang Y Z, Zhou Q, Pang X A, Wu W M. The progress on the relationship physics-chemistry properties with spectrum characteristic of the soil. Chinese Journal of Soil Science, 2009, 40(5): 1204-1208. (in Chinese)
[30]   鲍士旦. 土壤农化分析. 3版. 北京: 中国农业出版社, 2013: 30-34.
Bao S D. Soil Agricultural Chemistry Analysis. 3rd ed. Beijing: China Agriculture Press, 2013: 30-34. (in Chinese)
[31]   Bilgili A V, Es H M V, Akbas F, Durak A, Hively W D. Visible-near infrared reflectance spectroscopy for assessment of soil properties in a semi-arid area of turkey. Journal of Arid Environments, 2010, 74(2): 229-238.
[32]   Savitzky A, Golay M J E. Smoothing and differentiation of data by simplified least squares procedures. Analytical Chemistry, 1964, 36(8): 1627-1639.
[33]   唐启义, 冯明光. DPS数据处理系统. 北京: 科学出版社, 2007: 553-558.
Tao Q Y, Feng M G. DPS Data Processing System.Beijing: Science Press, 2007: 553-558. (in Chinese)
[34]   韩云霞, 李民赞, 李道亮. 基于光谱学与遥感技术的矿区废弃地土壤特性参数分析. 吉林大学学报, 2009, 39(1): 254-257.
Han Y X, Li M Z, Li D L. Estimation of soil properties in mine wasteland based on spectroscopy and remote sensing. Journal of Jilin University, 2009, 39(1): 254-257. (in Chinese)
[35]   Li S, Ji W J, Chen S C, Peng J, Zhou Y, Shi Z. Potential of vis-nir-swir spectroscopy from the Chinese soil spectral library for assessment of nitrogen fertilization rates in the paddy-rice region, China. Remote Sensing, 2015, 7: 7029-7043.
[36]   Hu X Y. Application of visible/near-infrared spectra in modeling of soil total phosphorus. Pedosphere, 2013, 23(4): 417-421.
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