DOI QR코드

DOI QR Code

Development of a soil total carbon prediction model using a multiple regression analysis method

  • Jun-Hyuk, Yoo (Department of Bio-environmental Chemistry, Chungnam National University) ;
  • Jwa-Kyoung, Sung (Department of Crop Science, Chungbuk National University) ;
  • Deogratius, Luyima (Department of Bio-environmental Chemistry, Chungnam National University) ;
  • Taek-Keun, Oh (Department of Bio-environmental Chemistry, Chungnam National University) ;
  • Jaesung, Cho (Department of Animal Science and Biotechnology, Chungnam National University)
  • 투고 : 2021.09.14
  • 심사 : 2021.11.11
  • 발행 : 2021.12.01

초록

There is a need for a technology that can quickly and accurately analyze soil carbon contents. Existing soil carbon analysis methods are cumbersome in terms of professional manpower requirements, time, and cost. It is against this background that the present study leverages the soil physical properties of color and water content levels to develop a model capable of predicting the carbon content of soil sample. To predict the total carbon content of soil, the RGB values, water content of the soil, and lux levels were analyzed and used as statistical data. However, when R, G, and B with high correlations were all included in a multiple regression analysis as independent variables, a high level of multicollinearity was noted and G was thus excluded from the model. The estimates showed that the estimation coefficients for all independent variables were statistically significant at a significance level of 1%. The elastic values of R and B for the soil carbon content, which are of major interest in this study, were -2.90 and 1.47, respectively, showing that a 1% increase in the R value was correlated with a 2.90% decrease in the carbon content, whereas a 1% increase in the B value tallied with a 1.47% increase in the carbon content. Coefficient of determination (R2), root mean square error (RMSE), and mean absolute percentage error (MAPE) methods were used for regression verification, and calibration samples showed higher accuracy than the validation samples in terms of R2 and MAPE.

키워드

과제정보

본 연구는 농촌진흥청(Rural development administration)의 공동연구사업(Project No. PJ015102)의 지원으로 수행되었습니다.

참고문헌

  1. Bell MJ, Worrall F. 2009. Estimating a region's soil organic carbon baseline: The undervalued role of land-management. Geoderma 152:74-84. doi: 10.1016/j.geoderma.2009.05.020
  2. Brady NC, Weil RR. 2008. The nature and properties of soils. 14th edition. Pearson prentice hall, New jersey, USA.
  3. Cho MK, Kim SY, Lim YS. 2013. Method comparison of soil organic carbon measurement: Wet-oxidation & dry combustion method. Korean Journal of Environmental Agriculture 2013:318.
  4. Choi EJ, Lee JH, Jeong HC, Kim SH, Lim JS, Lee DK, Oh TK. 2017. Analysis of research trends in methane emissions from rice paddies in Korea. Korean Journal of Agricultural Science 44:463-476. doi: 10.7744/kjoas.20170055
  5. Chung JB, Kim KH, Kim KY, Kim JG, Sa TM, Suh JS, Sohn BK, Yang JE, Eom KC, Lee SE, et al. 2006. Soil Science. pp. 89-93. Hyangmunsa, Seoul, Korea.
  6. Han KH, Zhang YS, Jung KH, Cho HR, Seo MJ, Sonn YK. 2016. Statistically estimated storage potential of organic carbon by its association with clay content for Korean upland subsoil. Korean Journal of Agricultural Science 43:353-359. doi: 10.7744/kjoas.20160037 [in Korean]
  7. Hur SO, Sonn YG, Hyun BK, Shin KS, Oh TK, Kim JG. 2014. Verification on PTF (Pedo-transfer function) estimating soil water retention based on soil properties. Korean Journal of Agricultural Science 41:391-398. doi: 10.7744/cnujas.2014.41.4.391
  8. Jeong GY. 2016 Evaluating spectral preprocessing methods for visible and near infrared reflectance spectroscopy to predict soil carbon and nitrogen in mountainous areas. Journal of Kgeography 51:509-523.
  9. Lal R. 2008. Sequestration of atmospheric CO2 in global carbon pools. Energy & Environmental Science 1:86-100. doi:10.1039/b809492f
  10. Lee JH, Seong CJ, Kang SS, Lee HC, Kim SH, Lim JS, Kim JH, Yoo JH, Park JH, Oh TK. 2018. Effect of different types of biochar on the growth of Chinese cabbage (Brassica chinensis). Korean Journal of Agricultural Science 45:197-203. doi: 10.7744/kjoas.20180033
  11. McBratney AB, Stockmann U, Angers DA, Minasny B, Field DJ. 2014. Challenges for soil organic carbon research. In Soil carbon edited by Alfred E, Hartemink AE, McSweeney K. pp. 3-16. Springer, New York, USA. doi: 10.1007/978-3-319-04084-4_1
  12. Oh TK, Lee JH, Kim SH, Lee HC. 2017. Effect of biochar application on growth of Chinese cabbage (Brassica chinensis). Korean Journal of Agricultural Science 44:359-365. doi: 10.7744/kjoas.20170039
  13. Schoenholtz SH, Van Miegroet H, Burger JA. 2000. A review of chemical and physical properties as indicators of forest soil quality: Challenges and opportunities. Forest Ecology and Management 138:335-356. doi: 10.1016/S0378-1127(00)00423-0
  14. Seo MC, KH So, BG Go, Sonn YK. 2004. Comparison of Tyurin method and dry combustion method for carbon analysis in soils of low inorganic carbon content. Korean Journal of Soil Science and Fertilizer 37:315-321
  15. Smith P. 2012. Soils and climate change. Current Opinion in Environmental Sustainability 4:539-544. doi:10.1016/j.cosust.2012.06.005
  16. Yoo JH, Luyima D, Lee JH, Park SY, Yang JW, An JY, Yun YN, Oh TK. 2021. Effects of brewer's spent grain biochar on the growth and quality of leaf lettuce (Lactuca sativa L. var. crispa.). Applied Biological Chemistry 64:1-10. doi: 10.1186/s13765-020-00577-z
  17. Zvomuya F, Janzen HH, Larney FJ, Olson BM. 2008. A long-term field bioassay of soil quality indicators in a semiarid environment. Soil Science Society of America Journal 72:683-692. doi: 10.2136/sssaj2007.0180