期刊文献+

Hyper-spectral characteristics and classification of farmland soil in northeast of China 被引量:1

Hyper-spectral characteristics and classification of farmland soil in northeast of China
在线阅读 下载PDF
导出
摘要 The physical and chemical heterogeneities of soils make the soil spectral different and complicated, and it is valuable to increase the accuracy of prediction models for soil organic matter(SOM) based on pre-classification. This experiment was conducted under a controllable environment, and different soil samples from northeast of China were measured using ASD2500 hyperspectral instrument. The results showed that there are different reflectances in different soil types. There are statistically significant correlation between SOM and reflectence at 0.05 and 0.01 levels in 550–850 nm, and all soil types get significant at 0.01 level in 650–750 nm. The results indicated that soil types of the northeast can be divided into three categories: The first category shows relatively flat and low reflectance in the entire band; the second shows that the spectral reflectance curve raises fastest in 460–610 nm band, the sharp increase in the slope, but uneven slope changes; the third category slowly uplifts in the visible band, and its slope in the visible band is obviously higher than the first category. Except for the classification by curve shapes of reflectance, principal component analysis is one more effective method to classify soil types. The first principal component includes 62.13–97.19% of spectral information and it mainly relates to the information in 560–600, 630–690 and 690–760 nm. The second mainly represents spectral information in 1 640–1 740, 2 050–2 120 and 2 200–2 300 nm. The samples with high OM are often in the left, and the others with low OM are in the right of the scatter plot(the first principal component is the horizontal axis and the second is the longitudinal axis). Soil types in northeast of China can be classified effectively by those two principles; it is also a valuable reference to other soil in other areas. The physical and chemical heterogeneities of soils make the soil spectral different and complicated, and it is valuable to increase the accuracy of prediction models for soil organic matter(SOM) based on pre-classification. This experiment was conducted under a controllable environment, and different soil samples from northeast of China were measured using ASD2500 hyperspectral instrument. The results showed that there are different reflectances in different soil types. There are statistically significant correlation between SOM and reflectence at 0.05 and 0.01 levels in 550–850 nm, and all soil types get significant at 0.01 level in 650–750 nm. The results indicated that soil types of the northeast can be divided into three categories: The first category shows relatively flat and low reflectance in the entire band; the second shows that the spectral reflectance curve raises fastest in 460–610 nm band, the sharp increase in the slope, but uneven slope changes; the third category slowly uplifts in the visible band, and its slope in the visible band is obviously higher than the first category. Except for the classification by curve shapes of reflectance, principal component analysis is one more effective method to classify soil types. The first principal component includes 62.13–97.19% of spectral information and it mainly relates to the information in 560–600, 630–690 and 690–760 nm. The second mainly represents spectral information in 1 640–1 740, 2 050–2 120 and 2 200–2 300 nm. The samples with high OM are often in the left, and the others with low OM are in the right of the scatter plot(the first principal component is the horizontal axis and the second is the longitudinal axis). Soil types in northeast of China can be classified effectively by those two principles; it is also a valuable reference to other soil in other areas.
出处 《Journal of Integrative Agriculture》 SCIE CAS CSCD 2015年第12期2521-2528,共8页 农业科学学报(英文版)
基金 supported by the National Natural Science Foundation of China(41371292)
关键词 soil type spectral characteristics principle component classification soil type spectral characteristics principle component classification
  • 相关文献

参考文献31

  • 1An X F, Li M Z, Zheng L H, Sun H. 2015. Eliminating the interference of soil moisture and particle size on predicting soil total nitrogen content using a NIRS-based portable detector. Computers and Electronics in Agriculture, 112, 47-53.
  • 2Araujo S R, Wettedind J, Dematte J A M, Stenberg B. 2014. Improving the prediction performance of a large tropical vis- NIR spectroscopic soil library from Brazil by clustering into smaller subsets or use of data mining calibration techniques. European Journal of Soil Science, 65, 718-729.
  • 3Ben-Dor E, Heller D, Chudnovsky A. 2008. A novel method of classifying soil profiles in the field using optical means. Soil Science Society of America Journal, 72, 1113-1123.
  • 4Ben-Dor E, Inbar Y, Chen Y. 1997. The reflectance spectra of organic matter in the visible near-infrared and short wave infrared region (400-2 000) during a controlled decomposition process. Remote Sensing of Environmental, 61, 1-15.
  • 5Brown D J, Bricklemyer R S, Miller P R. 2005. Validation requirements for diffuse reflectance soil characterization models with a case study of VNIR soil C prediction in Montana. Geoderma, 129, 251-267.
  • 6Chang C W, Laird D A. 2002. Near-infrared reflectance spectroscopic analysis of soil C and N. Soil Science, 167, 110-116.
  • 7Condit H R. 1970. Spectral reflectance of American soils. Photogrammetric Engineering, 36, 955-966.
  • 8Dai C D. 1981. Preliminary research of soil spectral classification and data processing. In: Remote Sensing Anthology. Science Press, Beijing. (in Chinese).
  • 9Dalai R C, Henry R J. 1986. Simultaneous determination of moisture, organic carbon, and total nitrogen by near infrared reflectance spectrophotometry. Soil Science Society of America Journal, 50, 120-123.
  • 10Dematte J A M, Campos R C, Alves M C, Fiorio P R, Nanni M R. 2004. Visible-NIR reflectance: A new approach on soil evaluation. Geoderma, 121, 95-112.

同被引文献23

引证文献1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部